基于多元回归的被征地农民补偿决定因素影响模型研究

Donatien Ntawuruhunga, Mathias Twahirwa
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摘要

近年来,卢旺达的经济转型是由城市化、公路、现代村庄定居点和农业现代化等领域的土地征用引发的。尽管已经开展了各种关于征收的研究,以阐明与征收相关的约束,但据我们所知,还没有使用多元线性回归(MLR)分析模型来确定失地农民的概况与补偿性支付之间的关系。这项研究是在卢旺达东部省进行的。本研究探讨了被征地农民的个人资料对补偿款评估和土地转用征收的影响。利用MLR模型确定响应变量(补偿性支付)与解释变量(被征收农民档案)之间的关系。本研究采用有目的多阶段抽样技术对90名被征地农民进行问卷调查,并使用STATA进行分析。MLR显示了模型的良好拟合(R2 = 0.6900),结果表明农民的年龄、获得土地的方式(通过继承拥有土地的事实)、种植制度(单作实践的事实)和满意度(被满足的事实)与补偿性支付有统计学意义(p£0.05)的关联;而“ubudehe”(成为高收入者的事实)和“civil status”(结婚的事实)在统计上的显著性为10%。这些结果的一个重要含义是,从影响农民财产的基础设施建设征收的角度来看,MLR模型可以解决与此过程相关的几个问题。建议政府、投资者、征收机构和物业估价师通过探索和控制影响征地过程的重要因素来开展征地过程。
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Modeling the Influence of Expropriated Farmers' Determinants on Compensation Payments Using Multiple Regression
In recent years, Rwanda's economic shift has been triggered by expropriation for land conversion in areas of urbanization, roadways, modern village settlements, and agricultural modernization. Even though various studies on expropriation have been carried out to elucidate constraints associated with expropriation, as far as we know, no Multiple Linear Regression (MLR) analysis models have been used to determine the land-lost farmers' profiles' association with compensatory payments. This study was carried out in the Eastern Province of Rwanda. This study investigated how the expropriated farmers' profiles can influence both the compensatory payment appraisal and expropriation for land conversion. The MLR model was utilized to ascertain the relationships between the response variable (compensatory payments) and the explanatory variables (expropriated farmer profiles). Data were obtained using a questionnaire administered to 90 expropriated farmers selected using purposive and multi-stage sampling techniques and analyzed using STATA. The MLR showed a good fit of the model (R2 = 0.6900) with the results that farmer's age, means of acquiring land (the fact of owning land from inheritance), cropping systems (the fact of mono-cropping practice), and satisfaction (the fact of being satisfied) showed statistically significant (p £ 0.05) association with compensatory payments; whereas "ubudehe" (the fact of being a high-income earner) and civil status (the fact of being married) were statistically significant at 10%. An important implication of these results is that in the perspective of expropriation for infrastructure developments that affect farmers' properties, the MLR model can solve several issues associated with this process. As a recommendation, governments, investors, expropriating agencies, and property valuers are encouraged to carry out the process of land expropriation by exploring and controlling the significant factors influencing the process.
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