Litcius/Paper detail

Learning Counterfactual Representations for Estimating Individual Dose-Response Curves

Patrick Schwab, Lorenz Linhardt, Stefan Bauer, Joachim M. Buhmann, Walter Karlen

2020Proceedings of the AAAI Conference on Artificial Intelligence62 citationsDOIOpen Access PDF

Abstract

Estimating what would be an individual's potential response to varying levels of exposure to a treatment is of high practical relevance for several important fields, such as healthcare, economics and public policy. However, existing methods for learning to estimate counterfactual outcomes from observational data are either focused on estimating average dose-response curves, or limited to settings with only two treatments that do not have an associated dosage parameter. Here, we present a novel machine-learning approach towards learning counterfactual representations for estimating individual dose-response curves for any number of treatments with continuous dosage parameters with neural networks. Building on the established potential outcomes framework, we introduce performance metrics, model selection criteria, model architectures, and open benchmarks for estimating individual dose-response curves. Our experiments show that the methods developed in this work set a new state-of-the-art in estimating individual dose-response.

Topics & Concepts

Counterfactual thinkingEconometricsSet (abstract data type)Machine learningRelevance (law)Computer scienceObservational studyData setArtificial intelligenceMathematicsEstimationSelection (genetic algorithm)Model selectionLearning curveStatisticsQuality (philosophy)Artificial neural networkCounterfactual conditionalSelection biasFeature selectionWork (physics)Outcome (game theory)Curve fittingAdvanced Causal Inference TechniquesStatistical Methods in Clinical TrialsHealth Systems, Economic Evaluations, Quality of Life