The impact of unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil

Abstract: This work sought to provide new evidence on the impact of the Brazilian Unemployment Insurance Program (Programa Seguro-Desemprego) on the reinsertion wages of its beneficiaries, considering the Brazilian rural environment. Datafrom the National Household Sample Survey (Pesquisa Nacional por Amostra de Domicílios- PNAD) of 2015 was used, as well as the Sharp model discontinuity regression method. The results showed a positive effect on the reinsertion wages of individuals who participated in the Unemployment Insurance Program in rural Brazil. When disaggregating by Brazilian regions, the Southeast region had a greater positive effect on reinsertion wages, while the Midwest region has a negative effect on workers who participated in the Unemployment Insurance Program. Among the main conclusions, it is a fact that the Unemployment Insurance program had a positive effect for Brazilian formal rural workers residing in the Southeast of the country, but a negative effect for those residing in the Center-West region of Brazil.


The impact of unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil 1 INTRODUCTION
The unemployment insurance program (Programa Seguro Desemprego -PSD) in Brazil has been used as a source of temporary income, allowing an unemployed worker to be more selective in the "choice" of the next job, while at the same time, opening up new opportunities to improve their professional training (Balbinotto Neto & Zylberstajn, 2002;Barros et al., 2002).However, the program is not without its critics, mainly due to its irregular standardization of the distribution of benefits and its adverse effects, often being, in many people's view, an incentive to unemployment and idleness (Balestro & Marinho, 2010).
According to Barros et al. (2002), unemployment insurance in Brazil represents a subsidy to the search for a better job to which a worker would have access only when dismissed without just cause.From that perspective, the program encourages induced dismissal, especially in periods of economic recovery, and this decrease in the length of work relationships has a negative correlation on investments in specific human capital, productivity and wage levels.
Seeking to reverse a possible negative correlation between unemployment insurance and investment in human capital, Chahad (2000) makes some suggestions, among them, to promote, compulsorily, for workers to receive the insurance value, and professional training for the beneficiaries, which would enable a higher level of human capital and possibly a reintegration into the job market with a higher wage level, since receiving this benefit would become a signal for worker productivity, while at the same time subsidizing their basic needs until their reallocation in the job market.
The hypothesis proposed here is that unemployment insurance contributes positively to increasing the reinsertion wages of unemployment program beneficiaries in Brazilian rural environment.The way in which social programs are constituted has been providing an increasing range of questions, mainly regarding efficiency, which also includes workers from Brazilian rural environment where the level of formalization is almost always considered low.
The main objective is to investigate whether there is an effect of the benefit on the reintegration wages of Brazilian workers who are in an employment relationship in Brazilian rural area, and whether the relationship between the unemployment benefit and the reinsertion wage is positive, as proposed by the theoretical perspective of the Theory of Human Capital and labor supply.
In addition, the incentives created by an excessively benevolent unemployment insurance system can generate distortions that end up making the program less effective and generating inefficiency in the allocation of resources.The concern with the design of the programs is as important as their very existence, because it is from there that the correct incentives are generated, motivating behavior which is considered to be appropriate by society (Camargo, 2004).
In order to test the aforementioned hypothesis, a technique widely used in Economics, Political Science, and many other social, behavioral, biomedical and statistical sciences is applied.Lee (2008) reports that the Regression Discontinuity design (RDD) with added covariates is considered one of the most adequate, credible, non-experimental strategies, within the framework of causal inference, with the requirement of "balanced" covariates in the cutoff being the condition enough more natural and relevant1 .
To date, in Brazil, we are unaware of any work that provides evidence about the impact of the country's unemployment insurance program on the reinsertion wages of its beneficiaries, specifically considering Brazilian rural environment, for agricultural and non-agricultural occupations.For such purposes, we adopt the Sharp model discontinuity regression method.The focus is on the rural environment of the country, because it displays different characteristics than the urban area.For instance, rural workers tend to have a higher turnover rate2 than urban workers, particularly for the seasonal aspects of agricultural production, as well as being more susceptible to sudden unemployment because of volatility in the prices of agricultural commodities, where employers are eager to reduce costs in adverse scenarios of international market given that Brazil has been a price taker.
This work consists of five sections, including this introduction.In the second section, a brief literature review on unemployment insurance programs will be presented at an international level, and specifically considering Brazil.The third section discusses the methodology, based Revista de Economia e Sociologia Rural 61(1): e242480, 2023

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The impact of unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil on the data and the discontinuity regression method.In the fourth section, the analysis and discussion of the model results estimated for rural areas are presented.Lastly, concluding remarks are made.

