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Organic Fertilizer Adoption, Household Food Access, and Gender-Based Farm Labor Use: Empirical Insights from Northern Ghana

Published online by Cambridge University Press:  08 September 2021

Bunbom Edward Daadi*
Affiliation:
Department of Agricultural Management & Production Economics, Institute of Agricultural Economics (Institut für Agrarökonomie), Christian-Albrechts University, Kiel, Germany Department of Food Security and Climate Change, University for Development Studies, Nyankpala, Ghana
Uwe Latacz-Lohmann
Affiliation:
Department of Agricultural Management & Production Economics, Institute of Agricultural Economics (Institut für Agrarökonomie), Christian-Albrechts University, Kiel, Germany School of Agriculture, The University of Western Australia, Perth, Australia
*
*Corresponding author. Emails: edwarddaadi@gmail.com or edaadi@ae.uni-kiel.de

Abstract

This paper examined organic fertilizer adoption and its effects on two household food security indicators and gender-based farm labor use among smallholder farmers in Northern Ghana. An endogenous switching regression analysis shows that observed and unobserved farmer background factors determine farmers’ decision to adopt organic fertilizer as well as the outcomes from adoption. On average, adoption is associated with an 11% increase in per capita food consumption and a 55% reduction in household food gap duration. Adoption is also related to an increased labor use by 5.9 (90%) of female worker days and 1.3 (9%) of male worker days per acre, placing nearly all (82%) of the increased labor burden on female farmhands. We recommend mitigation of factors that hinder farmers from adopting the input and provision of female-user-friendly labor-saving devices for organic fertilizer use tasks.

Type
Research Article
Creative Commons
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Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of the Southern Agricultural Economics Association

1. Introduction

Food insecurity will persist in sub-Saharan Africa (SSA) unless the decline in agricultural productivity, caused mainly by soil degradation, is halted and the trend reversed (AfDB, 2006; Nkonya et al., Reference Nkonya, Mirzabaev, von Braun, Nkonya, Mirzabaev and von Braun2015). Soil erosion and related factors, including nutrient mining, loss of organic matter, and declining biodiversity, are responsible for increasing crop productivity gaps in the region (FAO, 2015; Kassie et al., Reference Kassie, Jaleta, Shiferaw, Mmbando and Mekuria2013; Martey, Reference Martey2018). Erosion has affected more than 22% of the arable lands of many countries, particularly in West Africa, jeopardizing the livelihoods of over 65% of national populations depending on agriculture (FAO, 2015; Nkonya et al., Reference Nkonya, Mirzabaev, von Braun, Nkonya, Mirzabaev and von Braun2015). Meanwhile, the farm household population in the region is rapidly growing, thus exerting more pressure on the lands (FAO, 2015). This limits access to arable land and renders traditional soil maintenance practices, like fallowing land to restore nutrients, impracticable (Pandey et al., Reference Pandey, Crawford and Maranville2002). Yet, the resource-poor farmers in the region apply mineral fertilizer at a rate far below world standard (AfDB, 2006; Ayalew et al., Reference Ayalew, Chamberlin and Newman2020; Sheahan and Barrett, Reference Sheahan and Barrett2017), though there is quite recent evidence of increased fertilizer use, particularly for cereal production in some countries (Liverpool-Tasie et al., Reference Liverpool-Tasie, Omonona, Sanou and Ogunleye2017). This implies that majority of the farmers intensify cropping under negative nutrient balances (Martey, Reference Martey2018).

In Ghana, farmers in the northeastern part are the most affected by soil degradation nationwise. Semi-desert conditions in the area combine with intense farming activities to accelerate degradation of the arable lands (Atakora et al., Reference Atakora, Fosu, Safo, Tuffour and Tetteh2014; Danquah et al., Reference Danquah, Twumasi and Asare2019; Owusu et al., Reference Owusu, Yigini, Olmedo and Omuto2020). The area lies within the Sudan Savannah zone, where a larger proportion of the landmass is hilly and rocky, having very thin vegetation cover (Government of Ghana, 2015). Continual removal of the scanty vegetation through cultivation and annual bush fires accelerates the loss of soil organic matter and useful biodiversity (Tittonell and Giller, Reference Tittonell and Giller2013). The area also experiences the least and most erratic rainfall country-wide (Amikuzuno and Donkor, Reference Amikuzuno and Donkoh2012; Issahaku et al., Reference Issahaku, Campion and Edziyie2016; Wiredu, Reference Wiredu2015).

Cereals (maize, millet, and sorghum) are the main staple crops, the production of which constitutes the primary livelihood of the subsistence rural households (Government of Ghana, 2015). The farmer-population of the area is dense; hence, the limited land has been put under traditional exploitative cultivation practices without sufficient nutrient replacement (Atakora et al., Reference Atakora, Fosu, Safo, Tuffour and Tetteh2014; Danquah et al., Reference Danquah, Twumasi and Asare2019; Owusu et al., Reference Owusu, Yigini, Olmedo and Omuto2020). Consequently, yield of the main crops continues to decline; thus, trapping many of the farm households in poverty (Atakoral et al., Reference Atakora, Fosu, Safo, Tuffour and Tetteh2014) and food insecurity cycle (Government of Ghana, 2015).

As the farmers try to cope with poor soil conditions, the apply nearly all their mineral fertilizer purchases on cereal crops. Thus, rate of fertilizer application for the area is usually higher than the national average (FAO, 2005) and has been increasing since the introduction of a national fertilizer subsidy program in 2008 (Wiredu, Reference Wiredu2015). However, experts have begun warning about negative effects of inappropriate modes of fertilizer application. They fear that the repetitive use of existing formulations of mineral fertilizer in the area without site-specific soil test-based recommendations further deteriorates soil health (Atakora et al., Reference Atakora, Fosu, Safo, Tuffour and Tetteh2014; Ayalew et al., Reference Ayalew, Chamberlin and Newman2020). Already, soils have become increasingly non-responsive to the fertilizers (Atakora et al., Reference Atakora, Fosu, Safo, Tuffour and Tetteh2014). A condition under which the farmers do not fully benefit from their investment in any high-value external input without rehabilitating the soils (Tittonell and Giller, Reference Tittonell and Giller2013).

Meanwhile, ecological intensification (EI) Footnote 1 is a win-win approach to addressing soil degradation, cutting down mineral fertilizer cost, and simultaneously improving food security through reduction in yield variability (Abagale and Ayuegabe, Reference Abagale and Ayuegabe2015; Kassie et al., 2013, Reference Kassie, Teklewold, Marenya, Jaleta and Erenstein2015; Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013; Zeweld et al., Reference Zeweld, Van Huylenbroeck, Tesfay and Speelman2017). EI relies on locally available organic options for maintaining ecological competitiveness and economic viability of agriculture. Thus, it allows reduced use of inputs that are potentially harmful to the environment (Zeweld et al., Reference Zeweld, Van Huylenbroeck, Tesfay and Speelman2017). EI practices help improve soil health and thus enhance the return on investments in mineral fertilizer and other external inputs (Kousar and Abdulai, Reference Kousar and Abdulai2015; Zeweld et al., Reference Zeweld, Van Huylenbroeck, Tesfay and Speelman2017).

Therefore, farmers within the affected area are being encouraged to adopt EI practices, particularly the use of organic fertilizer to resuscitate degraded soils for sustainableFootnote 2 crop production (Government of Ghana, 2015; Zeweld et al., Reference Zeweld, Van Huylenbroeck, Tesfay and Speelman2017). Organic fertilizerFootnote 3 plays a crucial role in sustaining soil ecology. It maintains organic matter content at levels necessary for conserving soil moisture, plant nutrients, and other properties required for healthy plant growth (Abebe and Debebe, Reference Abebe and Debebe2019; Kassam et al., Reference Kassam, Mkomwa and Friedrich2017; Zeweld et al., Reference Zeweld, Van Huylenbroeck, Tesfay and Speelman2017).

