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arxiv: 2606.18993 · v1 · pith:4TYUHDCQnew · submitted 2026-06-17 · 📊 stat.ML · cs.LG· stat.ME

Sequential Kernel-based Conditional Independence Testing via Adaptive Betting

classification 📊 stat.ML cs.LGstat.ME
keywords conditionalindependenceerrormodel-xsequentialtestingexistingtype
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Testing conditional independence is fundamental yet intrinsically difficult: without additional assumptions, Type I error control is impossible in general. The "Model-X'' paradigm addresses this difficulty by assuming exact knowledge of a relevant conditional distribution. While small deviations from this assumption can sometimes be tolerated in classical one-shot testing, existing sequential conditional independence tests typically require the Model-X conditional to be known exactly, making them fragile when it must instead be estimated. We propose a new approach that is substantially more robust to such estimation error. Our method applies testing-by-betting to an adaptively optimized Kernel Conditional Independence statistic, together with a normalization scheme and a truncate-and-shift calibration strategy. These modifications greatly reduce Type I error inflation while preserving high power across high-dimensional synthetic benchmarks and real-world fairness tasks, outperforming existing sequential Model-X approaches. Code is available at https://github.com/he-zh/SKCI.

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