A new data mining approach to estimate causal effects of policy interventions |
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Authors: | F. Camillo,Ida D Attoma |
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Affiliation: | aDepartment of Statistical Science, University of Bologna, Via Belle Arti 41, 40126 Bologna, Italy |
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Abstract: | This paper presents a data driven approach that enables one to obtain a measure of comparability between-groups in the presence of observational data.The main idea lies in the use of the general framework of conditional multiple correspondences analysis as a tool for investigating the dependence relationship between a set of observable categorical covariates X and an assignment-to-treatment indicator variable T, in order to obtain a global measure of comparability between-groups according to their dependence structure. Then, we propose a strategy that enables one to find treatment groups, directly comparable with respect to pre-treatment characteristics, on which estimate local causal effects. |
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Keywords: | Selection bias Program evaluation Data mining Conditional space Matrix decomposition |
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