We propose a nonparametric framework that decomposes the causal contributions of a treatment variable to an outcome disparity between two groups. We decompose the causal contributions of treatment into group differences in 1) treatment prevalence, 2) average treatment effects, and 3) selection into treatment based on individual-level treatment effects. Our framework reformulates the classic Kitagawa-Blinder-Oaxaca decomposition nonparametrically in causal terms, complements causal mediation analysis by explaining group disparities instead of group effects, and distinguishes more mechanisms than recent random equalization decomposition. In contrast to all prior approaches, our framework isolates the causal contribution of differential selection into treatment as a novel mechanism for explaining and ameliorating group disparities. We develop nonparametric estimators based on efficient influence functions that are $\sqrt{n}$-consistent, asymptotically normal, semiparametrically efficient, and multiply robust to misspecification. We apply our framework to decompose the causal contributions of education to the disparity in adult income between parental income groups (intergenerational income persistence). We find that both differential prevalence of, and differential selection into, college graduation significantly contribute to intergenerational income persistence.
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