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Missingness Bias Calibration in Feature Attribution Explanations

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Popular explanation methods often produce unreliable feature importance scores due to missingness bias, a systematic distortion that arises when models are probed with ablated, out-of-distribution inputs. Existing solutions treat this as a deep representational flaw that requires expensive retraining or architectural modifications. In this work, we challenge this assumption and show that missingness bias can be effectively treated as a superficial artifact of the model's output space. We introduce MCal, a lightweight post-hoc method that corrects this bias by fine-tuning a simple linear head on the outputs of a frozen base model. Surprisingly, we find this simple correction consistently reduces missingness bias and is competitive with, or even outperforms, prior heavyweight approaches across diverse medical benchmarks spanning vision, language, and tabular domains.

Shailesh Sridhar, Anton Xue, Eric Wong• 2026

Related benchmarks

TaskDatasetResultRank
Missingness Bias ReductionCTG
KL Divergence3.35
7
Missingness Bias ReductionPhysioNet
KL Divergence5.01
7
Missingness Bias ReductionBreast cancer
KL Divergence1.92
7
Missingness Bias ReductionCheXpert
KL Divergence8.82
7
Missingness Bias ReductionMedQA
KL Divergence9.44
7
Missingness Bias ReductionBrain MRI
KL Divergence7.43
7
Missingness Bias ReductionBreakHis
KL Divergence4.29
7
Missingness Bias ReductionMedMCQA
KL Divergence9.01
7
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