Resident Evaluation of Reconstruction Challenges and Lessons Learned from the Great East Japan Earthquake: Recommendations for Reconstruction and Industrial Policies 12 Years after the Disaster

: The year 2023 marks the 12th anniversary of the Great East Japan Earthquake (GEJE). Immediately after the disaster, the number of evacuees reached approximately 470,000, but by November 2022, the number had decreased to approximately 31,000. The reconstruction of housing, disposal of debris, public infrastructure development, and overall restoration and reconstruction has progressed steadily. However, a re-examination of the status of industrial restoration and reconstruction reveals that restoration and reconstruction have not progressed in some areas. This research statistically analyzes how the Japanese public perceives the issues around the recovery process and what memories and records they would like to learn from regarding the GEJE. The purpose of this study is to ask about reconstruction issues and lessons learned from the GEJE by conducting a web-based survey with 2000 respondents in Japan. The method of estimation is the use of ordinal logistic regression analysis to statistically estimate whether there are differences in recovery issues and lessons learned depending on individual attributes. The results suggest that those who are interested in, remember, and express anxiety about the recovery issues and lessons learned tend to be men, do not have children, are highly educated, and have a higher income. In sum, many of Japan’s citizens are highly interested in the reconstruction of agriculture, forestry, fisheries, housing, urban development, living environment, industry, and livelihood in the affected areas. In the future, they will play a central role in modernizing, scaling up, and integrating the agriculture, forestry, and fisheries industries, as well as in rebuilding towns and livelihoods. In the affected areas, it will be necessary to draw on the lessons learned from the GEJE and create reconstruction plans for the future, and then, policymakers will need to formulate reconstruction policies that reflect the concerns of the Japanese people.


