Axiomatic Characterization of Data-Driven Influence Measures for Classification

7 Aug 2017Jakub SliwinskiMartin StrobelYair Zick

We study the following problem: given a labeled dataset and a specific datapoint x, how did the i-th feature influence the classification for x? We identify a family of numerical influence measures - functions that, given a datapoint x, assign a numeric value phi_i(x) to every feature i, corresponding to how altering i's value would influence the outcome for x... (read more)

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