Article ID Journal Published Year Pages File Type
5057119 Economics & Human Biology 2013 14 Pages PDF
Abstract

Chronic child undernutrition is a persistent problem in developing countries and has been the focus of hundreds of studies where the primary intent is to improve targeting of public health and economic development policies. In national level cross-sectional studies undernutrition is measured as child stunting and the goal is to assess differences in prevalence among population subgroups. Several types of regression modeling frameworks have been used to study childhood stunting but the literature provides little guidance in terms of statistical properties and the ease with which the results can be communicated to the policy community. We compare the results from quantile regression and ordinal regression models. The two frameworks can be linked analytically and together yield complementary insights. We find that reflecting on interpretations from both models leads to a more thorough analysis and forces the analyst to consider the policy utility of the findings. Guatemala is used as the country focus for the study.

► We conduct an integrated analysis of child undernutrition utilizing both quantile and ordinal regression analyses. ► The combined analyses yield complementary insights about changes in the shape of conditional distributions and associated changes in prevalence. ► The synthesis of perspectives about the same underlying process yields policy guidance that improves over either model used alone.

Related Topics
Life Sciences Agricultural and Biological Sciences Agricultural and Biological Sciences (General)
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