Introduction
In 2023, Japan marked the 12th anniversary of the Great East Japan Earthquake (GEJE).Immediately after the disaster (14 March 2011), the number of evacuees had reached approximately 470,000, but by November 2022, it had decreased to about 31,000 (Reconstruction Agency of Japan 2023a).Furthermore, progress has been made in rebuilding homes, leading to a decrease in the number of occupants in emergency temporary housing (Reconstruction Agency of Japan 2023a).The number of residents in prefabricated temporary housing in Fukushima Prefecture decreased from 10,893 in April 2018 to 4 in January 2023, and construction-type temporary housing supply in Miyagi and Iwate Prefectures ended in fiscal year 2020 (Reconstruction Agency of Japan 2023a).Additionally, in the revealing ongoing challenges despite some progress, including the difficulty of returning to areas designated as difficult to return to, as well as addressing issues such as accident containment and radioactive contamination.Yamakawa and Seto (2018) discuss various aspects of Fukushima's recovery and reconstruction efforts after the earthquake, focusing on fundamental issues of support, the verification of the lives and situations of the affected people, the impact on industries, international trends, and disaster prevention education.Additionally, they present findings from research addressing Fukushima's recovery support, post-evacuation community building, and the process of reconstruction ten years after the nuclear accident (Yamakawa and Hatsuzawa 2021).This research highlights significant challenges in the recovery and reconstruction process, such as ongoing nuclear concerns, reputational issues affecting agricultural products, disparities in compensation between forced and voluntary evacuees, housing shortages for victims, and health issues among evacuees.
However, despite 11 years passing since the disaster, previous studies evaluating Fukushima's economic recovery and decontamination policies are often critical of national and prefectural policies.For instance, Schreurs (2021) notes that while the Tohoku region aims to become a global leader in tsunami disaster management, recovery, nuclear disaster recovery, and renewable energy development, many evacuees have not returned home due to the complex challenges associated with post-nuclear accident cleanup.Fujimoto (2016) highlights the complexities and political challenges in determining the scope and scale of radiation contamination in post-disaster Japan.Nagamatsu et al. (2020) discusses the possibility of recovery promotion expenses outweighing benefits if residents remain unresponsive to decontamination efforts in areas designated as restricted access zones.Liu et al. (2016) mention areas with high radiation levels where nuclear accident damages can only be confirmed through satellite imagery.These studies suggest that Japan's recovery from the nuclear disaster has yet to address complex issues adequately, with implications for the effectiveness of recovery budgets.
The year 2021 marked 10 years since the GEJE.More than ten years have passed since the disaster, and many studies have been conducted on the reconstruction and revitalization of Fukushima.Zhang et al. (2019) stress the need for local adaptation and innovation in Fukushima's economic recovery, emphasizing the importance of creative and sustainable economic recovery strategies that capitalize on existing resources to turn disaster-related challenges into opportunities.Nakamura et al. (2023) conducted statistical analyses on recovery and regeneration efforts in Fukushima Prefecture, revealing low satisfaction among elderly and affected individuals with government recovery policies.Yokemoto (2023) notes that despite the lifting of evacuation orders in certain areas since April 2014, community rebuilding remains a new challenge in such regions.
The national and prefectural governments have implemented various policies to support Fukushima's recovery.Hoshi (2021) notes that macroeconomic indicators such as prefectural gross domestic product and mining industry production indices have returned to pre-disaster levels, with some signs of progress in areas such as the advancement of secondary industry and clustering of automobile-related industries.However, despite businesses reopening in the disaster-affected areas, there are still concerns about low sales leading to financial difficulties or bankruptcies among some businesses.
Numerous studies have addressed industrial clustering in Japan.For instance, Shimizu and Matsubara (2014) discuss the ongoing challenges in industrial recovery in heavily affected areas despite progress in relocating factories to distant locations.Furthermore, they emphasize the need for the regional reconstruction of manufacturing industries in the Tohoku region, considering both the heavily impacted coastal areas and the inland areas where new industrial locations are advancing.Regarding agricultural clustering, Monma (2013) mention the importance of new support organizations for agricultural recovery based on the evaluation of decontamination effects and monitoring of radioactive substances.Owada and Kitamura (2019) note the trend in agricultural land aggregation and dispersion in areas with significant population decline in the disaster-affected areas.Regarding seafood processing industry clustering, Yamaguchi (2013) highlights the necessity of creating industry recovery visions, town planning considering industrial clustering reconstruction, and support for individual business strategy formulation, using the seafood processing industry in Kesennuma City, Miyagi Prefecture, as an example.Additionally, regarding commercial clustering, Nagasaka (2018) compares the restoration and reconstruction support for commercial clustering between the GEJE and the Hanshin-Awaji Earthquake, revealing the formation of commercial clusters with reduced economic burden for businesses in the disaster-affected areas.On the other hand, regarding tourism clustering, Kuchiki (2020) mentions the promotion of tourism through transportation infrastructure development, leading to the construction of segments promoting tourism after the completion of transportation infrastructure, resulting in the efficient clustering of tourism industries.However, Fukui (2020) notes that while tourism policies are effective in metropolitan areas, they may not be effective in all regions, potentially exacerbating regional disparities between metropolitan and rural areas.Furthermore, Igarashi and Kawasaki (2017) mention delays in the restoration of tourism resources in coastal areas of the disaster-affected regions, with most municipalities facing challenges in tourism recovery efforts and only half of them implementing inbound tourism policies.The importance of industrial clustering, including commercial, agricultural, and tourism clustering, is highlighted in the disaster-affected areas.Tsuji (2016) reveals an increase in public participation in reconstruction town meetings with age and education level.Additionally, Yamakawa (2016) position commercial base formation as essential for supporting the daily lives of victims and evacuees, emphasizing the need for community reconstruction and receiving overwhelming support from the national government for reconstruction efforts.Yamakawa (2018) compares the GEJE with the Kumamoto Earthquake, suggesting that lessons to be learned from the GEJE for Kumamoto's recovery include ensuring the regeneration of "hometown values" in reconstruction policies; otherwise, the reconstruction of disaster-stricken areas in a declining population and aging society may become cost-ineffective.
Since the Great East Japan Earthquake, there has been progress in the industrial concentration of agriculture, fisheries, and tourism.However, as Star Hoshi (2021) points out, the effects expected from the establishment of industrial concentration and research and development bases, such as increased productivity, industrial sophistication, and the creation of new industries, are still limited.Reconstruction from the GEJE has achieved significant success in most areas, including housing, industry, and agriculture.However, tourism and fisheries have not yet recovered to pre-disaster levels.How do the Japanese people evaluate policies related to housing, community development, living environment, industry, and livelihoods?Currently, there are few studies evaluating the reconstruction of industries and livelihoods twelve years after the earthquake.
According to the Reconstruction Agency of Japan (2021), "memory" (kioku) is defined as "remembering things without forgetting them and keeping them in mind".While records are written to be preserved, memories are stored in people's hearts, and memories are lost when people forget them."Record" (kiroku) is defined as "writing down facts for later transmission, or the document itself".The "memory" of the disaster needs to be "recorded" in documents and other forms.However, if the "record" is not transmitted to people, it loses its meaning."Lesson" (kyoukun) is defined as "teaching or instructing, or the words used for that purpose".People who do not know about the disaster learn "lessons" from the "records"."Tradition" (denshou) is defined as "hearing or learning something from others".People of future generations who have learned the "lessons" of the disaster need to "transmit" them to the next generation.The "transmission" of the GEJE will be evaluated by future generations, so it is necessary to reconsider what lessons the people of modern Japan want to derive from it.
Taking the above as the basis, this research statistically analyzes how the Japanese people, twelve years after the GEJE, perceive the challenges of reconstruction and what memories or records they want to derive lessons from.This research statistically analyzes the personal attributes of the survey respondents who tended to remember the earthquake, take lessons from the written records from their memories, and have the will to pass them on.This study aims to conduct a web survey of 2000 individuals nationwide, asking about the challenges of reconstruction and lessons learned from the GEJE.
The structure of this paper is as follows: Section 2 explains the survey design, target areas, methods of aggregation, and comparison methods.
Section 3 examines whether citizens feel that victims of the GEJE are being supported and evaluates how citizens assess aspects such as "housing and community development", "living environment", "industry and livelihoods", "reconstruction projects", and "memories or records of the disaster".It also discusses how citizens prioritize the importance of postdisaster reconstruction and lessons.Furthermore, it grasps how individuals evaluate lessons such as "lessons learned in rebuilding agriculture, forestry, and fisheries in disasteraffected areas" and "lessons in inheriting memories or records of the disaster", as well as "lessons in rebuilding industries, commercial facilities, and shopping districts in disasteraffected areas".
Section 4 statistically estimates whether there are differences in individual attributes regarding reconstruction challenges and lessons from the GEJE using ordered logistic regression analysis.
Section 5 summarizes the residents' attitudes toward reconstruction challenges and lessons from the GEJE.

Hypotheses of This Paper
This research statistically examines the differences in the decision-making and thinking of local residents based on individual attributes such as gender, presence of children, age, education level, income level, etc.
Table 1 presents the hypotheses of this paper.From the table, consider whether hypotheses H 1 to H 3 : are rejected.

No. Hypothesis
H 1 There is no difference in lessons learned in the reconstruction of agriculture, forestry, and fisheries industries based on individual attributes.
H 2 There is no difference in lessons learned in passing on memories and records of the disaster by individual attributes.
H 3 There is no difference in the lessons learned from the reconstruction of industries, commercial facilities, and shopping streets in the disaster area by individual attributes.
The questions used to estimate the hypotheses employ a 5-point scale based on the Likert scale, i.e., a five-item scale.When estimating data using a five-item scale, ordered logistic regression analysis is applied.Ordered logistic regression analysis is used for regression analysis when the dependent variable is an ordinal variable with three or more categories in multivariate data.Although the logistic regression analysis model predicts values between 0 and 1, it is a nonlinear model, making the interpretation of the estimated parameters difficult.Therefore, in Chapter 4, we apply ordinal logistic regression analysis.

