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Improving Attribution Methods by Learning Submodular Functions
P. Manupriya, T.R. Menta, J. Saketha Nath,
Published in ML Research Press
2022
Volume: 151
   
Pages: 2173 - 2190
Abstract
This work explores the novel idea of learning a submodular scoring function to improve the specificity/selectivity of existing feature attribution methods. Submodular scores are natural for attribution as they are known to accurately model the principle of diminishing returns. A new formulation for learning a deep submodular set function that is consistent with the real-valued attribution maps obtained by existing attribution methods is proposed. The final attribution value of a feature is then defined as the marginal gain in the induced submodular score of the feature in the context of other highly attributed features, thus decreasing the attribution of redundant yet discriminatory features. Experiments on multiple datasets illustrate that the proposed attribution method achieves higher specificity along with good discriminative power. The implementation of our method is publicly available at https://github.com/Piyushi-0/SEA-NN. Copyright © 2022 by the author(s)
About the journal
JournalProceedings of Machine Learning Research
PublisherML Research Press
ISSN26403498