Modeling Self Help Groups’ Impact on Livelihoods in Murang’a East Sub-County: A Logistic Regression Approach

Jane Wangui Runo, A. Anapapa, E. Nyarige
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Abstract

According to the World Bank (2022), approximately 8.9 million people, or 17% of Kenya’s population, live below the poverty line of 1.9 USD on a daily basis, majority of them in the rural areas. This research aimed to analyze the impact of self-help groups on the livelihoods of rural areas of Kenya, with the goal of promoting sustainable livelihoods and reducing poverty. To achieve this, the study employed machine learning specifically the logistic regression algorithm to model the impact of self-help groups on livelihoods in Murang’a East sub-county. The study used primary data obtained through the issuance of structured questionnaires to SHG members, on their wealth status since joining the self-help groups on areas such as ability to save, access to credit services and acquiring assets, both income generating and household. A total of 969 members of self-help groups were issued with the questionnaire. The study’s findings helped identify the key predictors of members’ livelihoods and provided insights into how self-help groups influence them. The results of logistic regression indicated that 91.33% of the members had seen a significant improvement on their wealth status since joining self-help groups and the significant predictor variables were income generating assets, access to basic commodities and access to loans. The model’s accuracy was 88.04%. The ethical considerations in this study included ensuring no coercion or pressure to participate in the study and confidentiality and privacy of the respondents.
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穆朗阿东分县自助团体对生计的影响建模:逻辑回归方法
根据世界银行(2022 年)的数据,约有 890 万人(占肯尼亚人口的 17%)每天生活在 1.9 美元的贫困线以下,其中大部分生活在农村地区。本研究旨在分析自助团体对肯尼亚农村地区生计的影响,目的是促进可持续生计和减少贫困。为此,本研究采用了机器学习,特别是逻辑回归算法,来模拟自助团体对穆朗阿东分县生计的影响。研究使用了通过向自助小组成员发放结构化问卷获得的原始数据,这些数据涉及他们自加入自助小组以来在储蓄能力、获得信贷服务和获取创收及家庭资产等方面的财富状况。共向 969 名自助小组成员发放了调查问卷。研究结果有助于确定预测成员生计的关键因素,并深入了解自助小组如何影响成员的生计。逻辑回归结果表明,91.33%的成员在加入自助小组后,其财富状况得到了显著改善,而重要的预测变量是创收资产、获得基本商品的机会和获得贷款的机会。模型的准确率为 88.04%。本研究的伦理考虑因素包括确保没有胁迫或压力参与研究,以及为受访者保密和保护其隐私。
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