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Subsample-Based Estimation under Dynamic Contamination

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  • Yukai Yang
  • Rickard Sandberg

Abstract

Subsample-based estimation is a standard tool for achieving robustness to outliers in econometric models. This paper shows that, in dynamic time series settings, such procedures are fundamentally invalid under contamination, even under oracle knowledge of contamination locations. The key issue is that contamination propagates through the model's residual filter and distorts the estimation criterion itself. As a result, removing contaminated observations does not, in general, restore the uncontaminated objective or ensure consistency. We characterise this failure as a structural incompatibility between pointwise subsampling and residual propagation. To address it, we propose a propagation-compatible transformation of index sets, formalised through a patch removal operator that removes the residual footprint of contamination. Under suitable conditions, the proposed operator leaves the estimator asymptotically unchanged under the uncontaminated model, while restoring consistency for the clean-data parameter under contamination. The results apply to a broad class of residual-based estimators and show that valid subsample-based estimation in dynamic models requires explicit control of residual propagation.

Suggested Citation

  • Yukai Yang & Rickard Sandberg, 2026. "Subsample-Based Estimation under Dynamic Contamination," Papers 2604.17676, arXiv.org, revised Apr 2026.
  • Handle: RePEc:arx:papers:2604.17676
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    File URL: http://arxiv.org/pdf/2604.17676
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