Determinants of Financial Inclusion in Kenya: A Demand-Side Perspective

John K. Njenga, E. N. Irungu
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Abstract

This study sought to analyze the underlying financial inclusion determinants in Kenya. The study applies ordinal logit regression to examine the effect of the residential area, gender, education level, marital status, and employment type on financial inclusion. Financial inclusion is measured by developing a financial inclusion index for ten binary financial services variables. From the index, three financial inclusion levels are designed. These include low financial inclusion with scores of zero to three, medium with scores of four to six, and high level with scores of seven to ten. The estimates of the ordinal model are statistically significant for all factors considered except gender. Area of residence, age, education type, income, and marital status positively affect the log odds of financial inclusion, while employment is negatively linked. Education, employment, and marital status have interaction effects on financial inclusion. This study recommends that the Kenyan government formulate and strengthen policies to tackle challenges such as gender disparity, rural bank infrastructure development, fostering an environment conducive for entrepreneurship to address unemployment and income disparities, advocating for secondary school completion, and addressing social issues impacting family stability, including separation or the absence of marriage.
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肯尼亚金融包容性的决定因素:需求方视角
本研究旨在分析肯尼亚金融包容性的基本决定因素。研究采用顺序对数回归法来考察居住地区、性别、教育水平、婚姻状况和就业类型对金融包容性的影响。金融包容性是通过为十个二进制金融服务变量制定金融包容性指数来衡量的。根据该指数,设计了三个金融包容性等级。其中包括低金融包容性(0 至 3 分)、中等金融包容性(4 至 6 分)和高金融包容性(7 至 10 分)。除性别外,序数模型的估计值对所有考虑因素都具有统计意义。居住地区、年龄、教育类型、收入和婚姻状况对金融包容性的对数几率有积极影响,而就业则呈负相关。教育、就业和婚姻状况对金融包容性具有交互影响。本研究建议肯尼亚政府制定并加强政策,以应对性别差异、农村银行基础设施发展、营造有利于创业的环境以解决失业和收入差距、倡导完成中学学业以及解决影响家庭稳定的社会问题(包括分居或不结婚)等挑战。
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