Publication | Open Access
Automated Local Regression Discontinuity Design Discovery
13
Citations
27
References
2018
Year
Unknown Venue
Causal ModelEngineeringCausal RelationshipsData SciencePredictive AnalyticsLocalized RddsKnowledge DiscoveryOptimal Experimental DesignStatistical InferenceDiscontinuityCausalityPublic HealthCausal ReasoningStatisticsCausal Relation ExtractionCausal InferenceRegression Discontinuity DesignsSemi-nonparametric Estimation
Inferring causal relationships in observational data is crucial for understanding scientific and social processes. We develop the first statistical machine learning approach for automatically discovering regression discontinuity designs (RDDs), a quasi-experimental setup often used in econometrics. Our method identifies interpretable, localized RDDs in arbitrary dimensional data and can seamlessly compute treatment effects without expert supervision. By applying the technique to a variety of synthetic and real datasets, we demonstrate robust performance under adverse conditions including unobserved variables, substantial noise, and model
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