2021
DOI: 10.48550/arxiv.2111.09744
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Covered Information Disentanglement: Model Transparency via Unbiased Permutation Importance

Abstract: Model transparency is a prerequisite in many domains and an increasingly popular area in machine learning research. In the medical domain, for instance, unveiling the mechanisms behind a disease often has higher priority than the diagnostic itself since it might dictate or guide potential treatments and research directions. One of the most popular approaches to explain model global predictions is the permutation importance where the performance on permuted data is benchmarked against the baseline. However, thi… Show more

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