Survey Target Area
The survey was conducted throughout Japan, with questionnaires collected from each of the 47 prefectures.The survey instrument was distributed under the title "Resident Assessment of Reconstruction Lessons and Know-How in the Great East Japan Earthquake".The Reconstruction Agency of Japan (2023b) has formulated the "Basic Policy for Reconstruction from the GEJE" into the following phases: I. Intensive Reconstruction Period (March 2011-March 2016); II.First Reconstruction and Revilitization Period (April 2016-March 2021); III.(April 2021-March 2026) continues the philosophy of Phase II.In Phase III, the government aims to (1) meticulously address the remaining issues in the earthquake-and tsunami-damaged areas and (2) continue to take the lead in addressing the remaining issues in the nuclear disaster-damaged areas in the medium-to long-term, with the national government taking the initiative.Finally, (3) the government aims to pass on memories and lessons to future generations by establishing state-run memorial and prayer facilities and by compiling effective reconstruction methods and initiatives, as well as private-sector know-how.
As described above, the current period is now under Phase III.The current period is the second phase of reconstruction and revitilization, and is a time to test the extent to which reconstruction measures are evaluated by the public.Therefore, in this paper, the survey is conducted in all regions of Japan, and the question is asked as to how the people evaluate the reconstruction measures.

Aggregation Methods
The survey targeted the entire country of Japan, collecting survey forms from all 47 prefectures.
The survey was conducted as a web survey using the Pollfish service.The survey received complete responses from 2000 individuals.Sample size was calculated using the following formula: 1.96 0.5(1 − 0.5)/n = 0.05 (Kurihara and Tokeigaku 2021).Since the sample proportions are unknown because the survey was conducted before the survey, 0.5, which has the largest sample error, is included in this formula for the worst-case scenario (Kurihara and Tokeigaku 2021).This formula yields √ n = 19.6, which means that if a sample of 384 (n = 384) is collected, a 95% confidence interval of the population ratio can be estimated with an error within ±5% (Kurihara and Tokeigaku 2021).In other words, in statistics, if the number of samples is about 400, the sample error can be estimated within ±5%.There are a plethora of online sample size calculators that result in a minimum sample size of 385 given a confidence level of 95% and a tolerance rate of 5% (SurveyMonkey 2024).
The response rate was 94.6%.The survey period was from February 22 (Wednesday) to February 23 (Thursday) in 2023, according to Japan Standard Time.The sample was collected using the Pollfish consumer research online survey service.Pollfish (2024) identifies inevitable data quality problems for consumer monitoring at an early stage, such as respondent "panel fatigue" and "unconsciously biased" responses.AI fraud detection is then applied to remove responses that do not meet quality criteria, and responses are randomly selected.Here, the authors also checked the sample but did not do any work to remove the sample because it was randomly selected.
It was possible to set quotas for various factors (sex, age, region) prior to publishing the survey.However, this was not carried out due to financial constraints, so it is inevitable that certain groups or regions will be over-represented.As participants were volunteers, there is the inevitable issue of self-selection bias.Participants were more likely to be interested in the topic than average citizens, and there is a high probability that many of them were motivated by opposition to government policy, resulting in a non-representative outcome.This is an unavoidable limitation of web surveys and should be taken into consideration.

Estimation Method
The following summarizes the estimation methodology used.Tables 2-4 list the objective variables (OVs) used for estimation.OV101 to OV112 in Table 2 correspond to H 1 , OV201 to OV206 in Table 3 correspond to H 2 , and OV301 to OV312 in Table 4 correspond to H 3 .Ordinal logistic regression analysis estimates the objective variables ordered into five levels (disagree = 1, not so much disagree = 2, undecided = 3, somewhat agree = 4, agree = 5).The questions listed in Tables 2-4 were created by referring to the Reconstruction Agency's "Lessons and Know-How Collection for Reconstruction from the Great East Japan Earthquake" (2021) and extracting relevant questions.
Table 5 lists the explanatory variables (EVs).Gender (EV1) is a dummy (male = 1, female = 0) explanatory variable.Age (EV2), number of children (EV3), and distance from Fukushima nuclear power plant (EV6) are continuous variables.Educational attainment (EV4) and income bracket (EV5) are discrete variables.Long (1997) stated that in multiple regression analysis, the model is stable even with a relatively small number of samples, but in logistic regression analysis, at least 200 samples are necessary because the maximum likelihood method is used, and 20 samples should be added for each explanatory variable.The estimation in this paper has a maximum of six explanatory variables, resulting in 200 + (6 explanatory variables × 20) = 320 samples, which satisfies the minimum sample size.
In general, when estimating ordinal logit models, the heterogeneity of residuals is tested, and robust standard errors are measured if the model is estimated to be heterogeneous.In the model of this paper, since heteroscedasticity is not assumed, normal standard errors are used.
Below, the "cut" in tables of Section 4 represents the threshold, where Pr(y = 1) = Pr(βx < cut1), and Pr(y = 2) = Pr(cut1 < βx < cut2) correspond accordingly (y is the category of the dependent variable, x is the explanatory variable, and β is the parameter).

No.
Objective Variable Question

OV101
Large parcels of farmland Farmland and agricultural facilities should be restored as soon as possible in the affected areas, and large plots should be created to improve productivity.

OV102
Early resumption of farming Farmers who have been operating in the affected areas should be provided with alternative land to resume farming as soon as possible.

