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WILDS: A Benchmark of in-the-Wild Distribution Shifts
[article]
2021
arXiv
pre-print
Distribution shifts -- where the training distribution differs from the test distribution -- can substantially degrade the accuracy of machine learning (ML) systems deployed in the wild. Despite their ubiquity in the real-world deployments, these distribution shifts are under-represented in the datasets widely used in the ML community today. To address this gap, we present WILDS, a curated benchmark of 10 datasets reflecting a diverse range of distribution shifts that naturally arise in
arXiv:2012.07421v3
fatcat:bsohmukpszajxeadeo25oxmbs4