The key insights of this paper are:
The authors introduce a framework that effectively combines distributionally robust (DR) learning and safe screening (SS) techniques to identify unnecessary samples and features in supervised learning problems with dynamically changing environments.
They consider a DR covariate-shift setting where the input distribution may change within a certain range during the test phase, but the actual nature of these changes remains unknown.
The proposed DRSS method extends existing SS techniques to accommodate this weight uncertainty, enabling the reliable identification of unnecessary samples and features under any future distribution within the specified range.
The authors provide theoretical guarantees for the DRSS method and validate its performance through numerical experiments on both synthetic and real-world datasets, including applications to deep learning models.
The DRSS method offers practical benefits, such as reducing storage requirements for updating machine learning models and enabling more efficient learning in situations demanding real-time adaptation to environmental changes.
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by Hiroyuki Han... kl. arxiv.org 04-26-2024
https://arxiv.org/pdf/2404.16328.pdfDybere Forespørgsler