2022
DOI: 10.48550/arxiv.2204.02241
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A Set Membership Approach to Discovering Feature Relevance and Explaining Neural Classifier Decisions

Abstract: Neural classifiers are non linear systems providing decisions on the classes of patterns, for a given problem they have learned. The output computed by a classifier for each pattern constitutes an approximation of the output of some unknown function, mapping pattern data to their respective classes. The lack of knowledge of such a function along with the complexity of neural classifiers, especially when these are deep learning architectures, do not permit to obtain information on how specific predictions have … Show more

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