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A principled approach to model validation in domain generalization

Authors :
Lyu, Boyang
Nguyen, Thuan
Scheutz, Matthias
Ishwar, Prakash
Aeron, Shuchin
Publication Year :
2023

Abstract

Domain generalization aims to learn a model with good generalization ability, that is, the learned model should not only perform well on several seen domains but also on unseen domains with different data distributions. State-of-the-art domain generalization methods typically train a representation function followed by a classifier jointly to minimize both the classification risk and the domain discrepancy. However, when it comes to model selection, most of these methods rely on traditional validation routines that select models solely based on the lowest classification risk on the validation set. In this paper, we theoretically demonstrate a trade-off between minimizing classification risk and mitigating domain discrepancy, i.e., it is impossible to achieve the minimum of these two objectives simultaneously. Motivated by this theoretical result, we propose a novel model selection method suggesting that the validation process should account for both the classification risk and the domain discrepancy. We validate the effectiveness of the proposed method by numerical results on several domain generalization datasets.<br />Comment: Accepted to ICASSP 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.00629
Document Type :
Working Paper