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The Spotlight: A General Method for Discovering Systematic Errors in Deep Learning Models

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Supervised learning models often make systematic errors on rare subsets of the data. When these subsets correspond to explicit labels in the data (e.g., gender, race) such poor performance can be identified straightforwardly. This paper introduces a method for discovering systematic errors that do not correspond to such explicitly labelled subgroups. The key idea is that similar inputs tend to have similar representations in the final hidden layer of a neural network. We leverage this structure by "shining a spotlight" on this representation space to find contiguous regions where the model performs poorly. We show that the spotlight surfaces semantically meaningful areas of weakness in a wide variety of existing models spanning computer vision, NLP, and recommender systems.

Greg d'Eon, Jason d'Eon, James R. Wright, Kevin Leyton-Brown• 2021

Related benchmarks

TaskDatasetResultRank
Error slice discoveryCelebA
Precision@1025
17
Error slice discoveryMetaShift
Precision@1020
17
Error slice discoveryMNIST-Sum
Precision@105
17
Error slice discoveryWaterbirds
Precision@105
17
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