Search for employment, unemployment insurance and reinsertion wage
Theories that seek to understand unemployment flourished in the mid-1980s and 1990s (Fitzgerald, 1998).The incorporation of simple observations in the research at points where the theory of labor market still presented inconsistencies has resulted in rich sets of models that have helped not only to understand how unemployment responds to various policies and regulations, but also to better understand other markets.
A model of job search is presented by Fitzgerald (1998), who analyzes how the area decision of an unemployed worker affects not only their employment decisions but also the general level of unemployment.Subsequently, the source and nature of data are analyzed3 .Initially, the model focuses on the decision of an unemployed worker to accept a job offered or to continue looking for a better job.Among the attributes, the model provides a simple framework for capturing many of the central ideas on which job search theory is based, as well as interesting economic insights.
The model presented by the author suggests that workers seek to maximize the expected present value of their lifetime income, which is written as: where β is the discount fator between 0 and 1 and t y denotes the income of the worker in period t.Is is considered that ( ) if the worker is unemployed, and ( ) if the worker is employed with w wage.Thus, factor β determines the rate in which workers discount their future earnings, and can be written as 1 1 r + , where r is the real interest rate.As the workers presented in the model have time tending to ∞, this assumption can be considered as an approximation of the case in which the workers have many periods to live.Now, considering the problem of the unemployed worker's decision to evaluate a wage offer w, his decision will depend on how the current offer compares to other offers that can be received.If the chances of receiving a substantially better offer in the next period were considerable, then the individual may choose to reject the current offer in the expectation of receiving a better offer in the near future.
The problem of the unemployed worker's decision featured in Fitzgerald (1998) uses the following notation; consider w the expected present value of income when a wage offer w is received.Each of these functions presupposes that the unemployed worker will behave in a way to optimize in future periods, in order to maximize the expected income as presented in Equation 1.
The function of rejecting an offer and waiting for a better offer is given by, Equation 2: Where is the expected value of offer v .Being the expected value included in the Unemployment Insurance subsidy that the worker receives monthly, plus the discount of the expected value of a new wage offer in the next period.It is important to highlight that ( ) wait v w is a constant, that Fitzgerald (1998) describes as wait v , since offer v Ε does not vary with w.This reflects the fact that the next period's wage offer is independent of the offer of the current period, so the value of rejecting an offer and waiting for a new offer is the same regardless of the offer of this period.The value of accepting a w wage offer is: (3) Thus, the worker accepting a wage offer, he or she will receive the income in this period.At the end of the period, that individual will be employed with probability α, in which case the worker receives the discounted expected value of receiving a new offer in the following period,  3. Thus, the equation can be rewritten as: Through Equation 4it can be noticed that ( ) accept v w linearly increases with ( ) w .According to Fitzgerald (1998), the problem for the worker with an offer at hand is to decide whether to accept the offer, with value accept v , or to reject it, with value wait v .The value of having an offer at hand is given by the following equation: It should be noted that offers will be accepted only when the acceptance is more beneficial to the worker than waiting for a better offer.That is, the worker evaluates labor supply according to the wage offered and compares it to the reserve (or waiting) wage.When the wages offered are greater than the waiting value, the worker accepts the new job, otherwise he or she continues to wait for a better opportunity.For Fitzgerald (1998), the solution to that problem is characterized by functions Solving the reservation wage problem (considered here to be the unemployment insurance benefit), the reservation wage r w is the value of w which satisfies, income as presented in Equation 6: Using Equations 2 and 4, ( ) ( ) Revista de Economia e Sociologia Rural 61(1): e242480, 2023 5/17 The impact of unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil The Equation 7states that reinsertion wage is identified as the wage in which the value of accepting the wage offer (left side of the equation) is equal to the value of rejecting the offer (right side).That is, the reinsertion wage is the wage in which the worker is only indifferent between accepting or rejecting the offer.In order to solve the problem for the reintegration wage, it is necessary to attribute a function to it, which can be written as: Using Equation 8to substitute offer v Ε in Equation 7, we obtain a single equation (Equation 9) for r w : ( ) However, .r w .appears in both sides of the equation.In order to simplify the notation, Fitzgerald (1998) defines a new function as being, Equation 10: which is the second term on the right-hand side of Equation 9.This function can be interpreted as the expected benefit of obtaining a new wage when the unemployed worker has an offer at hand.It is important to note that the function is decreasing in r w , indicating that the expected earnings of a new salary decrease as r w increases.Given r w defined with w, this function will be 0, reflecting the fact that there can be no gain in a new offer since w is the highest possible wage.Equation 9 can be rewritten thus: Equation 11 determines the value of wage accepted by the worker based on all parameters of the model, including unemployment insurance and reinsertion wage.The left side can be understood as the benefit of accepting a wage offer at the reserve wage level.The right side can be considered as the value of rejecting the offer and waiting for a new one.It includes the value of the unemployment insurance benefit u w plus the expected gain of a new period.Thus, the expected gain of receiving additional wage offers depends on how selective the person is.The more selective the person is, the lower the chances of getting an offer.Fitzgerald (1998) points out that the reserve wage behavior of the unemployed worker, in this model, is observable in the "real world" behavior of individuals, where in each period, many workers choose to continue their job searches, even if they can accept low-paid jobs.This is probably because there is an expectation that they will find a better job offer eventually.