In economic terms, the literature (e.g., Abebe and Debebe, Reference Abebe and Debebe2019; Kassie et al., Reference Kassie, Zikhali, Manjur and Edwards2009; Usman et al., Reference Usman, Madu and Alkali2015; Zerihun and Haile, Reference Zerihun and Haile2017) provides ample evidence regarding the positive effects of organic fertilizer on crop productivity; hence farmer welfare. For instance, Gelgo et al. (Reference Gelgo, Mshenga and Zemedu2016) reported increased incomes of farmers who adopted the input in the Shashemene District of Ethiopia. In Ghana, Martey (Reference Martey2018) found that adoption of the input improves crop productivity, incomes, and poverty status, while reducing the total and per capita food expenditure of farm households.

Though findings of the previous studies relating organic fertilizer to the welfare indicators mentioned above are useful in assessing overall farm household food access, they do not capture the stability dimension of food access, especially through self-provisioning capacity. Self-provisioning is a critical element of farm households’ food access because farmers primarily consume their own produce, either directly from the farm or from storage. Furthermore, Martey’s (Reference Martey2018) study, for instance, involved a sample with observations from heterogeneous populations across different ecological zones having divergent organic fertilizer types and related practices. Findings of such a study would not reflect agroecology-specific situations, wherein practices are homogenous, and Meso-level agricultural policies are often designed to suit.

Besides, we expect organic fertilizer adoption to occur at a cost for other input, especially labor, adjustments (Fuglie and Bosch, Reference Fuglie and Bosch1995; Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013). The potential increased labor requirements could hinder organic fertilizer adoption and application rate, and thus diminish the associated benefits to farmers (Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013). However, to the best of our knowledge, the extent to which organic fertilizer adoption affects farm-labor use in the entire SSA has not been empirically examined. These are shortcomings in the literature, underscoring the need to further analyze the impacts of organic fertilizer on farm-household welfare, especially within agroecologies, to adequately inform micro-/meso-level organic fertilizer use policies.

The main objective of this study is to evaluate the effects of organic fertilizer adoption on farm household food access and labor use among rural farmers. Using a set of observational data obtained from farmers in the northeastern part of Ghana, we adopted the potential outcome framework (see Imbens and Wooldridge, Reference Imbens and Wooldridge2009) and applied the endogenous the switching regression (ESR) to model organic fertilizer adoption process, simultaneously with 1) per capita food expenditure, 2) household food gap (FG), and 3) gender-segregated farm labor used, as outcome variables. Subsequently, we estimated the effects of organic fertilizer on the outcomes. The study analyzes for the first time the effect of organic fertilizer on FG and farm labor use. It thus contributes to organic fertilizer literature, particularly in Ghana, by providing firsthand empirical links between farm labor use and household FG, on the one hand, and organic fertilizer adoption on the other.

The rest of the paper is structured as follows: the next section (section 2) describes the background to organic fertilizer practices in the study area. Section 3 outlines the study methodology, including sampling and the data used, the theoretical model and empirical specification applied. Section 4 provides data summary, presents econometric results for the ESR model, and discusses the effects of organic fertilizer adoption on food expenditure, FG, and labor use. Finally, section 5 summarizes the study’s findings and concludes with key policy suggestions.

2. Organic Fertilizer use in Northeastern Ghana

Local organic fertilizer practices and their potentials to improve soil condition; hence farm productivity depend, to a large extent, on the agroecology, the farming system and population dynamics of an area (Tittonell and Giller, Reference Tittonell and Giller2013; Adnana et al., Reference Adnana, Nordin and Bakar2017). Organic practices such as agroforestry and green manuring are almost impracticable in northeastern Ghana because arable land is increasingly scarce, and agriculture depends entirely on a unimodal rain season which is too short to grow green manure before the main crops. Thus, the common organic fertilizer practices among farmers in the area include crop residue restitution, composting, and the use of livestock manures (Martey, Reference Martey2018). Yet, competing uses for crop residues in particular (e.g., for feeding livestock, as fuel, or for house construction) limit its availability for use as the primary biomass for maintaining the required level of organic matter (Wekesah et al., Reference Wekesah, Mutua and Izugbara2019). Crop-livestock integration is a traditional component of farming systems in the area, and farmers thus have some path dependencies in using manures for soil maintenance. However, livestock densities and the carrying capacity of local grasslands in the region cannot support the rate of manure turnover needed to supply more than one-third of household crop fields (Bationo and Buerkert, Reference Bationo, Buerkert, Martius, Tiessen and Vlek2001; Tittonell and Giller, Reference Tittonell and Giller2013).

Nonetheless, farmers are aware of the conservational values and the good returns on investment in organic fertilizers, and as a result many are motivated to increase its use (Nkonya et al., Reference Nkonya, Mirzabaev, von Braun, Nkonya, Mirzabaev and von Braun2015; Powell and Williams, Reference Powell and Williams1995). As soil and weather conditions change, the farmers must continue to adapt their traditional practices to prevailing agroecological conditions in order to sustain the quantities of organic matter they require for use (Fairhurst, Reference Fairhurst2012; Tittonell and Giller, Reference Tittonell and Giller2013).

In support of farmers’ adaptation, the Ministry of Food and Agriculture (MoFA) and other agencies (e.g., PAS [Presbyterian Agriculture Station], AGRA [Alliance for Green Revolution in Africa], NRGP [Northern Rural Growth Project], ACDI/VOCA [Agricultural Cooperative Development International/Volunteers in Overseas Cooperative Assistance], and GIZ [Gesellschaft für Internationale Zusammenarbeit]) Footnote 4 have been sensitizing smallholder farmers and building their capacity to source and use organic fertilizers. Capacity-building efforts have focused mainly on developing skills for enhanced collection of agro-processing and domestic waste, harnessing animal manure and crop residues, and preparing compost using these materials (Bellwood-Howard, Reference Bellwood-Howard2013). Dynamic kraalingFootnote 5 of cattle for in-situ accumulation of manure on cereal plots has become a popular organic fertilizer practice among the rural farmers. In communities where human excreta/sewage is accessible, farmers have also been educated on its safe use, and some combine it with other organic amendments to fertilizer their fields (Cofie et al., Reference Cofie, Kranjac-Berisavjevic and Drechsel2005, Reference Cofie, Adeoti, Nkansah-Boadu and Awuah2010). PAS and Opportunity for Industrialization Center (OIC), in particular, have trained farmers on the pit and heap methods of preparing, and supported some farmer groups to acquire equipment such as donkey carts for gathering compost materials (Bellwood-Howard, Reference Bellwood-Howard2013). ACDI/VOCA, NRGP, and AGRA Ghana primed farmers on efficient and effective ways, including the zai-pit Footnote 6 method of applying the input for moisture conservation and the micro-dosing with mineral fertilizers for initial crop growth before organic fertilizer nutrients become available to the crop. They have also adopted intercropping and rotation of the grains with legumes and learned to augment organic fertilizers with significant quantities of mineral, especially Nitrogen-phosphrus-Potassium (NPK) fertilizers (Chapoto et al., Reference Chapoto, Sabasi and Asante-Addo2015; Martey et al., Reference Martey, Wiredu, Etwire, Fosu, Buah, Bidzakin, Ahiabor and Kusi2014). Through such capacity-building programs, farmers now prioritize using their scarce organic amendments for the production of staple cereals as the most important food security crops (Martey, Reference Martey2018). This study drew farmers from PAS and MoFA project areas to examine the effects of organic fertilizer adoption on food security and farm labor use.

