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Robust Data Fusion via Subsampling

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arxiv 2508.12048 v1 pith:7KJ3PMQ6 submitted 2025-08-16 stat.ML cs.LG

Robust Data Fusion via Subsampling

classification stat.ML cs.LG
keywords datalearningothertransferexternalsubsamplingmethodsmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Data fusion and transfer learning are rapidly growing fields that enhance model performance for a target population by leveraging other related data sources or tasks. The challenges lie in the various potential heterogeneities between the target and external data, as well as various practical concerns that prevent a na\"ive data integration. We consider a realistic scenario where the target data is limited in size while the external data is large but contaminated with outliers; such data contamination, along with other computational and operational constraints, necessitates proper selection or subsampling of the external data for transfer learning. To our knowledge,transfer learning and subsampling under data contamination have not been thoroughly investigated. We address this gap by studying various transfer learning methods with subsamples of the external data, accounting for outliers deviating from the underlying true model due to arbitrary mean shifts. Two subsampling strategies are investigated: one aimed at reducing biases and the other at minimizing variances. Approaches to combine these strategies are also introduced to enhance the performance of the estimators. We provide non-asymptotic error bounds for the transfer learning estimators, clarifying the roles of sample sizes, signal strength, sampling rates, magnitude of outliers, and tail behaviors of model error distributions, among other factors. Extensive simulations show the superior performance of the proposed methods. Additionally, we apply our methods to analyze the risk of hard landings in A380 airplanes by utilizing data from other airplane types,demonstrating that robust transfer learning can improve estimation efficiency for relatively rare airplane types with the help of data from other types of airplanes.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Contaminated Multi-task Learning with Heterogeneity: Fundamental Limits and Optimal Algorithms

    stat.ML 2026-07 accept novelty 7.5

    Filtering-based robust multi-task gradient descent matches minimax rates under task contamination and heterogeneity, removing the √d contamination barrier of regularization and score-based methods.

  2. Distributed Prediction under Heterogeneity with Unidentifiable Parameter

    stat.ME 2026-07 unverdicted novelty 6.0

    A distributed framework with trace-similarity penalty and invex relaxation achieves two-phase minimax optimal rates and sharper model-free prediction error bounds under unidentifiable parameters and heterogeneity.