LGMay 3

Weight Clipping for Robust Conformal Inference under Unbounded Covariate Shifts

arXiv:2605.0207254.7
Predicted impact top 44% in LG · last 90 daysOriginality Incremental advance
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Provides first theoretical guarantees for weight clipping in conformal inference, addressing a key limitation for practitioners dealing with distribution shifts.

Weighted conformal prediction under covariate shifts suffers from undercoverage when density ratios are unbounded or learned. The authors propose CLISF for density ratio estimation and show it yields bounded expected undercoverage, with data-driven inflation to achieve dataset-conditional coverage, avoiding prior sample complexity issues.

Conformal prediction (CP) provides powerful, distribution-free prediction sets, but its guarantees rely on the exchangeability of training and test data, which is often violated in practice due to covariate shifts. While weighted conformal prediction (WCP) is designed to handle such shifts, it can suffer from significant undercoverage when the density ratio between the distributions is unbounded and/or must be learned. This is because of both overfitting in learning the density ratio, and high variance in estimating the nonconformity score threshold. To address this, we introduce clipped least-squares importance fitting (CLISF) as a reduced-variance method for density ratio estimation. Specifically, we show that density ratios learned using CLISF, when plugged into WCP, have bounded expected undercoverage. Furthermore, we show that the undercoverage can be corrected by running WCP with a slightly inflated coverage target; crucially, we are able to estimate the required level of inflation from the data. We provide the first theoretical guarantees for weight clipping in conformal inference, achieving dataset-conditional coverage with a sample complexity that does not blow up with the higher moments of the true density ratio -- a key limitation of prior work. We verify our results on real-world benchmarks and synthetic data.

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