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Missingness Bias in Model Debugging

About

Missingness, or the absence of features from an input, is a concept fundamental to many model debugging tools. However, in computer vision, pixels cannot simply be removed from an image. One thus tends to resort to heuristics such as blacking out pixels, which may in turn introduce bias into the debugging process. We study such biases and, in particular, show how transformer-based architectures can enable a more natural implementation of missingness, which side-steps these issues and improves the reliability of model debugging in practice. Our code is available at https://github.com/madrylab/missingness

Saachi Jain, Hadi Salman, Eric Wong, Pengchuan Zhang, Vibhav Vineet, Sai Vemprala, Aleksander Madry• 2022

Related benchmarks

TaskDatasetResultRank
Missingness Bias ReductionCheXpert
KL Divergence1.5
7
Missingness Bias ReductionBreakHis
KL Divergence1.54
7
Missingness Bias ReductionMedMCQA
KL Divergence1.4
7
Missingness Bias ReductionCTG
KL Divergence2.85
7
Missingness Bias ReductionBrain MRI
KL Divergence1.4
7
Missingness Bias ReductionMedQA
KL Divergence2.68
7
Missingness Bias ReductionBreast cancer
KL Divergence2.13
7
Missingness Bias ReductionPhysioNet
KL Divergence8.14
7
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