The Programa Seguro-Desemprego (PSD) Unemployment Insurance Program in Brazil
Created in Brazil in 1986, the historical background of Programa Seguro-Desemprego (PSD) unemployment insurance program dates from the Federal Constitution of 1946 (art.157, inc.XV) as "assistance to the unemployed".However, only with the enactment of Law No. 4,923, of December 23, 1965, the provision was regulated, constituting a financial assistance in cases of total or partial shutdown of companies with economic difficulties (Balestro & Marinho, 2010).Thus, there was a limitation of the benefit to workers of large companies and union members, since the payment depends on a formal request from the union, by sending lists of beneficiaries with the respective documentation.
The embryo of the PSD program originates from Decree-Law No. 2,284 of March 10, 1986.With the purpose of "providing temporary financial assistance to unemployed workers due to unfair dismissal or total or partial interruption of the employer's activities.These funds came from the Treasury and were subject to cash difficulties, especially relevant in the context of the growing public debt of the 1980s 4 .
Only with the 1988 Constitutionunemployment insurance in the country became stable in its financing, with the collection of the Social Integration Program (Programa de Integração Social -PIS) and funds from the Public Service Employee Savings Program (Programa de Patrimônio do ServidorPúblico-PASEP) being redirected, establishing the allocation of resources to fund unemployment insurance and enabling the creation of the Workers' Support Fund (Fundo de Amparo ao Trabalhador-FAT) (Balestro & Marinho, 2010).Following FAT legislation, at least forty percent of the funds would be allocated to economic development programs, through the National Bank for Economic and Social Development (Banco Nacional de Desenvolvimento Econômico e Social -BNDES).
The legal framework of PSD, in place since 1994, holds that the program anticipates what would be the overcoming of a trade-off between social protection and economic efficiency such as the integration between unemployment insurance and labor intermediation and professional qualification.This economic efficiency can be observed through two different aspects, as discussed by Balestro & Marinho (2010), being the qualification associated with gains in productivity of workforce, especially in more general skills in which employers would not be willing to invest resources, and the second aspect being a more efficient job market.