OV103
Effective use of farmland New farmers should be secured in the affected areas, and farmland should be distributed to them in order to make effective use of farmland.

OV104 Expansion of agricultural business
Farmers in the affected areas should resume farming in cooperation with companies outside the prefecture and work to expand their businesses.

OV105 Development of new sales channels for agriculture
In order to develop sales channels for the fisheries industry, new sales channels should be developed through the development of unique, high value-added products.

OV106 Introduction of advanced technology in agriculture
Agriculture in the affected areas should improve productivity by introducing advanced technologies such as ICT.

OV107 Creation of agricultural business models
Agriculture in the affected areas should collaborate with companies from other industries to create new business models.

OV108 Diversification of agriculture business
Agriculture in the affected areas should develop diversified businesses in cooperation with companies from different industries.

OV109 Creation of business opportunities in the fisheries industry
To develop sales channels for the fisheries industry, exhibitions and business meetings should be held and exhibited to create business opportunities with new businesses.

OV110 Development of new sales channels in the fisheries industry
Fisheries in the affected areas should develop new products using local resources, promote branding, and develop new sales channels.

OV111 Creation of business models for the fisheries industry
In order to upgrade and advance the fisheries industry, new technologies should be introduced to develop high value-added products and create new business models.

OV112 Development of management innovation in the fisheries industry
In order to advance and develop the fisheries industry, management innovation should be developed based on flexible ideas in response to changes in the market.

OV201
Disaster Prevention through Public-Private Partnership The national government, local governments, universities, and private companies should work together to collect and preserve a wide range of disaster-related materials and promote their utilization for disaster prevention and mitigation.

OV202
Dissemination of know-how on lessons learned from the earthquake Disseminate information on the recovery status and lessons learned and know-how from the earthquake both domestically and internationally to contribute to strengthening disaster prevention and recovery measures around the world, as well as to provide continuous support for the recovery of disaster-stricken areas.

OV203
Preservation of earthquake remains The preservation of earthquake remains should be studied over a sufficient period of time and with the collection of diverse opinions.

OV204
Establishment of facilities for handing down lessons from the disaster The public and private sectors should cooperate and collaborate to establish and maintain "facilities for handing down the legacy of the disaster.

OV205 Development of programs to pass on lessons
To prevent the tragic damage from the earthquake from happening again, we should establish a program for effective learning about the disaster.

OV206 Support for disaster education
Create opportunities for people to be involved in earthquake disaster education and handing down the lessons of the disaster, and provide support for the continuation of such activities.

Sample Attributes
The sample attributes are given in Appendix A. Men comprised 52.5% and women 47.6% of the sample.The average age was 35.9 and the number of children was 1.586.The most common annual income level was JPY 8.36 million to JPY 11.15 million (20.2%), followed by JPY 2.8 million to JPY 5.58 million (18.9%) and JPY 5.58 to JPY 8.36 million (18.5%).Regarding educational level (educational background), the most common was high school or below (54.6%), followed by junior college/vocational school (21.6%) and university (21.1%).Regarding marital status, the majority of respondents were married (44.5%), followed by single (33.3%).

Support for Victims of the Great East Japan Earthquake
Nakamura et al. ( 2023) examined whether the residents of Fukushima Prefecture were satisfied with the support for disaster victims 10 years after the earthquake.The results showed that only 16.7% of Fukushima Prefecture residents were satisfied with the support provided to disaster victims.Although not directly comparable given the different sample areas, a comparison between these results and the results of the current research is possible.
Appendix B gives the results of the survey questions on victim support.The largest percentage of respondents (30.6%) believe that "the livelihood of evacuees is being supported".Following this, a significant portion of respondents (29.3%) believe that "the connection between evacuees and the affected areas is being maintained", while others (28.2%) think that "the revitalization of the affected areas is being promoted".Approximately 30% of citizens still feel that victims have been supported in various ways, even 12 years after the earthquake.The percentage of respondents who believe that "none of the support for victims is satisfactory" has decreased to 6.8%.
More respondents feel that the disaster victims are being supported in the current survey than in the 2023 survey.However, between 69.4% and 75.0% of the Japanese respondents feel that the victims of the GEJE are still not being supported.

Development of Housing, Community Building, and Living Environment in the Affected Areas of the Great East Japan Earthquake
The 2023 survey found that 35.4% of Fukushima residents were satisfied with the reconstruction of their homes and towns, while 21.9% were not.
The current research asked a similar question (Appendix C), and the largest percentage of respondents (28.3%) believe that "the reconstruction or relocation projects of the affected towns are progressing".This is followed by those (27.7%)who believe that "the direction of community building in the affected areas is being indicated", and others (26.0%) who think that "coordination and support for the aggregation and resolution of emergency temporary housing are progressing".Additionally, some respondents (26.0%) believe that "disaster public housing considering the elderly and local communities is being constructed".Overall, there is a consensus that "housing, community building, and living environment have all been developed to some extent", with only a small percentage (7.1%)believing that "none of these aspects have been developed".
Compared to the 2023 survey, more respondents feel that housing, community development, and the living environment have been improved in the affected areas.However, 77.9% to 75.0% of the Japanese respondents feel that housing, community development, and the living environment have not been improved in the affected areas.

Support for Industries and Livelihoods in the Affected Areas of the GEJE
In the 2023 survey, 35.4% of Fukushima Prefecture residents were satisfied with the recovery of industry and livelihoods, compared to 24.7% of those who were satisfied with the recovery of industry and livelihoods.
In the current survey, participants were asked to rate the "industries and livelihoods being supported in the areas affected by the Great East Japan Earthquake" (Appendix D).The largest proportion of participants believe that "the attraction of businesses to the affected areas is progressing" (27.5%), followed by those who think that "information to attract tourists to the affected areas is being disseminated" (26.5%), "financial support for the reconstruction of affected businesses is being provided" (26.2%), and "farmland and agricultural facilities in the affected areas have been restored" (25.9%).Overall, a small percentage (6.1%) of citizens believe that "none of the industries and livelihoods are being supported".
The number of respondents who feel that industries and livelihoods are being supported is slightly higher in the current survey.However, 72.5% to 77.1% of the Japanese respondents feel that the industries and livelihoods in the affected areas are not being supported.

