Spurious Correlations and Where to Find Them

ICML 2023 Workshop SCIS Submission86 Authors

Published: 20 Jun 2023, Last Modified: 28 Jul 2023SCIS 2023 PosterEveryoneRevisions
Keywords: spurious correlations, causal graphs
TL;DR: Empirically unifying common hypotheses about the occurrence of spurious correlations.
Abstract: Spurious correlations occur when a model learns unreliable features from the data and are a well-known drawback of data-driven learning. Although there are several algorithms proposed to mitigate it, we are yet to jointly derive the indicators of spurious correlations. As a result, the solutions built upon standalone hypotheses fail to beat simple ERM baselines. We collect some of the commonly studied hypotheses behind the occurrence of spurious correlations and investigate their influence on standard ERM baselines using synthetic datasets generated from causal graphs. Subsequently, we observe patterns connecting these hypotheses and model design choices.
Submission Number: 86
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