Empirical Evidence on Unemployment Insurance Programs
The main objective of the PSD unemployment insurance program is to protect individuals against the loss of wage income.That said, different unemployment insurance systems in many countries aim to provide short-term income support to involuntarily unemployed workers while looking for work.
While these benefits increase the well-being of risk-averse individuals affected by adverse shocks in employment by softening consumption, on the other hand, at the same time, unemployment insurance can induce a moral hazard 5 and create disincentives for rapid reintegration into the job market (Ahn, 2018).As discussed by Chetty & Finkelstein (2013) and Tatsiramos & Van Ours (2014), the payment of the insurance benefit can make unemployed individuals look for new jobs, but less so than in the absence of the benefit, and it is also possible that the opportunities for employment decrease with the duration of a period of unemployment, as discussed by Addison and Blackburn (2000), which the authors argue can be the result of stigmatization or the depreciation of human capital, which potentially increases the duration of unemployment.
In developed countries, seeking to avoid potential disincentives in job searching, policy makers have considered and introduced additional services for benefit seekers, including 4 See Castro & Souza (1985) and Fishlow (1986). 5Which occurs when an insured person behaves in such a way as to increase the probability of the occurrence of an event that is insured to receive payment of the indemnity.For more, see: Seo (2016), Microbehavioral Econometric Methods -Chapter 7 -Modeling Risk, Perceptions, and Uncertainties with Microbehavioral Methods.
Revista de Economia e Sociologia Rural 61(1): e242480, 2023 7/17 The impact of unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil assistance and job search monitoring (Ahn, 2018).The empirical literature on programs such as those which offer unemployment insurance that affects the rate of unemployment among workers is abundant.
Beginning in the mid-1990s, Atkinson & Micklewright (1991) and Pedersen & Westergard-Nielsen (1993) used cross-sectional data at the individual level and concluded that the effects of such benefits are generally significant in the US and UK studies, while most of the research in Continental Europe find insignificant or weak effects.
Authors such as Card & Levine (2000), Carling et al. (2001), Lalive (2008) and Schmieder et al. (2012a, b), present an overview of recent works on the effects of the unemployment insurance programs of different countries.
More specifically, concerning the benefit to reinsertion wages, the work of Card et al. ( 2007) is worth highlighting, where the authors not only do an extensive literature review on the subject, but also explore a discontinuity in the relationship between work experience and the right to the benefit for Austrian workers.Their main finding is that the way in which unemployment spells are measured has a significant effect on the magnitude of the spike at exhaustion both in existing studies and in the data for Austria.
Uusitalo & Verho (2010), who used a change in policy in Finland to analyze the effect of the unemployment program's replacement rate on the duration of unemployment, found that the change in the benefit structure reduced the chances of reemployment by 17%, on average.Schmieder et al. (2012b), implementing a model of discontinuity with German data on workers aged 40 to 49, found that for each additional month of unemployment insurance reduction, the duration of unemployment increases on average 0.10 and 0.13 months.
Using a Hungarian reform as an identification strategy for the RDD, Lindner & Reizer (2016) found that decreasing unemployment insurance benefits dynamically, keeping global benefit amounts constant, reduces the duration of unemployment and increases wages for reinsertion.
In Brazil, to date, only Teixeira & Balbinotto Neto (2016) evaluated the influence of Brazilian unemployment insurance program on the reinsertion wages of its beneficiaries.The authors analyze data for the period between 2007 and 2009, from the National Household Sample Survey (Pesquisa Nacional por Amostra de Domicílio-PNAD) for all regions of the country.Using discontinuous regression methods, as well as propensity score matching, the authors found that the Brazilian program was not sufficient to influence the beneficiaries' reinsertion wage.However, as mentioned earlier, no research has done the same for the rural job market.

Data
The data used in this work come from the National Household Sample Survey (Pesquisa Nacional por Amostra de Domicílio-PNAD) in 2015, specifically the annual PNAD, considering residents of Brazilian rural environment.The use of the 2015 PNAD is justified because it is the last PNAD that allows us to capture whether the individual received unemployment insurance after leaving their last formal job.After 2015, IBGE started to adopt another methodology, the Continuous PNAD, and with it a new questionnaire, which makes it impossible to capture such information.
The database provides important and specific information, related to workers who left a job within a year.The data can also be organized, then, in two specific aspects: the number of months in which the worker remained in their previous job, with expected results between one month to 11 months; and if the individual received unemployment insurance after that worker left their previous job.
Table 1 below shows the number of months that the individual worked before becoming unemployed and getting a new job.Considering that the individual needs to work at least 6 months to be eligible for PSD unemployment insurance program, the table features those who would be eligible for the insurance benefit (6 or more months), and the counterfactuals (less than 6 months in the last job).Based on the sample of individuals that compose the database from the sample weights, Table 1 shows, thus, the distribution of unemployment and subsequent employment transitions; for unemployment, there are transitions at monthly intervals of up to 11 months.The window for observation of transitions is fixed at 11 months, since the total period which is possible for the observations is one year since entering involuntary unemployment.In the complete sample, the majority (51.78%) of individuals did not meet the basic criteria to participate in the PSD unemployment insurance program, i.e., to work continuously with a formal contract for at least 6 months.
Data reveal that the Northeast region of Brazil features the largest portion of the sample (37.88%), individuals who were involuntarily unemployed for at least one month in the reference period, followed by the Southeast region (25.22%).Analyzing from the perspective of the months worked, there is a certain homogeneity, suggesting that the minimum time required to access the unemployment insurance program (6 months) possibly does not generate unobservable bias6 .

Discontinuous Regression: A non-parametric approach
Given that in a non-parametric regression, the estimator is constructed according to the information obtained through data, without taking a predetermined form, the functional form itself will be estimated.From the existing procedures, the use of a local linear regression is indicated, which can be equated to a linear estimation in two intervals adjacent to the cutoff point, thus estimating the impact on a subsample within a given bandwidth.Left and right of the cutoff point (Hahn et al., 2001).