3. Methodology

3.1. Sampling, Data, and Measurements

The data for this study was obtained through a recent farm household survey we conducted, in partnership with PAS in the North East and Upper East Regions of Ghana. As stated earlier, PAS, AGRA, and NRGP have under different projects at various locations within the study area, primed farmers to use organic fertilizer to sustain soil health. Except for the Bunkpurugu area where there is no PAS extension agent, we followed the operational areas of PAS to sample the study participants. Prior to sampling, a discussion was held with MoFA (Bunkpurugu area) and the PAS extension agents to identify the types of organic fertilizer and related practices the farmers currently use.

We selected 504 households across 52 communities clustered around 3 PAS and 1 MoFA extension zones through a multistage cross-sectional sampling approach. At the first stage, we purposively selected the PAS and MoFA extension zones to ensure equal chances of including farmers the various organic fertilizer types in the sample. PAS and MoFA extension agents in the selected zones provided lists of farming communities from which we randomly drew 30% of the communities to represent each zone. At the community level, farmer-group and opinion leaders helped enumerators to identify and compile lists of organic fertilizer adopter and non-adopter households. Households were then randomly selected from the lists to represent each subsample group. Farmers who applied, at least, one ton per acre of any biomass (e.g., crop residue, animal manure, compost, domestic/urban waste, agro by-products, excreta slurry, or a combination of these) constituted the organic fertilizer user group (adopters)Footnote 7.

The data was collected through a face-to-face personal interview (PI) with sample participant farmers. Appendix 4A shows the number of communities and sampled households across the study locations. Since the main objective is to evaluate the effects of organic fertilizer on food access and labor use, the questionnaire elicited data on these as the outcome variables of organic fertilizer adoption. For food access, we considered two indicator variables critical in farm household settings: per capita food expenditure and food stability through self-provision (indicated by FG) Footnote 8 . Per capita food expenditure was measured in Ghana Cedis based on market value of adult equivalent units (AEU) Footnote 9 of food consumed, while household FG was captured as the duration of the period (in months) a household had difficulties securing sufficient foodstuff (Tambo and Wünscher, Reference Tambo and Wünscher2017). We used the AEU for per capita food expenditure because it is more directly linked to food access status of subsistent farm households and is less prone to measurement errors than the income-based indicators (Tambo and Wünscher, Reference Tambo and Wünscher2017). Following Tambo and Wünscher (Reference Tambo and Wünscher2017) and Martey (Reference Martey2018), our questionnaire used a 7-day recall period to identify food items consumed by a household and thus captured the corresponding expenditure. Non-purchased food items were valued at current market prices. Regarding labor use, farmers reported the number of worker-days used per acre during the most recent crop season. This was subdivided into male and female worker-days Footnote 10 used in order to examine gender-based effects of organic fertilizer adoption on labor.

Following the strands of literature on farm technology in general (e.g., Di Falco et al., Reference Di Falco, Veronesi and Yesuf2011; Fuglei and Bosch, Reference Fuglie and Bosch1995; Manthenge et al., Reference Mathenge, Smale and Olwande2014; Sheferaw et al., Reference Shiferaw, Kassie, Jaleta and Yirga2014; Tambo and Wünscher, Reference Tambo and Wünscher2017; Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013) and specifically, organic fertilizer adoption (e.g., Chen et al., Reference Chen, Zeng, Xu and Fan2018a, Reference Chen, Camps-Arbestain, Shen, Singh and Cayuela2018b; Martey, Reference Martey2018; Ullah et al., Reference Ullah, Shah, Ali, Naz, Mahar and Kalhoro2015; Waithaka et al., Reference Waithaka, Thornton, Shepherd and Ndiwa2007), the survey also captured data on six categories of farmer background factors (explanatory variables). These moderator variables are farmer/household characteristics, resource constraints, and plot-specific factors. Other groups of explanatory variables include social capital, governance and institutional variables, information access factors, and environmental shocks. Empirically, the literature has proven that these variables significantly influence farmers’ decision to adopt farm technology (Ayalew et al., Reference Ayalew, Chamberlin and Newman2020; Shiferaw et al., Reference Shiferaw, Okello and Ratna Reddy2009; Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013). Table 1 shows the description and summary statistics, including mean differences between adopters and non-adopters regarding for all explanatory variables used in the study.

Table 1. Summary statistics of variables

3.2. Theoretical Model and Estimation Strategy

Assuming farm households aim at maximizing access to food through organic fertilizer farm enterprise under optimal input use. We assume further that they are risk-neutral, and consider only the net benefits to be derived between organic fertilizer use and otherwise when deciding to adopt it. The decision task then is to choose the option that maximizes their welfare, subject to household resource endowment or constraints. Subsequently, the observed inputs used and resultant welfare indicators (food expenditure and FG) are outcomes of the binary adoption decision a household made (Sanglestsawai et al., Reference Sanglestsawai, Rejesus and Yorobe2015; Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013).

To specify the adoption model, let Q ja and Q jn represent the net outcome farmer j derives from organic fertilizer adoption and non-adoption, respectively. The farmer adopts organic fertilizer if Q ja >Q jn (i.e., the benefit from adoption exceeds that from non-adoption). Also, let $$U_j^*$$ (the difference between Q ja and Q jn ) be a latent criterion variable on which farmer j bases his/her decision. Further, let D j indicates the observed binary decision such that $$U_j^*$$ = Q ja Q jn >0 when D j = 1 (i.e., if farmer j adopts organic fertilizer) and Q ja −Q jn ≤ 0 when D j = 0 (i.e., when farmer j does not adopt organic fertilizer). By expressing $$U_j^*$$ as a function of observed farmer characteristics denoted Z, we obtain a latent variable (adoption or selection) model that sorts farmers into adopters and non-adopter as (Di Falco et al., Reference Di Falco, Veronesi and Yesuf2011):

(1) $$U_j^* = \gamma '{Z_j} + {\varepsilon _j}{\mkern 1mu} {\text{with}}{\mkern 1mu} {D_j} = \left\{ \begin{gathered} 1\,\,\,\,\,\,if\;U_j^* > 0 \hfill \\ 0\,\,\,\,\,otherwise \hfill \\ \end{gathered} \right\}$$

where Z j is a vector of household and farm characteristics; $$\;\gamma $$ is a vector of parameters to be estimated, while ϵ j is a random term with zero mean and variance $$\sigma _\varepsilon ^2$$ , capturing measurement errors and effects of unobserved factors (Abdulai, Reference Abdulai2016). Even though we cannot observe $$U_j^*,{\rm{\;}}$$ it can be indexed by the observed adoption decision D j of farmer j, such that the probability of adoption is specified as:

(2) \begin{gathered} \Pr ({D_j} = 1) = \Pr (U_j^{\text{*}} \gt 0) = \Pr ({\varepsilon _j} \gt - {\text{ }}\gamma '{Z_j}) \\ {\text{ = 1}} - F( - \gamma '{Z_j}) \\ \end{gathered}

where F is the cumulative distribution function of ϵ. Since D j is the binary decision with value 1 or 0, equation (2) is an adoption model and can be estimated consistently by a standard probit estimator if εj is assumed normal. We can assess the effect of adoption on any of the outcomes (Q j ) by regressing Q j on the binary adoption decision, D j, and other explanatory variables as below (Tambo and Wünscher, Reference Tambo and Wünscher2017);

(3) $${Q_j} = {\bf\it X}_j'\beta + \omega {D_j} + {\mu _j},$$

where X j is a vector of household/farm characteristics such as age, gender, educational attainment of the household head, household size, resource endowment, social network, geographical location, and inputs/production characteristics; ω measures the effect of organic fertilizer adoption on outcome Q j ; µ captures measurement errors as well as the effects of unobserved factors, with j indexing individual farmers (Abdulai and Huffman, Reference Abdulai and Huffman2014; Tambo and Wünscher, Reference Tambo and Wünscher2017).