Collaboration in Reconstruction Projects and Preservation of Memories and Records by NPOs, Private Companies, and Government Agencies
Respondents were asked to rate the public's evaluation of the reconstruction projects and inherited memories and records that are being carried on by NPOs, private companies, and government agencies working together in cooperation (Appendix E).According to the results, the largest proportion of respondents (29.1%) believe that "lessons and know-how from the GEJE are incorporated into local disaster prevention plans".This is followed by those who think that "lessons and know-how for reconstruction are disseminated through the Reconstruction Agency's website, preserving memories and records" (27.4%) and those who believe that "the national and local governments collaborate with NPOs to provide reconstruction support" (26.5%).Additionally, some respondents (26.1%) think that "support for the monitoring of elderly and children's lives has been realized".Nearly 30% of citizens feel that lessons and know-how are being utilized.Overall, a small percentage (5.5%) of citizens believe that "collaboration is lacking, and memories and records are not being preserved".
In summary, approximately 30% of citizens feel that victims have been supported, and over a quarter believe that community development, industries, and livelihoods have recovered in the affected areas, with lessons and know-how from the earthquake being preserved.

Importance of Post-Disaster Reconstruction and Lessons Learned
Figure 1 presents the ranking of the "importance of post-disaster reconstruction and lessons learned".According to the results, "support for victims" (2.468) ranked the highest.Next, "reconstruction of housing and communities" (2.481) had the second-highest average rank, with 26.2% of respondents selecting it as their top priority.Following closely, "revival of industries and livelihoods" (2.505) had the third-highest average rank, with 26.2% of respondents selecting it as their second priority."Collaboration and succession" (2.547) ranked fourth.
In summary, after the earthquake, the most important thing for the Japanese people was to support the victims, followed by the reconstruction of their homes and towns.Most people wanted to see the revival of industries and livelihoods as their lives became more viable, and people began to cooperate in the recovery efforts and eventually take over the process.
In summary, after the earthquake, the most important thing for the Japanese people was to support the victims, followed by the reconstruction of their homes and towns.Most people wanted to see the revival of industries and livelihoods as their lives became more viable, and people began to cooperate in the recovery efforts and eventually take over the process.

Lessons Learned for Rebuilding Agriculture, Forestry, and Fisheries in the Affected Areas
Figure 2 gives the results of responses regarding the evaluation of "lessons learned for rebuilding agriculture, forestry, and fisheries in the affected areas (H1)".The highestrated item was "creation of agricultural business models (OV107)" (46.3%).Following this were "consolidation of farmland (OV101)" (46.0%), "effective utilization of farmland (OV103)" (46.0%), and "creation of agricultural business models (OV107)" (45.5%).Around 40% of respondents indicated a desire to learn lessons for rebuilding agriculture, forestry, and fisheries in the affected areas, expressing expectations for the development of new agricultural and industrial clusters.

Lessons Learned for Rebuilding Agriculture, Forestry, and Fisheries in the Affected Areas
Figure 2 gives the results of responses regarding the evaluation of "lessons learned for rebuilding agriculture, forestry, and fisheries in the affected areas (H1)".The highestrated item was "creation of agricultural business models (OV107)" (46.3%).Following this were "consolidation of farmland (OV101)" (46.0%), "effective utilization of farmland (OV103)" (46.0%), and "creation of agricultural business models (OV107)" (45.5%).Around 40% of respondents indicated a desire to learn lessons for rebuilding agriculture, forestry, and fisheries in the affected areas, expressing expectations for the development of new agricultural and industrial clusters.

Lessons Learned for Inheriting Memories and Records of the Earthquake
Figure 3 illustrates the evaluation of "lessons learned for inheriting memories and records of the earthquake (H2)".The highest-rated items were "disaster prevention through public-private collaboration (OV201)" and "dissemination of earthquake lessons and know-how (OV202)" (both 46.4%).About 40% of respondents expressed a desire to learn lessons for inheriting memories and records of the earthquake.

Lessons Learned for Inheriting Memories and Records of the Earthquake
Figure 3 illustrates the evaluation of "lessons learned for inheriting memories and records of the earthquake (H2)".The highest-rated items were "disaster prevention through public-private collaboration (OV201)" and "dissemination of earthquake lessons and knowhow (OV202)" (both 46.4%).About 40% of respondents expressed a desire to learn lessons for inheriting memories and records of the earthquake.  2 for the evaluation items for OV101 to OV112 in the figure.

Lessons Learned for Inheriting Memories and Records of the Earthquake
Figure 3 illustrates the evaluation of "lessons learned for inheriting memories and records of the earthquake (H2)".The highest-rated items were "disaster prevention through public-private collaboration (OV201)" and "dissemination of earthquake lessons and know-how (OV202)" (both 46.4%).About 40% of respondents expressed a desire to learn lessons for inheriting memories and records of the earthquake.3 for the evaluation items for OV201 to OV206 in the figure.

