Abstract Interpretation-Based Feature Importance for SVMs

In this talk, we will discuss a symbolic representation for support vector machines (SVMs) by means of abstract interpretation. We leverage this abstraction in two ways: (1) to enhance the interpretability of SVMs by deriving a novel feature importance measure called abstract feature importance (AFI), that does not depend in any way on a given dataset of…

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