Equation (3) could be estimated by standard regression (ordinary least squares) if adoption were randomly assigned. In this observational case, however, adopters selected themselves into adoption probably because their personal characteristics like innate managerial and technical abilities support both the decision to adopt and the outcomes, such that they are also the ones who obtain higher outcomes even if they do not adopt (Fuglie and Bosch Reference Fuglie and Bosch1995). It means adopters systematically differ from non-adopters in terms of their background characteristics. Such a systematic difference obscures the true effect of adoption if ω is estimated by through equation (3) (Tambo and Wünscher, Reference Tambo and Wünscher2017). For this cross-sectional evaluation, where we have no counterfactual information for observed outcomes, using either a propensity score-matched (PSM) sample or adopting the ESR approach allows us to control for biases arising from systematic difference (Abdulai and Huffman, Reference Abdulai and Huffman2014). However, the PSM-based model assumes conditional unconfoundedness and thus becomes an invalid approach, where there is insufficient overlap in characteristics of adopters and non-adopters. Even in cases where it is applicable, the probit model coefficients usually, obtained after the PSM are not true coefficients of determination of adoption and cannot be interpreted as such. Since we wished to identify factors determining organic fertilizer adoption among the farmers in this case, we had to apply the ESR (Abdulai, Reference Abdulai2016; Abdulai and Huffman, Reference Abdulai and Huffman2014).

3.3. Empirical Specification of ESR Model

In the ESR framework, equation (2) sorts farmers into adopters and non-adopters, having different outcome regimes. Because we observed either Q ja or Q jn for every farmer, there is no counterfactual information on the outcome. Thus, the ESR approach specified potential outcome equations conditional on adoption decision $${D_j}$$ as:

(4a) $${Q_{ja}} = {\bf\it X}_{ja}'{\beta _a} + {u_{ja}}\;\;\;\;\;if\;{D_j} = 1$$
(4b) $${Q_{jn}} = {\bf\it X}_{jn}'{\beta _n} + {u_{jn}}\;\;\;\;\;if\;{D_j} = 0$$

With a continuous outcome variable Q, linear regressions could be applied to estimate β a and β n . However, OLS estimator will give biased βs if the error term ϵ j of equation (2) correlates with those (u ja and u jn ) of the outcome equations (4a) and (4b). In other words, OLS cannot be applied when there is selection bias to be addressed. Bias is addressed by including selectivity correction terms in the outcome equations to capture the effect of selection (Abdulai and Huffman, Reference Abdulai and Huffman2014; Khonje et al., Reference Khonje, Manda, Alene and Kassie2015; Lokshin and Sajaia Reference Lokshin and Sajaia. “2004; Shiferaw et al., Reference Shiferaw, Kassie, Jaleta and Yirga2014; Tambo and Wünscher, Reference Tambo and Wünscher2017).

Error terms u ja and u jn correlating with ϵ j implies that the expected values of u ja and u jn, conditional on the sample selection (adoption decision) are not zeros. But we can assume that ϵ j has a variance $$\sigma _{{\varepsilon _j}}^2$$ = 1, and the correlation coefficients between u j s and ϵ j sum up to zero, meaning that they have a trivariate normal distribution with a zero-mean vector and a variance–covariance matrix ( $${\rm{\Sigma }}$$ ) as defined below (Manthenge et al., Reference Mathenge, Smale and Olwande2014):

\begin{align}\Sigma = \left[ {\matrix{ {\sigma _{{\varepsilon _j}}^2} & {{\sigma _{{u_{ja}}{\varepsilon _j}}}} & {{\sigma _{{u_{jn}}{\varepsilon _j}}}} \cr {{\sigma _{{\varepsilon _j}{u_{ja}}}}} & {\sigma _{{\mu _{ja}}}^2} & . \cr {{\sigma _{{\varepsilon _j}{u_{jn}}}}} & . & {\sigma _{{u_{jn}}}^2} \cr } } \right],\end{align}

where $$\sigma _{{u_{ja\;}}}^2$$ = var (u ja ), $$\sigma _{{u_{jn}}}^2$$ = var(u jn ), $${\sigma _{{u_{ja}}{\varepsilon _j}}}$$ = cov(u ja , ϵ j ) and $${\sigma _{{u_{jn}}{\varepsilon _j}}}$$ = cov(u jn , ϵ j ). The cov(u ja, u jn ) is undefined since we cannot observe Q ja and Q jn simultaneously from any farmer (Maddalla, 1983). The expected values of u ja (E(u ja |Dj = 1)) and u jn (E(u jn |D j = 0)) contain the selection bias and are statistically equivalent to the product of the error covariances ( $${\sigma _{{u_{ja}}{\varepsilon _j}}}$$ and $${\sigma _{{u_{jn}}{\varepsilon _j}}}$$ ) and inverse Mills ratios (IMRs) for study participants computed from probabilities obtained by (2) at $$\gamma '{Z_j}$$ . Thus, we calculate the IMRs ( $${\lambda _{ja}}$$ and $${\lambda _{jn}}$$ ) as:

(5a) $${\lambda _{ja}} = {{\phi (\gamma '{Z_j})} \over {\Phi (\gamma '{Z_j})}}{\rm{if}}\,{{\rm{D}}_j} = 1$$
(5b) $${\lambda _{jn}} = {{\phi (\gamma '{Z_j})} \over {1 - \Phi (\gamma '{Z_j})}}{\rm{if}}\,{{\rm{D}}_j} = 0$$

where ϕ is the standard normal probability density function and Ф represents cumulative density function of equation (2).

Including $${\lambda _{ja}}$$ and $${\lambda _{jn}}$$ in equations (4a) and (4b), respectively, gives the switching outcome equations that correct for selection bias as follows:

(6a) $${Q_{ja}} = {\bf\it X}_{ja}{\beta _a} + {\sigma _{{\mu _{ja}}{\varepsilon _j}}}{\lambda _{ja}} + \;{\xi _{ja}}\;\;\;if\;{D_j} = 1$$
(6b) $${Q_{jn}} = {\bf\it X}_{jn} {\beta _n} + {\sigma _{{\mu _{jn}}{\varepsilon _j}}}{\lambda _{jn}} + \;{\xi _{jn}}\;\;\;if\;{D_j} = 0,$$

where $${\sigma _{{\mu _{ja}}{\varepsilon _j}}}$$ and $${\sigma _{{\mu _{jn}}{\varepsilon _j}}}$$ become coefficients of the selection control terms λ ja and λ jn , capturing effects of all unobserved selection variables on outcomes. $${\xi _{ja}}$$ and $${\xi _{jn}}$$ become the standard error terms with zero expectations. Equation (6) gives more consistent and efficient estimates if estimated simultaneously with the adoption equation (2), using the full information maximum likelihood (FIML) Footnote 11 estimator rather than Maddala’s (Reference Maddala1983) two-step approach (Lokshin and Sajaia, Reference Lokshin and Sajaia. “2004; Tambo and Wünscher, Reference Tambo and Wünscher2017).

