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Marginal Contribution Feature Importance – an Axiomatic Approach for Explaining Data. Amnon Catav (TAU).
November 7, 2021 @ 12:00 pm - 1:00 pm IST
The recording of Amnon’s talk:
Title:
Marginal Contribution Feature Importance – an Axiomatic Approach for Explaining Data
Abstract:
In recent years, methods were proposed for assigning feature importance scores to measure the contribution of individual features. While in some cases the goal is to understand a specific model, in many cases the goal is to understand the contribution of certain properties (features) to a real-world phenomenon. Thus, a distinction has been made between feature importance scores that explain a model and scores that explain the data.
In this talk, we will demonstrate the cavities of existing SOTA methods for explaining the data and introduce MCI, a novel feature importance score that is based on an axiomatic approach.