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Estimating Average Treatment Effects With Support Vector Machines.

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  • 1Institute for Quantitative Social Science, Harvard University, Massachusetts, USA.

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Summary
This summary is machine-generated.

Support vector machine (SVM) effectively balances covariates for causal effect estimation. This machine learning method optimizes treatment and control group balance while maximizing sample size, outperforming existing techniques.

Keywords:
causal inferencecovariate balancematchingsubset selectionweighting

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Area of Science:

  • Machine Learning
  • Causal Inference
  • Statistical Modeling

Background:

  • Support Vector Machine (SVM) is a widely used classification algorithm.
  • Estimating causal effects requires balancing covariates between treatment and control groups.
  • Existing methods for covariate balancing have limitations.

Purpose of the Study:

  • To demonstrate the utility of SVM for covariate balancing and causal effect estimation.
  • To adapt SVM as a kernel-based weighting procedure for improved balance and sample size.
  • To analyze the trade-off between covariate balance and effective sample size controlled by SVM's regularization parameter.

Main Methods:

  • Adapting the SVM classifier as a kernel-based weighting procedure.
  • Minimizing maximum mean discrepancy between treatment and control groups.
  • Maximizing effective sample size using SVM's regularization parameter for balance-sample size frontier computation.

Main Results:

  • SVM effectively balances covariates and estimates average causal effects under unconfoundedness.
  • SVM provides a continuous relaxation of the largest balanced subset problem, linking to cardinality matching.
  • The regularization parameter in SVM controls the bias-variance trade-off in causal effect estimation.

Conclusions:

  • The proposed SVM-based methodology is competitive with state-of-the-art covariate balancing methods.
  • SVM offers a flexible approach to balancing covariates and estimating causal effects.
  • Simulation and empirical studies validate the performance of the SVM procedure.