Cluster-level cross-fitting restores valid coverage for survey-weighted TMLE with flexible learners under stratified multistage designs, while single-fit and internal cross-validation versions under-cover.
Changepoint Detection in Complex Models: Cross-Fitting Is Needed
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abstract
Changepoint detection is commonly formulated by minimizing the sum of in-sample losses to quantify the model's overall fit. However, for flexible modeling procedures -- especially those involving high-dimensional parameter spaces or hyperparameter tuning -- this strategy can lead to inaccurate changepoint estimation due to over-adaptivity biases. To mitigate this issue, we propose a novel cross-fitting methodology based on out-of-sample loss evaluations, which decouples model fitting from changepoint search. We establish a general theoretical framework for consistent changepoint estimation under mild conditions, and further extend it to temporally dependent data. A key implication of the theory is that consistency depends primarily on the models' predictive accuracy over nearly homogeneous segments. Numerical experiments show that the proposed method substantially improves the reliability and adaptability of changepoint detection in complex scenarios.
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stat.ME 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Cross-Fitted Survey-Weighted TMLE with Design-Based Variance for Causal Machine Learning
Cluster-level cross-fitting restores valid coverage for survey-weighted TMLE with flexible learners under stratified multistage designs, while single-fit and internal cross-validation versions under-cover.