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Classification trees for poverty mapping

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  • Bilton, Penny
  • Jones, Geoff
  • Ganesh, Siva
  • Haslett, Steve

Abstract

Poverty mapping uses small area estimation techniques to estimate levels of deprivation (poverty, undernutrition) across small geographic domains within a country. These estimates are then displayed on a poverty map, and used by aid organizations such as the United Nations World Food Programme for the efficient allocation of aid. Current methodology employs unit-level regression modelling of a target variable (household income, child weight-for-age). An alternative modelling technique is proposed, using tree-based methods, that has some practical advantages. Alternative ways of amalgamating the unit-level predictions from classification trees to small area level are explored, adapting the trees to account for the survey design, and resampling strategies are proposed for producing standard errors. The methodology is evaluated using both real data and simulations based on a poverty mapping study in Nepal. The simulations suggest that amalgamation of posterior probabilities from the tree gives approximately unbiased estimates, and standard errors can be calculated using a cluster bootstrap approach with cluster effects included in the predictions. Small area estimates of poverty incidence for a region in Nepal, generated using the proposed tree based method, are comparable to the published results obtained by the standard method.

Suggested Citation

  • Bilton, Penny & Jones, Geoff & Ganesh, Siva & Haslett, Steve, 2017. "Classification trees for poverty mapping," Computational Statistics & Data Analysis, Elsevier, vol. 115(C), pages 53-66.
  • Handle: RePEc:eee:csdana:v:115:y:2017:i:c:p:53-66
    DOI: 10.1016/j.csda.2017.05.009
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    References listed on IDEAS

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    2. Patrick Krennmair & Timo Schmid, 2022. "Flexible domain prediction using mixed effects random forests," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 71(5), pages 1865-1894, November.
    3. Dang,Hai-Anh H., 2018. "To impute or not to impute ? a review of alternative poverty estimation methods in the context of unavailable consumption data," Policy Research Working Paper Series 8403, The World Bank.
    4. Hai-Anh H. Dang, 2019. "To impute or not to impute, and how? A review of alternative poverty estimation methods in the context of unavailable consumption data," Working Papers 507, ECINEQ, Society for the Study of Economic Inequality.
    5. Grzegorz Wałęga & Agnieszka Wałęga, 2021. "Over-indebted Households in Poland: Classification Tree Analysis," Social Indicators Research: An International and Interdisciplinary Journal for Quality-of-Life Measurement, Springer, vol. 153(2), pages 561-584, January.
    6. Hai‐Anh H. Dang, 2021. "To impute or not to impute, and how? A review of poverty‐estimation methods in the absence of consumption data," Development Policy Review, Overseas Development Institute, vol. 39(6), pages 1008-1030, November.

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