Lessons Learned for Rebuilding Industries, Commercial Facilities, and Shopping Districts in the Affected Areas
Figure 4 depicts the evaluation of "lessons learned for rebuilding industries, commercial facilities, and shopping districts in the affected areas (H3)".The highest-rated items were "long-term business revival support (OV302)" (46.8%), "promotion of fullscale industrial recovery (OV303)" (45.0%), and "product development through industryacademia collaboration (OV306)" (44.6%).Approximately 40% of respondents indicated a  3 for the evaluation items for OV201 to OV206 in the figure .3.9.Lessons Learned for Rebuilding Industries, Commercial Facilities, and Shopping Districts in the Affected Areas Figure 4 depicts the evaluation of "lessons learned for rebuilding industries, commercial facilities, and shopping districts in the affected areas (H3)".The highest-rated items were "long-term business revival support (OV302)" (46.8%), "promotion of full-scale industrial recovery (OV303)" (45.0%), and "product development through industry-academia collaboration (OV306)" (44.6%).Approximately 40% of respondents indicated a desire to learn lessons for rebuilding industries, commercial facilities, and shopping districts in the affected areas.

Estimation Results
4.1.Estimation Results for Lessons Learned in Rebuilding Agriculture, Forestry, and Fisheries in the Affected Areas In the previous section, it was shown that the level of satisfaction with the support for disaster victims, urban development in the affected areas, and industry and livelihood

Estimation Results for Lessons Learned in Rebuilding Agriculture, Forestry, and Fisheries in the Affected Areas
In the previous section, it was shown that the level of satisfaction with the support for disaster victims, urban development in the affected areas, and industry and livelihood was higher 12 years after the earthquake than 10 years after the earthquake, but many citizens were not satisfied with the support for disaster victims and reconstruction policies.Also, over 40% of respondents expressed a desire to adopt lessons for rebuilding agriculture, forestry, and fisheries; inheriting memories and records of the earthquake; and rebuilding industries, commercial facilities, and shopping districts in the affected areas.This section summarizes the ordinal logistic regression analysis that was applied to the data to determine the role individual attributes play in shaping satisfaction with the relief efforts and policies, and in how the lessons learnt should be implemented.
Table 6 presents the estimation results for lessons learned in rebuilding agriculture, forestry, and fisheries in the affected areas (H 1 ).Due to space constraints, only coefficients that were significant at the 1% to 5% significance level will be statistically interpreted.
For OV101, OV103, and OV107, the coefficients for EV4 (0.143, 0.167, and 0.076, respectively) and EV5 (0.090, 0.050, 0.076 respectively) are positive.This indicates that individuals with higher education levels and higher incomes believe that the large-scale consolidation of farmland, the effective utilization of farmland, and collaboration with other industries to create new business models should be pursued in the affected agricultural areas.
Regarding OV102, the coefficients for EV2 (0.001) and EV4 (0.091) are positive.This suggests that elderly individuals and those with higher education levels believe that the early resumption of farming activities by affected farmers should be realized.
For OV104, the coefficient of EV4 (0.114) is positive, indicating that high-income earners believe that agriculture in disaster-affected areas should collaborate with companies from other prefectures to resume farming and expand operations.
For OV105, OV106, and OV110, the coefficients of EV3 (each −0.134, −0.070, and −0.128) are negative, while those of EV4 (each 0.167, 0.092, and 0.071) and EV5 (each 0.050, 0.070, and 0.049) are positive.This suggests that individuals without children, those with higher education levels, and high-income earners believe that in the disaster-affected agriculture sector, (1) efforts should be made to develop new products and brands using local resources to explore new markets, (2) productivity should be improved by adopting advanced technologies like ICT, and (3) new sales channels should be developed through the creation of high-value-added products with distinctive features in the fisheries industry.
For OV108 and OV109, the coefficients of EV3 (each −0.137 and −0.097) are negative, while those of EV2 (each 0.013 and 0.007), EV4 (each 0.157 and 0.127), and EV5 (each 0.067 and 0.047) are positive.This indicates that individuals without children, the elderly, those with higher education levels, and high-income earners believe that (1) the agriculture sector in disaster-affected areas should engage in diverse businesses through collaboration with other industries and (2) to expand the sales channels in the fisheries industry, trade opportunities with new businesses should be created through hosting trade fairs and exhibitions.
For OV111, the coefficients of EV1 (0.183) and EV5 (0.106) are positive, while that of EV3 (−0.074) is negative.This suggests that males, individuals without children, and high-income earners believe that to advance and modernize the fisheries industry, new business models should be created.
For OV112, the coefficient of EV4 (0.119) is positive, indicating that individuals with higher education levels believe that for the advancement of the fisheries industry, management innovation should be pursued.(2) cut refers to threshold values, where cut1 represents the threshold between "disagree" and "not so much agree," cut2 represents the threshold between "not so much agree" and "neither agree nor disagree," cut3 represents the threshold between "neither agree nor disagree" and "somewhat agree," and cut4 represents the threshold between "somewhat agree" and "agree" (Tables 7 and 8 are also similar).