The FIML ESR model is identified through non-linearity of $${\lambda _{ja}}$$ and $${\lambda _{jn}}$$ (Lokshin and Sajaia, Reference Lokshin and Sajaia. “2004), but identification is better when, at least, one variable (exclusion variable) affecting the adoption decision D j but not the outcomes is included in equation (2) (Tambo and Wünscher, Reference Tambo and Wünscher2017). Following Di Falco et al. (Reference Di Falco, Veronesi and Yesuf2011) and Tambo and Wünscher (Reference Tambo and Wünscher2017), we conducted falsification tests (see Appendix 4C) Footnote 12 for several potential instrumental variables to identify relevant exclusion variables. The tests revealed that the distance between household’s location and the nearest agricultural extension office is the only valid instrument for use in our case. After estimating equations (2) and (6) simultaneously, we derived conditional expectations of the outcomes as follows:

Adopters with adoption (actual/observed outcome for adopters):

(7a) $$E({Q_{ja}}{\rm{|}}{D_j} = 1;{\bf\it X}{\rm{)} = {{\bf\it X}_{ja}}{\bf\it \beta} _a} + {\sigma _{{\mu _{ja}}{\varepsilon _j}}}{\lambda _{ja}},{\rm{\;\;\;}}$$

Non-adopters without adoption (actual/observed outcome for non-adopters):

(7b) $$E( {Q_{jn} {\mid} {D_j} = 0;{\bf\it X}{\rm{\;}}} ) = {{\bf\it X}_{jn}}{\bf\it \beta} _n + {\sigma _{{\mu _{jn}}{\varepsilon _j}}}{\lambda _{jn}},{\rm{\;\;\;}}$$

Adopters had they not adopted (counterfactual outcome for adopters):

(7c) $$E ( Q_{jn} {\mid }{D_j} = 1;{\bf\it X}{\rm{\;}} ) = {{\bf\it X}_{ja}}{\bf\it \beta} _n + {\sigma _{{\mu _{jn}}{\varepsilon _j}}}{\lambda _{ja}},{\rm{\;\;}}$$

Non-adopters had they adopted (counterfactual outcome for non-adopters):

(7d) $$E( Q_{ja}{\mid}{D_j} = 0;{\bf\it X} ) = {{\bf\it X}_{jn}}{\bf\it \beta} _a + {\sigma _{{\mu _{ja}}{\varepsilon _j}}}{\lambda _{jn}},{\rm{\;\;\;}}$$

From these expectations, we calculate the average effect of adoption on adopters (AEAA) as:

(8) $$\eqalign{ {\rm{AEAA}} = \left( {{\rm{7a}}} \right) - \left( {{\rm{7c}}} \right) = E({Q_{ja}}|{D_j} = 1;{\bf\it X}) - E({Q_{jn}}|{D_j} = 1;{\bf\it X}) \cr \,\,\;\quad\quad = {{\bf\it X}_{ja}}({\beta _a} - {\beta _n}) + {\lambda _{ja}}({\sigma _{{u_{ja}}{\varepsilon _j}}} - {\sigma _{{u_{jn}}{\varepsilon _j}}}), \cr} $$

where X ja (β a – β n ) captures the expected change in adopters’ mean outcome if they have the characteristics similar to non-adopters.

AEAA estimates obtained from FIML are consistent but not efficient if there is effect heterogeneity (Wooldridge, Reference Wooldridge2015). Therefore, we checked the robustness of the AEAA estimates by comparing them with their precise but inconsistent counterparts obtained from endogenous adoption effect (eteffect) model, using the control function approach. Detail econometric results of the eteffect model are not presented in this paper but are available upon request. Further, we also analyzed farmer-level pre-adoption and transitional adoption effect heterogeneity, following the procedure outlined by Di Falco et al. (Reference Di Falco, Veronesi and Yesuf2011). However, for policy purposes, it is essential to examine heterogeneity across relevant farmer groups. This could be done by estimating and comparing the local average effects of adoption (LAEA) within different quantiles of the outcomes (Issahaku and Abdulai, Reference Issahaku and Abdulai2019). This implies discrete measures of heterogeneity for groups. Yet, effect heterogeneity could be continuous; meaning that discrete measures would not reflect its true nature (Xie et al. Reference Xie, Brand and Jann2012). Thus, following Xie et al.’s (Reference Xie, Brand and Jann2012) approach, we expressed farmer-specific effect of adoption (effect of adoption on adopters (EAA) and effect of adoption on non-adopters (EAN)) as a function of the probability to adopt organic fertilizer. We then visualized the trends of EAA and EAN by two-way scatter plots fitted with local polynomials of degree 1. (Xie et al., Reference Xie, Brand and Jann2012). That allows us to observe how effect heterogeneity (the gap between polynomials lines) differs across levels of probability to adopt.

4. Empirical Results and Discussion

In this section, we show descriptive statistics of the sample data, and present and discuss the econometric results of organic fertilizer adoption probability model, followed by the results of the ESR outcome models. Next, we present and discuss estimated effects of organic fertilizer adoption on food access and labor outcomes variables. We then conclude the section with a discussion on adoption effect’s heterogeneity.

4.1. Data Summary Statistics

Table 1 presents the summary statistics of the data we used in the study. Column three shows the pooled sample means, while columns four to six display subsample means for adopters and non-adopters and their differences, respectively. Mean-difference tests showed significant difference between adopter and non-adopter households regarding key socioeconomic variables, including gender, education, household size, and livestock size. Adopters also differ from non-adopters in terms of information access and social leverage profiles, such as extension visits, distance to the nearest input market, and membership of a farmer-based organization. Other characteristics distinguishing adopters from non-adopters are soil quality status, type of soil tillage practiced, and experience regarding production shocks such as drought and waterlogging. These differences mean that the randomized selection of communities during sampling did not yield a sample with participants of similar characteristics across the adoption regimes. This indicates that the observed characteristics and, probably, other unobserved factors determine self-selection of farmers into adoption as well as the outcomes.

The summary statistics of the outcome variables reported at the bottom of Table 1 show that the average per capita (adult equivalence) food expenditure is about 598GHS (Ghana Cedis) per annum. An average sample household experiences about 1 month of foodstuff shortages, usually from late April to late May. This period seems shorter (0.74 months) for adopters than for non-adopters (1.5 months), although the difference is not statistically significant. Regarding labor use, an average sample farmer deploys 11.6 worker days of female labor and 14.14 worker days of male labor, totaling 25.74 worker days per acre of maize. Organic fertilizer adopters, however, use significantly (at 1%) more labor than non-adopters.

Figure 1 shows kernel density distributions of the four outcome variables. These distributions highlight the systematic differences between adopters and non-adopters, affirming the validity of ESR model. Since the ESR command we used relies on a linear function of outcome variable, we carried out Box–Cox’s functional form tests to identify and appropriately specify each outcome equation. The test reveals (see appendix 4B) that food consumption expenditure follows a log-linear function, while FG follows a multiplicative inverse (reciprocal) function. Female labor and male labor each support a linear identity process.

Figure 1. Kernel density distribution of outcome variables by adoption status.

4.2. Determinants of Organic Fertilizer Adoption

An initial probit model for organic fertilizer adoption showed that the explanatory variables in our empirical model jointly determine adoption (LR $${\chi ^2}$$ (34) = 545.02 [0.000], Pseudo $${R^2}$$ = 0.78) and correctly predict about 94% of observed organic fertilizer adoption. The results for this first-stage adoption (selection) model are presented in Table 2. The excluded variable (i.e., distance to extension office) is statistically significant, proofing its validity as an instrument for identifying the empirical model. The coefficients of the other variables remained almost the same when the model is estimated simultaneously with any of the outcome’s model. The error term of the adoption model correlates with that of FG and female labor use equations.

Table 2. First-stage FIML estimates of organic fertilizer adoption probit model

*** p<0.01, ** p<0.05, * p<0.1 and [ ] = p> $${\chi ^2}$$ . Robust standard errors in parentheses. Other variables controlled for are meanstrans, plotsize, walkdisttoplot,watrlog, SoilStat, capitalexp herbvaluacre, seedgrade, off-farmincom, and OffFarmRes.

Organic fertilizer adoption is significantly explained by: (a) household characteristics (gender, age, and educational attainment of household head, household size, and female-to-male adults ratio); (b) resource endowment (tropical livestock units [TLUs], arable farmland available, and land tenure); (c) market, information, and social leverage constraints (extension visit, distance to input market, farmer group membership, and market relationships), and (d) husbandry practices and plot-specific production shocks (tillage type, mineral fertilizer use, pest stress, disease occurrence, drought, and waterlogged conditions). Finally, the probability of adoption also correlates positively with PAS extension clusters (zone) location relative to the Bunkpurugu zone.