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The impact of unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil Based on Calonico et al. (2014), the nonparametric method makes it possible to construct robust parameters using a local polynomial regression, which fits the data structure and its proposal for assessing thresholds, smoothing dispersions and modeling functions.
In order to identify whether the Programa Seguro-Desemprego unemployment insurance program in Brazil is exercising any influence on the reinsertion wages of insured persons in rural areas, the method of discontinuous regression (RDD) was used.
The definition of causal effects used here meets the Neyman-Fisher-Rubin causal model7 .Following Hahn et al. (2001), is defined as a binary treatment variable, − , the treatment effect on the individual.The potential results, as well as the treatment results, allows variation among individuals, that is, no constant treatment effect is assumed.i Z is considered a variable that influences the treatment variable discontinuously.Literature presents two distinct designs, however, this work focuses only on one, the sharp case, where i D is the criteria for participation in the Unemployment Insurance Program, and changes for all individuals, at a known threshold 0 z , in this case, 0 6 z = .In the Sharp design, Trochim (1984), defines that participation status is given by a deterministic function of Z, Equation 12: This implies that all individuals change the program's participation status exactly 0 z .Hahn et al. (2001) consider the assumption of identification as Consider that Y is the variable of interest, the reinsertion wage, and is the "forcing" variable with a known threshold, 0 z , where the likelihood of treatment, ( ) , is unknown.There are several motivations for including covariates, denoted by K. First, by reducing the variance, which is something well known for the parametric case.The gains in accuracy can also be achieved in the nonparametric model, as including covariables and comparing them appropriately reduces the asymptotic variance of the estimated treatment effect.Equation 13can then be rewritten including the covariates X , as in Equation 14: Thus identifying the treatment effect as in Equation 15: In which  can be estimated by a combination of the left and right sides of the threshold.It is worth mentioning that the new aspect featured in this work is the presence of additional covariates, collected in the random vector ∈ , which can be continuous, discrete or mixed.Considering ( )( ) ( ) , where ( ) and ( ) denote potential covariates for each side of the cutoff.Calonico et al. (2018) highlights that researcher frequently assume that some characteristics of the marginal distributions of ( ) and ( ) are the same, close to the cutoff point or, that ( ) ( ) , which is implied in the definition of a pre-treatment variable.

Manipulation test using local polynomial density
Given a configuration where each unit in a random sample from a large population is assigned to one of two groups, the observed covariates exceed a known limit.Based on this, McCrary (2008) introduces the idea of a manipulation test in the context of a discontinuous regression (RDD).In this sense, the two possible groups are generically referred to as control and treatment groups (McCrary, 2008).The observed variable determines the group assignment, and it is generically referred to as the score.The key idea behind manipulation tests in this context is that, in the absence of systematic manipulation of the unit index around the cutoff, the density of the units should be continuous when close to this cutoff value.Thus, a manipulation test formally determines whether there is evidence of a discontinuity in unit density at the known cutoff point (Cattaneo et al., 2020).The presence of such evidence is generally interpreted as empirical evidence of self-selection or non-random classification of units into control and treatment status.
A manipulation test in this context is a hypothesis test about the continuity of density.( ) .f at cutoff point x.Formally, the interest is in the test problem according to Equation 16: To construct a statistic for this hypothesis testing problem, Cattaneo et al. (2017) were followed and the density was estimated .( ) . f using a local polynomial density estimator based on the cumulative distribution function (cdf) of the observed sample.This estimator has several interesting properties, including the fact that it does not require pre-creation of data andit is very intuitive in its implementation.
The manipulation test statistics implemented here take the form Where, in Equation 17, ( ) ( ) under proper assumptions, and the notation {} ˆ.
ν is used to denote some consistent estimator of the amount of population {} .
ν .Parameter h and the bandwidths are used to locate the estimation and inference procedures near the cutoff point x.
In running this test, the test statistic was constructed using a polynomial 3 q = , with equal bandwidths chosen for an unrestricted model with polynomial order 2 p = .Specifically, the chosen bands have width ( ) , with a p-value of 0.0000.Therefore, in this application, there is no statistical evidence of systematic manipulation of the running variable.