Estimation Results for Lessons Learned in Inheriting Memories and Records of the Disaster
Table 7 presents the estimation results for lessons learned in inheriting memories and records of the disaster (H 2 ).
For OV201 and OV205, the coefficients of EV4 (0.154 for both) and EV5 (0.109 and 0.076, respectively) are positive.This indicates that individuals with higher education levels and higher incomes believe that collaboration between the government and the private sector should be promoted to utilize disaster prevention and mitigation efforts effectively, and effective programs for learning from disasters should be established.
For OV202, the coefficient of EV3 (−0.083) is negative, while those of EV2 (0.010) and EV4 (0.123) and EV5 (0.065) are positive.This suggests that individuals without children, the elderly, those with higher education levels, and high-income earners believe that disseminating information about the recovery status and lessons learned from the disaster domestically and internationally can contribute to continued support for the recovery of affected areas.
For OV203, the coefficient of EV3 (−0.068) is negative, while those of EV4 (0.133) and EV5 (0.094) are positive.This implies that individuals without children, those with higher education levels, and high-income earners believe that preserving the remains of the disaster should involve collecting diverse opinions over a sufficient period for consideration.
For OV204, the coefficient of EV5 (0.056) is positive, while that of EV6 (−0.00035) is negative.This indicates that high-income earners and those living closer to the Fukushima Daiichi Nuclear power plant believe that collaboration between the government and the private sector is necessary to establish and maintain "disaster heritage facilities".
For OV206, the coefficients of EV1 (0.198) and EV4 (0.112) are positive.This suggests that males and individuals with higher education levels believe that opportunities related to disaster heritage and disaster prevention education should be created, and support should be provided for continued activities.For OV301 and OV309, the coefficients of EV3 (−0.073 and −0.075, respectively) are negative, while those of EV4 (0.113 and 0.117, respectively) and EV5 (0.166 and 0.074, respectively) are positive.This indicates that individuals without children, those with higher education levels, and high-income earners believe that (1) quick and smooth support should be provided to financially support affected companies and (2) providing a comfortable working environment and improving the image of industries are essential for securing employment for young people and women.
For OV302, the coefficient of EV4 (0.152) is positive, indicating that individuals with higher education levels believe that creating systems to solve the double indebtedness issue of affected companies and providing long-term support for business recovery are necessary.
For OV303, the coefficients of EV2 (0.007), EV4 (0.173), and EV5 (0.093) are positive.This suggests that the elderly, individuals with higher education levels, and high-income earners believe that strategically concentrating next-generation growth industries can promote comprehensive industrial revival.
For OV304 and OV310, the coefficients of EV4 (0.068 and 0.118, respectively) and EV5 (0.063 and 0.055, respectively) are positive.This indicates that individuals with higher education levels and high-income earners believe that (1) strengthening industrial clustering in the region can support development and (2) increasing opportunities for interaction with innovative businesspeople can lead to a transformation in traditional management practices.
For OV305, the coefficients of EV2 (0.009) and EV4 (0.125) are positive.This suggests that the elderly and individuals with higher education levels believe that launching new businesses based on disaster experiences, developing new products, and exploring new sales channels are necessary.
For OV306 and OV311, the coefficients of EV5 (0.060 and 0.085, respectively) are positive.This indicates that high-income earners believe that (1) promoting joint research between academia and industry and developing new products are necessary and (2) planning and developing shopping streets in downtown areas should be carried out systematically.
For OV307 and OV312, the coefficients of EV4 (0.148 and 0.105, respectively) are positive.This suggests that individuals with higher education levels believe that (1) creating and nurturing startup companies through initiatives led by local governments is important and (2) urban management should be implemented by companies specializing in community development.
For OV308, the coefficient of EV3 (−0.071) is negative, while that of EV4 (0.086) is positive.Those who do not have children and those who are highly educated believe that unemployed disaster victims should be provided with jobs in restoration work to ensure their employment.

Hypothesis Verification
Before discussing the results, let us verify the three hypotheses (H 1 to H 3 ) based on the estimation results of the ordinal logistic regression analysis.The results of the verification showed that explanatory variables related to individual attributes such as gender, parenthood status, education level, and income were significant, leading to the rejection of the null hypothesis.This indicates that statistically significant differences exist among individuals in Japan regarding their interest, memory, and concerns related to reconstruction issues and lessons learned from disasters.As previously mentioned, Tsuji (2016) has shown that participation in community meetings on post-disaster reconstruction increases with age and education level.This study observed a similar trend.

Discussion
This study conducted a survey of residents' attitudes toward reconstruction issues and lessons learned from the GEJE, analyzed them statistically, and provided insights.The following points were revealed: Firstly, around 30% of respondents felt that support was being provided to victims of the GEJE, and few respondents felt that none of the support measures were effective.Furthermore, over 20% of respondents felt that housing, community development, living environments, and industries and livelihoods in the affected areas were being supported.Similarly, over 20% of respondents felt that lessons and know-how were being utilized in collaborative reconstruction projects involving NGOs, private companies, and government agencies.
Secondly, when asked to prioritize the importance of post-disaster reconstruction and lessons learned, "support for victims" ranked first, followed by "reconstruction of housing and communities", "revival of industries and livelihoods", and "collaboration and inheritance".Over 40% of respondents in disaster-prone Japan expressed a desire to incorporate these lessons into future endeavors, including lessons learned from rebuilding agricultural, forestry, and fisheries industries in disaster-affected areas; inheriting memories and records of the disaster; and lessons learned from rebuilding industries, commercial facilities, and shopping streets in disaster-affected areas.
The results of the ordinal logistic regression analysis revealed that males, individuals without children, the elderly, those with higher education levels, and high-income earners had a strong intention, statistically speaking, to incorporate lessons from rebuilding agricultural, forestry, and fisheries industries in disaster-affected areas.Similarly, males, the elderly, those with higher education levels, and high-income earners showed a strong intention to inherit memories and records of the disaster, while those living closer to the Fukushima Daiichi Nuclear power plant expressed a desire for the establishment of disaster heritage facilities.Furthermore, males, individuals without children, the elderly, those with higher education levels, and high-income earners showed a strong intention to incorporate lessons from rebuilding industries, commercial facilities, and shopping streets in disaster-affected areas.
Going forward, Japan's disaster-affected areas must continue to pursue reconstruction policies that focus on the revitalization of agriculture, forestry, fisheries, and industry and livelihoods.The Japanese government also needs to reconsider its disaster prevention plan based on the lessons learned from the GEJE and pass on the lessons of the disaster to the people of Japan.