Female-headed households are more likely to adopt organic fertilizer than male-headed ones. Age of the household head shows a quadratic relationship with the likelihood of organic fertilizer adoption. From youth, it increases with the likelihood of adoption, but the relationship tends to decrease for farmers beyond prime age, as indicated by the quadratic age term (age2). Unlike the mixed findings by Martey (Reference Martey2018), this study finds that education is associated with an increased likelihood of adoption. This supports previous findings (e.g., Kassie et al. (Reference Kassie, Teklewold, Marenya, Jaleta and Erenstein2015) that better-educated farmers are able to access information required to understand farm technology; in this case, the complex relationship between soil health and organic practices and, therefore, are more likely to adopt than less the educated ones. Household size is significant and positively related to adoption, meaning that large households are more likely to adopt than their small counterparts with few members. This is in line with the assertion that organic fertilizer use is labor-demanding, and therefore, households who are capable of meeting the requirement will, more likely, adopt the technology (Chikowo et al., Reference Chikowo, Zingore, Snapp and Johnston2014). However, households with more female farmworkers are less likely to adopt the input’s use than those having more male farmworkers.

Among the resource endowment factors, the number of TLUs a farmer owns has a significant positive relationship with organic fertilizer adoption. Since organic fertilizers are not commercially available, farmers who have substantial livestock herds may have better access to it in the form of animal manure than those without livestock. Hence, they are more likely to use organic fertilizer than those without livestock. The number of acres of arable land (farmland) a household has seems to reduce the probability of using organic fertilizer. On the contrary, ownership (tenure) of the organic fertilizer plot on which organic fertilizer is applied is associated with increased tendency to use organic fertilizer. Organic fertilizers release nutrients and build organic matter content of soil slowly, with the yield benefits accruing in the medium to long-run time span (Waithaka et al., Reference Waithaka, Thornton, Shepherd and Ndiwa2007). Thus only the farmers who own plots on which organic fertilizer is applied are sure to derive the benefits themselves. Hence they are more motivated and likely to invest in organic fertilizer than those farming on rented plots (Abdulai, Owusu and Goetz, Reference Abdulai, Owusu and Goetz2011; Chen et al., Reference Chen, Zeng, Xu and Fan2018a; Jacoby et al., Reference Jacoby, Li and Rozelle2002; Jacoby et al., Reference Jacoby and Mansuri2008; Kousar and Abdulai, Reference Kousar and Abdulai2015).

Of the information and social leverage factors, the distance between a farm household and local input market, the number of extension visits, and membership of farmer-based organization(s) significantly increase the probability of organic fertilizer adoption. This is in line with previous studies that extension services, through information and skill enhancement, enable farmers to adopt new technologies (Abdulai, Reference Abdulai2016; Abdulai and Huffman, Reference Abdulai and Huffman2014; Issahaku and Abdulai, Reference Issahaku and Abdulai2019). Improved access to information through interaction with extension agents and fellow farmers increases awareness about the need to use organic soil amendments, hence, the probability of adoption. Distance to the nearest input market has a similar relationship with organic fertilizer use, probably by limiting access to the commercial alternative (i.e., mineral fertilizer), and thus, inducing the farmers to adopt organic fertilizers, which they can produce locally by themselves. On the contrary, the number of trusted marketing relations (traders) negatively correlates with adoption. Access to traders seems to enhance farmers’ capacity to access and use mineral fertilizers (Teklewold et al., Reference Teklewold, Kassie, Shiferaw and Köhlin2013). In summing up the results of the social leverage factors, it is reasonable to assert that organic fertilizer is a traditional resource-poor soil management technique rather than a modern technology to the sample farmers.

Regarding husbandry practices, minimum tillage is related to an increased probability of using organic fertilizer. That is because farmers in the area generally do not practice minimum tillage, except when they have to apply organic fertilizer by the Zai pit method. On the contrary, the quantity of mineral fertilizer a farmer applies tends to relate with reduced likelihood of organic fertilizer adoption, indicating farmers might have perceived the inputs as substitutes (Bellwood-Howard and Al-hassan, Reference Bellwood-Howard and Al-hassan2016). Experience in production shocks such as droughts and pest stress encourage adoption, while previous crop disease incidence seems to discourage adoption, even though statistically not very significant. This result is consistent with Teklewold et al.’s (2013) findings about factors affecting adoption of sustainable agricultural practices in Ethiopia.

Lastly, the location of a farm household, relative to extension zone 0 (Bunkp., reference zone), significantly determines organic fertilizer adoption. Households in zone 1 (Langbinsi area), zone 3 (Garu-Tempane area), and zone 2 (Manga-Basua area) are more likely to use organic fertilizer than their counterparts in zone 0. This could be attributed to better access to extension through organic fertilizer interventions by PAS and its affiliates.

4.3. Factors Explaining Household Food Expenditure, Food Gap, and Gender-Based Labor Use

Table 3 presents the results of second-stage ESR outcome model for adopters and non-adopters, respectively. At the bottom of the table are correlation coefficients (ρ jaϵ and ρ jnϵ ) between error the terms of the adoption equation and that of the outcome regime equations. Statistically significant values for these coefficients indicate a considerable self-selection of farmers into the outcome regimes based on some unobserved factors that influence both the adoption and the outcomes. Self-selection could lead to biased estimates for organic fertilizer effects, had it not been accounted for (Tambo and Wünscher, Reference Tambo and Wünscher2017). The ρ jnϵ between adoption model and non-adopter regimes and the Wald test of independence of the equations are also statistically significant, meaning that outcomes are not independent of adoption decision. Thus, we had to apply the ESR to control for selection bias in order to obtain accurate estimates of adoption effects on FG and female labor. A positive ρ jnϵ (in the non-adopter regime) between the reciprocal of FG and the adoption model suggests that non-adopters’ decision not to adopt leads them to reduced FG. Similarly, the negative correlation (ρ jnϵ ) with the female labor equation indicates a reduction in female labor use under non-adoption.

Table 3. ESR estimates for determinants of household food access and labor use

*** p<0.01, ** p<0.05, * p<0.1. Robust standard errors in parentheses. Other variables included are meanstrans, plot size, walkdisttoplot, disease, Drought, watrlogg, SoilStat, capitalexp herbvaluacre, seedgrade, peststress, OffFarmRes, and offfarmincom. For their coefficients and sig. level, the unedited Stata model outputs are available upon request.

Such kind of biases could exist in the other outcome (logFCE and male labor) equations without being detected, probably due to low statistical power. Thus, empirically we needed to employ the ESR approach in this study (Issahaku and Abdulai, Reference Issahaku and Abdulai2019), even though the insignificant ρ jaϵ s between adoption and adopter outcome equations suggest that adopters do not do better than a farmer selected at random. The transformed error covariances, lnσ jaϵ, and lnσ jnϵ , also reported at the bottom, are highly significant, implying endogenous switching of outcomes between adoption and non-adoption (Tambo and Wünscher, Reference Tambo and Wünscher2017). These coefficients having the same sign, in this case, imply that farmers’ decision to adopt organic fertilizer is not based on any comparative advantage of organic fertilizer. Rather farmers choose fertilizer regime that makes them better off in terms of the outcomes.

The estimates in Table 3 show that gender, age, and education of household heads do not affect food consumption expenditure (logFCE) and FG but they negatively influence labor, especially female labor use. Household size is negatively related to logFCE of both regimes and the FG of non-adopters, but positively associated with female labor use of adopters. This means that large households generally have low FCE, while only non-adopter large households experience higher FG compared with their small counterparts. Large adopter-households use female labor more than small households, probably because they (large adopter-households) have more household labor. Similarly, female-to-male ratio in a household is associated with extended periods of FG and more female labor use. Farm asset value is also significant and positively affects FCE, FG, and female labor of non-adopters, but negatively relates to adopters’ female labor use. TLU statistically relates to only labor use, with opposing signs on adopters and non-adopters. The size of total arable land a household possesses has a similar alternate relationship with outcomes of adopters and non-adopters, even though it is not statistically significant in the case of FCE of adopters, FG of non-adopters, and male labor use of both regimes.

