Retrospective Causal Inference with Machine Learning Ensembles: An Application to Anti-Recidivism Policies in Colombia
Samii, Cyrus, Paler, Laura, Daly, Sarah Zukerman
We present new methods to estimate causal effects retrospectively from micro data with the assistance of a machine learning ensemble. This approach overcomes two important limitations in conventional methods like regression modeling or matching: (i) ambiguity about the pertinent retrospective counterfactuals and (ii) potential misspecification, overfitting, and otherwise bias-prone or inefficient use of a large identifying covariate set in the estimation of causal effects. Our method targets the analysis toward a well defined ``retrospective intervention effect'' (RIE) based on hypothetical population interventions and applies a machine learning ensemble that allows data to guide us, in a controlled fashion, on how to use a large identifying covariate set. We illustrate with an analysis of policy options for reducing ex-combatant recidivism in Colombia.
Jul-11-2016
- Country:
- South America > Colombia (0.70)
- North America > United States
- New York (0.14)
- Genre:
- Research Report > Experimental Study (0.93)
- Industry:
- Government (1.00)
- Health & Medicine > Epidemiology (0.46)
- Technology: