Adaptive and Stratified Subsampling Techniques for High Dimensional Non-Standard Data Environments
This paper addresses the challenge of estimating high-dimensional parameters in non-standard data environments, where traditional methods often falter due to issues such as heavy-tailed distributions, data contamination, and dependent observations. We propose robust subsampling techniques, specifica...
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Zusammenfassung: | This paper addresses the challenge of estimating high-dimensional parameters
in non-standard data environments, where traditional methods often falter due
to issues such as heavy-tailed distributions, data contamination, and dependent
observations. We propose robust subsampling techniques, specifically Adaptive
Importance Sampling (AIS) and Stratified Subsampling, designed to enhance the
reliability and efficiency of parameter estimation. Under some clearly outlined
conditions, we establish consistency and asymptotic normality for the proposed
estimators, providing non-asymptotic error bounds that quantify their
performance. Our theoretical foundations are complemented by controlled
experiments demonstrating the superiority of our methods over conventional
approaches. By bridging the gap between theory and practice, this work offers
significant contributions to robust statistical estimation, paving the way for
advancements in various applied domains. |
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DOI: | 10.48550/arxiv.2410.12367 |