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Diverse Weight Averaging for Out-of-Distribution Generalization

Authors :
Ramé, Alexandre
Kirchmeyer, Matthieu
Rahier, Thibaud
Rakotomamonjy, Alain
Gallinari, Patrick
Cord, Matthieu
Publication Year :
2022

Abstract

Standard neural networks struggle to generalize under distribution shifts in computer vision. Fortunately, combining multiple networks can consistently improve out-of-distribution generalization. In particular, weight averaging (WA) strategies were shown to perform best on the competitive DomainBed benchmark; they directly average the weights of multiple networks despite their nonlinearities. In this paper, we propose Diverse Weight Averaging (DiWA), a new WA strategy whose main motivation is to increase the functional diversity across averaged models. To this end, DiWA averages weights obtained from several independent training runs: indeed, models obtained from different runs are more diverse than those collected along a single run thanks to differences in hyperparameters and training procedures. We motivate the need for diversity by a new bias-variance-covariance-locality decomposition of the expected error, exploiting similarities between WA and standard functional ensembling. Moreover, this decomposition highlights that WA succeeds when the variance term dominates, which we show occurs when the marginal distribution changes at test time. Experimentally, DiWA consistently improves the state of the art on DomainBed without inference overhead.<br />Comment: 36 pages, 16 figures, 15 tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.09739
Document Type :
Working Paper