RESULTS
In order to assess the impact of the PSD unemployment insurance program on reinsertion wages of beneficiaries in the rural area of Brazil, an analysis was made of the difference in the means between the workers who received aid when they left their previous jobs, compared to the workers who did not meet the requirements for receiving the insurance benefit.Table 2 shows values of the tests between means, making it possible to see that the test of difference of means between the two groups was statistically significant for rural Brazil, with 95% confidence.Thus, there are indications that there are wage differences which can be captured by tests between the average of workers who received unemployment insurance (treatment group), and those who did not (control group), with a 5% chance of error.Kernel density function of the sample wage distribution indicates possible differences in density between wage ranges.Thus, when we analyze Figure 1, we find that there is a higher density among workers who earn around a minimum wage for the control group, while for the treatment group, the distribution is more flat.However, it also shows there is no other wage density between the two groups.While there are several recent researches in literature using the RDD model (Imbens & Lemieux, 2007, Lee & Lemieux, 2010, DiNardo & Lee, 2010), our focus is specifically on approaches using local polynomial nonparametric estimators, with the choice of the optimal window width according to the nature of the data and bias correction techniques, following Imbens & Kalyanaraman (2012) and Calonico et al. (2014).
Figure 2 is designed from the method mimicking the uniformly spaced variation using spacing estimators, as shown in Table 3, composed of 681,228 complete observations, which are reproduced in the figure with evenly spaced boxes that mimic the underlying variability of data, and it is implemented using spacing estimators.Optimal window widths on both sides of the cutoff point are derived using 4th order triangular and local polynomial cores.The number of positions for control and treatment units is The output table also informs the IMSE (ideal number of bins and the multiplicative factor (scale) associated with the number of selected bins (taking the optimal IMSE value as a reference).Lastly, IMSE weights corresponding to the chosen number of bins are presented8 .In order to identify a possible discontinuity in wages between the two groups of workers, non-parametric equations are estimated.Table 4 presents the results of β coefficients that represent the "jump" that occurs in the reinsertion wages of individuals who participated in the Brazilian unemployment insurance program.

CONCLUDING REMARKS
The objective of this work was to provide evidence on the impact of Programa Seguro-Desemprego (PSD) Brazilian Unemployment Insurance Program on the reinsertion wages of its beneficiaries, for the Brazilian rural environment.For that purpose, data from National Household Sample Survey (Pesquisa Nacional de Amostra por Domincílios -PNAD) from 2015 was used (specifically, the continuous PNAD); as well as the Sharp model regression discontinuity method.
Results showed that the highest density being among workers earning around a minimum wage for the control group, while for the treated group the distribution is more spread out; however, results also suggest that there is no other wage density between groups.
Another important result was the occurrence of a "jump" in the reinsertion wages of individuals who participated in the unemployment insurance program, as also found in Ehrenberg & Oaxaca (1976), Burgess & Kingston (1976) and Blau & Robins (1989).
When performing a disaggregated analysis, for different Brazilian regions, the results showed that the Southeast region of the country had a greater positive effect on the reinsertion wage, which had the second highest percentage of rural workers rehired in the period.Center-West region, on the other hand, shows a negative effect on workers who participated in the Unemployment Insurance Program.
Thus, it is suggested that the format of unemployment insurance program for individuals in Brazilian rural environment should be thought out and structured in such a way as to generate higher levels of information on the job market, as well as adding some type of human capital formation for those individuals, through qualification courses, training and retraining, as it is from this point that workers will be able to re-enter the job market in a faster, more stable and with greater wage levels.
A potential limitation of this work is the evaluation based on cross-section data, which does not make it possible to capture the effect of the program over time, as well as the influences of changes inherent to policy changes over years.
the expected present value of income if the individual rejects a wage offer w and waits for a better offer, continue to work with probability ( ) 1 α − , in which case that individual receives the discounted value of accepting the same wage offer in the following period, unemployment insurance on reinsertion wages in 2015 in the rural environment of Brazil
binary lengths of 0.048 and 0.083 percentage points, respectively, while polynomial is constructed using a grade 4 polynomial,

Table 2 -
Simple wage means test, rural Brazil -2015 Source: Prepared by the authors using data from the 2015 PNAD (PNAD, 2015).

Table 3 -
Number of positions to estimate RDD

Table 4 -
Non-parametric Regressions   Threshold (cutoff point)used in this work is equal to six (6) months, windows of 5 and 7 months were used in order to guarantee the robustness of the model.*** P <0.05.
Source: Prepared by the authors using data from the 2015 PNAD.Note: