We propose causal isotonic calibration, a novel nonparametric method for calibrating predictors of heterogeneous treatment effects. Furthermore, we introduce cross-calibration, a data-efficient variant of calibration that eliminates the need for hold-out calibration sets. Cross-calibration leverages cross-fitted predictors and generates a single calibrated predictor using all available data. Under weak conditions that do not assume monotonicity, we establish that both causal isotonic calibration and cross-calibration achieve fast doubly-robust calibration rates, as long as either the propensity score or outcome regression is estimated accurately in a suitable sense. The proposed causal isotonic calibrator can be wrapped around any black-box learning algorithm, providing robust and distribution-free calibration guarantees while preserving predictive performance.
Causal isotonic calibration for heterogeneous treatment effects
Two novel calibration methods, causal isotonic calibration and cross-calibration, improve the accuracy of heterogeneous treatment effect predictors without requiring hold-out sets.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2302.14011v2ARXIV-DEFAULT
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