2022
DOI: 10.1108/caer-03-2022-0051
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Comparison of machine learning predictions of subjective poverty in rural China

Abstract: PurposeDespite rising incomes and reduction of extreme poverty, the feeling of being poor remains widespread. Support programs can improve well-being, but they first require identifying who are the households that judge their income is insufficient to meet their basic needs, and what factors are associated with subjective poverty.Design/methodology/approachHouseholds report the income level they judge is sufficient to make ends meet. Then, they are classified as being subjectively poor if their own monetary in… Show more

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Cited by 6 publications
(4 citation statements)
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References 63 publications
(169 reference statements)
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“…In this special section, Maruejols et al . (2023) used different machine learning algorithms to predict subjective poverty in rural China.…”
Section: Machine Learning and Its Application In Agricultural Economicsmentioning
confidence: 99%
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“…In this special section, Maruejols et al . (2023) used different machine learning algorithms to predict subjective poverty in rural China.…”
Section: Machine Learning and Its Application In Agricultural Economicsmentioning
confidence: 99%
“…In addition, Maruejols et al . (2023) used random forest and LASSO to identify the importance of variables in predicting poverty in China.…”
Section: Machine Learning and Its Application In Agricultural Economicsmentioning
confidence: 99%
See 1 more Smart Citation
“…Support Vector Machine (SVM) is a powerful machine learning algorithm proposed by Vapnik and Cortes in 1995 [61] and is often widely applied to classification, regression, and other prediction tasks. The SVM is very effective with high dimensional, heterogeneous, and almost unlabeled datasets.…”
Section: Support Vector Machinementioning
confidence: 99%