Examining a weight reallocation method for small area estimation of poverty


Abstract


Small area estimation methodologies used in poverty estimation usually entail significant data requirements and sophisticated modeling techniques. However, there is a growing need for simpler small area estimation tools which can be easily institutionalized by national statistical offices of developing countries. Using a survey reweighting method, the paper demonstrates a more straightforward approach of estimating poverty statistics at the sub-domain level.


DOI Code: 10.1285/i20705948v7n2p417

Keywords: small area estimation, survey reweighting, Lorenz curve estimation

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