Besides the household characteristics presented above, market and information access variables, including extension visits, membership of farmer-group(s), and relationship with traders also significantly influence outcomes of the regimes differently. The same holds for geographical location (cluster) of households relative to Bunkpurugu area (reference zone). Lastly, we refer the reader to Table 3 for the joint effects of plot-specific variables. Even though some of them have insignificant coefficients, their joint-significance test result (see χ2 (37)) is highly significant (at 1%). Based on equations 7a to 7d, we obtained both conditional and unconditional expected outcomes for each adoption regime. We then computed different measures of organic fertilizer effect from the expectations, as presented below.

4.4. Effects of Organic Fertilizer Adoption on Food Security and Labor UseFootnote 13

Table 4 shows the expected outcomes, average effect of adoption on adopters (AEAA) Footnote 14 , average effect of adoption on non-adopters (AEAN), as well as adoption effect heterogeneity indexes (BH1, BH2, and AH) for each outcome variable (i.e., under the first column). BH1 and BH2 are the transitional and base heterogeneity, respectively, while AH indicates average effect heterogeneity, showing whether the effect of organic fertilizer is more or less on adopters than non-adopters, in a counterfactual situation that non-adopters did adopt (Di Falco et al., Reference Di Falco, Veronesi and Yesuf2011). In other words, it represents the effect of selection on adoption (Wooldridge, Reference Wooldridge2015).

Table 4. ESR-based expected outcomes; adoption effects and heterogeneity

Standard error in parenthesis. **, *** significant at 5% and 1%, respectively. a and b are actual expected outcomes for adopters and non-adopter, respectively, while c and d are their counterfactual outcomes. For food gap, +AEAA means decrease, while the reverse is true for AEAN, since the estimates are in reciprocals.

We obtained alternative estimates for the adoption effects (see appendix 4D) using the endogenous adoption effect (eteffects) model to check the robustness of ESR estimates. The eteffects-based AEAA estimates have the same signs and are close to those from the ESR model even though, except for female labor use, they are not statistically significant. The eteffects model employs the control function estimator, which gives precise but inconsistent estimates because it is sensitive to self-selection and influential observations (Wooldridge, Reference Wooldridge2015). Thus, its estimates are subject to larger standard errors than those of ESR in cases where there is self-selectivity ( $$ln{\sigma _{ja\varepsilon }}/ln{\sigma _{jn\varepsilon }}$$ ) and effect heterogeneities (BH and AH). On the other hand, the ESR model if estimated by the FIML, exploits all available information in the data to fit the model. Hence, the estimates are more consistent than those of the control function estimator (Issahaku and Abdulai, Reference Issahaku and Abdulai2019).

The estimated average effects of adoption show that food consumption expenditure for adopter households increased by about 0.6 log units (AEAA = 0.595) over what it would be, had they not adopted. This represents about 11% (GHS 30.35) increased consumption under organic fertilizer adoption in adopter households. However, food consumption would have been 2% lower in non-adopter households (GHS 9.46) had they adopted organic fertilizer (AEAN = −0.126 log units). These results, as indicated earlier, imply that while adopters are better off adopting organic fertilizer, non-adopters are also better off not adopting. Yet, adopters are far better off under their decision to adopt than non-adopters are under non-adoption. The base and transitional effect heterogeneity estimates (BH1, BH2, and AH) indicate that adopters systematically differ from non-adopters are regarding their background characteristics. And adoption makes adopters a higher per capita food consumers than non-adopters. This meso-level finding is at variance with Martey (Reference Martey2018) macro-level conclusion that organic fertilizer adoption insignificantly lowers food consumption expenditure. The difference could be due to the fact that the present study consisted more subsistent farm households whose additional farm proceeds from adoption reflect in higher food consumption rather than in other expenditures such as report in Martey (Reference Martey2018). It could also be that the previous study’s estimates were biased through averaging over different agroecological zones.

The FG estimate gives an AEAA of 0.438 reciprocal months of FG, representing 0.69 months (55%) decrease from the mean FG that adopter households would have experienced, had they not adopted. Non-adopter households, on the other hand, have a reciprocal of 0.623 FG months but would have had 0.591 with an AEAN (−0.032) representing a 5% increase in the duration of the FG, had non-adopters adopted organic fertilizer. These results show that organic fertilizer adoption decreases food deficits in adopter households, though they still would have experienced fewer months of food inadequacy than non-adopters, had they not adopted.

Regarding labor use, the AEAA shows that organic fertilizer adoption results in a vast increase (5.9) in female worker days from 6.5/acre to 12.3/acre, representing 90%. For non-adopters, the difference (i.e., AEAN) between expected labor use, if they had adopted, and the actual labor use under non-adoption is 0.56 worker days, representing a 5% increase. Hence the transitional heterogeneity (AH = 5.3 worker days) indicates that the effect is more on adopters than non-adopters. However, the pattern is reversed in the case of male labor use. The AEAA on male labor used by adopters is about 9% (1.3 worker days) more than they would have used if they had not adopted organic fertilizer. In the counterfactual case that non-adopters would have adopted, the AEAN indicates they would have used 7.2 worker days (63%) more male labor. This means that the effect of organic fertilizer adoption on male labor use (as indicated by the negative AH) is less for adopter households than for non-adopters. In general, the results regarding labor use are consistent with Teklewold et al.’s (2013) findings that sustainable intensification practices increase farm labor use, with female workers supplying the extra labor needed. For organic fertilizer in particular, much human effort is required in place of carting equipments to collect, transport, and apply the high tonnage (Xu et al., Reference Xu, Huang, Zhong, Chen and Yu2014). Farmers in the study area generally lack such equipments. Thus, traditionally they employ young women to carry out such operations.

4.5 Organic Fertilizer Effect Heterogeneity

The indexes (BH1, BH2, and AH) in Table 4 are average difference adoption effects on adopters and non-adopters. They indicate the presence and general direction of pre-adoption and adoption effects heterogeneity between adopters and non-adopters. We can observe the heterogeneity trend by analyzing and comparing farmer-specific deviations from their sub-sample means (AEAA and AEAN).

Figure 2 shows scatter plots of EAA, EAN, with fitted polynomial lines representing AEAA (pink) and AEAN (green) for each outcome against the probability of adopting organic fertilizer. The gap between the fitted lines indicates the transitional heterogeneity between adopters and non-adopters of equal probability at every point along the probability continuum. For per capita food consumption expenditure, adoption effect heterogeneity is high between farmers with probability ranging from 0.3 to 0.6, where the majority of non-adopters have a negative AEAN. The heterogeneity between farmers with probabilities beyond 0.6 is low, but positive and appears increasing with the probabilities approaching 0.9. The intuition behind this is that non-adopters with an adoption probability above 0.6 will improve their per capita food consumption if they are facilitated to adopt, whereas the same cannot be said about those with low adoption probabilities.

Figure 2. Adoption effects on food access (a and b) and labor demand (c and d) by adoption regime.

The adoption effect on the FG among adopters decreases from positive to negative as the probability of adoption increases, while that of non-adopters remains negative except for those with probabilities between 0.6 and 0.8. Thus, AH becomes negative at probabilities beyond, where non-adopters have almost zero but higher adoption effects than adopters. In that case, encouraging non-adopters to adopt without first changing ground conditions that select them on non-adoption will yield no benefit. Similar to the trend observed in AH of the FG is that of male labor use but the AH effect in that case is negative at all probabilities of adoption, meaning that non-adopters, if adopt, will use more male labor than adopters. Finally, for female labor use, the effect of adoption is positive for both adopters and non-adopters but higher on the adopters than the non-adopters. However, the difference (AH) between the two remains relatively unchanged at all probabilities of adoption.

