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Towards Group Robustness in the presence of Partial Group Labels
[article]
2022
Learning invariant representations is an important requirement when training machine learning models that are driven by spurious correlations in the datasets. These spurious correlations, between input samples and the target labels, wrongly direct the neural network predictions resulting in poor performance on certain groups, especially the minority groups. Robust training against these spurious correlations requires the knowledge of group membership for every sample. Such a requirement is
doi:10.48550/arxiv.2201.03668
fatcat:z27rjkptazbn7d3m73b5oc4oqm