Conclusions
In summary, the differences in individual attributes were clearly reflected in attitudes toward post-disaster reconstruction issues and lessons learned from the GEJE.Those who intend to recover from the disaster, remember it, and inherit its records tend to be males, the elderly, those with higher education levels, and high-income earners.These leading members of Japanese society have a strong interest in rebuilding agricultural, forestry, and fisheries industries, as well as housing and community development, living environments, industries, and livelihoods.The results of this research show that the strong willingness of residents to pass on memories and records of the earthquake to the nucleus of the community, and to pass on lessons learned in the reconstruction process, can be expressed as statistically significant results.They are likely to take the lead in promoting the modernization, large-scale development, and clustering of agricultural, forestry, and fisheries industries, as well as in rebuilding communities and livelihoods.However, as Yamakawa (2018) points out, despite the promotion of compact community development in disaster-affected areas, the reality is that urban development centered around large stores is progressing, resulting in commercial clustering different from traditional shopping streets.In Fukushima Prefecture, for example, the population is predicted to halve by 2060 compared to 2010 (Fukushima Prefecture Reconstruction and Comprehensive Planning Division 2019).Therefore, reconstruction policies focusing on downsizing for a shrinking population should be recommended in disaster-affected areas.Moreover, reconstruction policies and industrial policies under the shock doctrine (radical market-oriented reforms implemented in the wake of major disasters) should not be implemented in disasteraffected areas.Instead, policymakers should develop reconstruction policies tailored to the differences among Japanese citizens, taking into account the lessons learned from the GEJE and planning for the future.

Future Challenges
Finally, although this study statistically analyzed post-disaster reconstruction issues and lessons learned from the GEJE, it is important to address future challenges.The survey in this paper was conducted among residents who are highly interested in various issues related to the nuclear power plant accident in Fukushima.In a survey dealing with the nuclear accident, if only those who agree with the reconstruction policy are surveyed, the number of respondents who agree with the policy will increase.On the other hand, if only those who oppose the reconstruction policy are surveyed, the number of respondents who oppose the policy will increase.Therefore, this paper takes a neutral position without advocating for or against the reconstruction policy.The estimation results of this study showed that approximately 25% of people feel that support for disaster-affected areas, housing and community development, living environments, and lessons and know-how are being effectively utilized.However, looking at these results in reverse, approximately 75% of people may feel that reconstruction support and lessons are not being effectively utilized.As mentioned above in Section 2.3 (tabulation method), self-selection bias may have been caused by the inclusion of the intention to oppose the reconstruction policy of the Japanese government.Yamakawa (2018) mentioned that post-disaster reconstruction policies implemented after the GEJE were heavily skewed toward infrastructure development in disaster areas, resulting in insufficient guarantees for the livelihoods of disaster victims.It cannot be determined from the estimation results of this study alone whether Japanese citizens feel that their country's reconstruction support measures and lessons learned are not being utilized or if they are simply indifferent.Future research would include a web survey of Fukushima and Miyagi Prefectures to statistically analyze how GEJE survivors evaluate Japan's reconstruction support measures and lessons learned.Additional research would examine memorializing and recording the GEJE.When continuing the study, we would like to develop a questionnaire to further reduce self-selection bias.
Finally, in recent years, the perspective of enhancing the quality of society, such as comfort, natural environment, safety, and security, has also become important, and project evaluation methods need to respond accordingly.Until now, no measurement method has been established for the benefits related to ensuring the safety and security of society against disasters.In this paper, we have not yet developed a method to evaluate the benefits related to the uncertainty of disasters.We would like to study this issue at another time in the future.

Figure 1 .
Figure 1.Post-disaster recovery and importance of lessons learned.

Figure 1 .
Figure 1.Post-disaster recovery and importance of lessons learned.

Figure 2 .
Figure 2. Lessons learned in rebuilding agriculture, forestry, and fisheries in the affected areas.Note: See Table 2 for the evaluation items for OV101 to OV112 in the figure.

Figure 2 .
Figure 2. Lessons learned in rebuilding agriculture, forestry, and fisheries in the affected areas.Note: See Table 2 for the evaluation items for OV101 to OV112 in the figure.

Figure 2 .
Figure 2. Lessons learned in rebuilding agriculture, forestry, and fisheries in the affected areas.Note: See Table2for the evaluation items for OV101 to OV112 in the figure.

Figure 3 .
Figure 3. Lessons learned in passing on memories and records of the disaster.Note: See Table3for the evaluation items for OV201 to OV206 in the figure.

Figure 3 .
Figure 3. Lessons learned in passing on memories and records of the disaster.Note: See Table3for the evaluation items for OV201 to OV206 in the figure.

Economies 2024 ,
12, x FOR PEER REVIEW 13 of 24 desire to learn lessons for rebuilding industries, commercial facilities, and shopping districts in the affected areas.

Figure 4 .
Figure 4. Lessons learned in the reconstruction of industries, commercial facilities, and shopping areas in the affected areas.Note: See Table 4 for the evaluation items for OV301 to OV312 in the figure.

Figure 4 .
Figure 4. Lessons learned in the reconstruction of industries, commercial facilities, and shopping areas in the affected areas.Note: See Table 4 for the evaluation items for OV301 to OV312 in the figure.

Table 1 .
List of hypotheses.

Table 2 .
List of objective variables for H 1.

Table 3 .
List of objective variables for H 2.

Table 4 .
List of objective variables for H 3.

Table 5 .
List of explanatory variables.

Table 6 .
Estimation results on lessons learned in restoring agriculture, forestry, and fisheries in the affected areas (ordinal logistic regression analysis estimation results).

Table 7 .
Estimation results on lessons learned in passing on memories and records of the disaster (ordinal logistic regression analysis estimation results).

Table 8 .
Estimation Results on Lessons Learned in Reconstructing Agriculture, Forestry, and Fisheries in the Affected Areas (Ordinal Logistic Regression Analysis Estimation Results).Table8presents the estimation results for lessons learned in rebuilding industries, commercial facilities, and shopping streets in disaster-affected areas (H 3 ).