5. Summary and Conclusions

This paper used a set of observational data obtained from 504 smallholder maize farmers in Northeastern Ghana to examine organic fertilizer adoption and its effects on farm household food access on the one hand and farm labor use on the other. Given that adopters, through their characteristics, self-selected to adopt, we employed the ESR approach to account for self-selectivity bias while modeling adoption and expected outcome for each regime.

The adoption model estimates show that household characteristics, such as the age, gender, education of household head, household size, and location of household within PAS extension zone significantly correlate with the probability of adopting organic fertilizer. Resource-based, plot-specific, and environmental factors like households’ livestock size, farmland ownership, minimum tillage practice, and previous drought experience also tend motivate farmers to adopt organic fertilizer. Social capital, governance, and institutional factors supporting organic fertilizer adoption include household distance to input market, membership to farmer group, and access to extension services. On the other hand, factors like farm size (acres of arable land), farm capital expenses, mineral fertilizer use, the number of grain buyers a household has contact with, and the distance to agricultural extension office negatively correlate with the probability of organic fertilizer adoption.

These characteristics have mixed effects across adopters and non-adopters outcome equations, except education, which positively affects all the outcomes of both regimes. Generally, the ESR results show that adoption is not based on any comparative advantage organic fertilizer has. Instead, farmers choose to adopt or otherwise based on the regime that gives the farm household the best outcome.

The ESR model results also reveal that observed and some unobserved factors influence farmers’ outcomes, not only through adoption but also directly. This means that our estimates for organic fertilizer effects would have been biased, had we not applied the ESR model. Adoption effect heterogeneity trends indicate that we would have underestimated the effects on food consumption expenditure, FG and female labor use and yet overestimate that of male labor use. The effect estimates show that organic fertilizer adoption improves household food access by increasing per capita food consumption expenditure significantly, while reducing FG period. Unfortunately, adoption increases labor requirement by about one-third, placing nearly all the increased labor burden on female farmhands. This means that though organic fertilizer adoption can improve food security among farm households, it could be severely hindered, especially by female labor constraints.

From a policy perspective, findings of this study have implications for current and future interventions seeking increased organic fertilizer use in the country. Investment in rural education and improved access to organic fertilizer use information through farmer-based organizations and extension services are strategic measures to promote adoption. For short-term measures to draw in non-adopters, unobserved factors opposing farmers’ motivations to use organic fertilizer, including misconceptions about the input, need to be identified and mitigated. The negative effect of mineral fertilizer in the adoption process suggests that farmers have wrongly perceived mineral and organic fertilizers to be substitutes (Bellwood-Howard and Al-hassan, Reference Bellwood-Howard and Al-hassan2016). Hence, the need to sensitize farmers further on the complementary roles the inputs play in sustainable crop production. Interventions should consider providing female-user-friendly and labor-saving equipments for collection, transportation, and application of organic fertilizer to facilitate uptake and intensification of the inputs’ use in the area.

Finally, we note that, though this paper contributes significant empirical evidence to the literature on organic fertilizer use and farm household welfare, the analysis used a cross-sectional dataset. Thus, it does not account for time adjustments in organic fertilizer use and associated long-term beneficial effects on the welfare outcomes (Chen et al., Reference Chen, Camps-Arbestain, Shen, Singh and Cayuela2018b; Martey, Reference Martey2018). Hence, the results should be interpreted and appropriated with caution.

Funding

Funding for this publication was provided by the Deutsche Forschungsgemeinschaft (DFG)-OA Fund of the Christian-Albrechts University of Kiel (CAU).

Footnotes

1 Cropping practices that help to improve environmental services and increase crop yields while reducing the need for external inputs like agrochemicals and fuel (Tittonell and Giller Reference Tittonell and Giller2013).

2 Crop production is environmentally non-degrading, resource conserving, socially acceptable, technically appropriate, and economically viable (FAO, 1995 as quoted in Nadia et al., 2017). This means that organic fertilizer maintains good yields and farm profits without undermining the soil resources on which crops depend.

3 Organic fertilizers are carbon-based compounds that increase the productivity and growth quality of plants. These include crop residue, green manure and agroforestry, compost, animal manure, agro-processing by-products and excreta/sewage sludges and organic waste from urban centers.

4 The full names of the organizations are PAS-Presbyterian Agriculture Station; AGRA-Alliance for Green Revolution in Africa; NRGP-Northern Rural Growth Project; ACDI/VOCA-Agricultural Cooperative Development International/Volunteers in Overseas Cooperative Assistance; and GIZ-Gesellschaft für Internationale Zusammenarbeit.

5 Abagale and Ayuegabe Reference Abagale and Ayuegabe2015 defined dynamic kraaling as a system of keeping cattle in temporary ranches usually farmlands, and rotating them with the main aim of accumulating the droppings and urine of the animals for fertilizer value to improve soil fertility for annual crop production.

6 Zai is a term that refers to small planting pits that typically measure 20–30cm wide, 10–20cm deep and spaced 60–80cm apart. It is a technique used to rehabilitate degraded drylands with hard pans and to restore soil health. The pits break through soil pan and collects and conserves water and organic matter which supports crop growth and in the long run, help soften and gradually break the entire soil (Danquah et al., Reference Danquah, Twumasi and Asare2019).

7 Adopters in this study are farm households who applied at least one ton of organic fertilizer (e.g., crop residue, animal manure, compost, domestic/urban waste, agro by-products, excreta slurry, or a combination of these) per acre.

8 Food access is the ability to acquire sufficient quality and quantities of food, while food stability refers to the continuous availability of food under all conditions (FAO, 2008).

9 We used a 1-week recall period to capture household food consumption expenditure by all components and then the OECD’s [Organization for Economic Co-orperation and Development] adult equivalent scale given as; 1+0.7(A-1) + 0.5C, where A is the number of adults while C represents the number of children in a household, to arrive at adult equivalence units (AEU) of per capita food expenditure.

10 A worker day is equivalent to 8 hours of farm work time of a man or woman.

11 The FIML estimation is implemented in STATA using the movestay command by Lokshin and Sajaia (Reference Lokshin and Sajaia. “2004), which implements the simultaneous estimation of the first- and second-stage equations.

12 According to Di Falco et al. (Reference Di Falco, Veronesi and Yesuf2011), Khonje et al. (Reference Khonje, Manda, Alene and Kassie2015) and Tambo and Wünscher (Reference Tambo and Wünscher2017) variables to be added in the selection model as instruments to improve ESR model identification are those that affect farmers’ decision to adopt organic fertilizer do not directly affect any of the outcome variables, at least among non-adopter.

13 We defined the average effect of adoption on adopters as the average effect treatment on the treated (AEAA), and the average potential effect of adoption on non-adopters as the average effect of treatment on untreated (AEAN), so that we continue to use the latter set of terms, because they are well established in the literature

14 AEAA is the average difference between the actual expected outcome of adopters (a) and its counterfactual expected outcome (c) had they not adopted. Similarly, AEAN is the difference between (d) the counterfactual expected outcome of non-adopters had they adopted and the actual expected outcome (b). BH1, BH2, and AH are (a)–(d), (c)–(b), and AEAA–AEAN, respectively.

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Figure 0

Table 1. Summary statistics of variables

Figure 1

Figure 1. Kernel density distribution of outcome variables by adoption status.

Figure 2

Table 2. First-stage FIML estimates of organic fertilizer adoption probit model

Figure 3

Table 3. ESR estimates for determinants of household food access and labor use

Figure 4

Table 4. ESR-based expected outcomes; adoption effects and heterogeneity

Figure 5

Figure 2. Adoption effects on food access (a and b) and labor demand (c and d) by adoption regime.