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Machine learning-based prediction of energy poverty in Bangladesh: Unveiling key socioeconomic drivers for targeted policy actions

Shamal Chandra Karmaker, Ajoy Rjbongshi, Bikash Pal, Kanchan Kumar Sen and Andrew J. Chapman

Socio-Economic Planning Sciences, 2025, vol. 99, issue C

Abstract: Energy poverty remains a critical issue in Bangladesh, with substantial disparities in access to energy services across socio-economic and geographic groups. This study explores the socio-demographic factors driving multidimensional energy poverty and evaluates the potential of machine learning (ML) models to improve the predictive accuracy of the multidimensional energy poverty index score compared to traditional statistical models. Using national survey data, we first applied binary logistic regression to identify key determinants, such as division, place of residence, education, and financial inclusion. The results indicate that rural households, particularly in Rangpur and Barisal, face a significantly higher risk of energy poverty. In contrast, higher education and access to financial services are associated with reduced energy deprivation. Recognizing the limitations of traditional statistical models in capturing complex, nonlinear interactions and multicollinearity among socio-demographic factors, we implemented six ML algorithms—Random Forest, Support Vector Machine, K-Nearest Neighbor, Linear Discriminant Analysis, Extreme Gradient Boosting, and Artificial Neural Networks—to enhance predictive precision. The models demonstrated consistently high accuracy, with geographic and socio-economic factors like division, education and financial inclusion emerging as the most important predictors. Our findings emphasize the need for targeted energy policies, especially in rural areas and disadvantaged divisions. Promoting financial inclusion and improving educational access are recommended as effective strategies to further alleviate energy poverty. While the study provides valuable insights, it acknowledges the limitations of cross-sectional data and calls for further research using longitudinal approaches and an analysis of institutional factors.

Keywords: Energy poverty; Multidimensional energy poverty index (MEPI); Machine learning; Socio-demographic determinants; Rural-urban disparities; Bangladesh (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:eee:soceps:v:99:y:2025:i:c:s003801212500062x

DOI: 10.1016/j.seps.2025.102213

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