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The Definitions of Interpretability and Learning of Interpretable Models (2105.14171v1)

Published 29 May 2021 in cs.LG and cs.HC

Abstract: As machine learning algorithms getting adopted in an ever-increasing number of applications, interpretation has emerged as a crucial desideratum. In this paper, we propose a mathematical definition for the human-interpretable model. In particular, we define interpretability between two information process systems. If a prediction model is interpretable by a human recognition system based on the above interpretability definition, the prediction model is defined as a completely human-interpretable model. We further design a practical framework to train a completely human-interpretable model by user interactions. Experiments on image datasets show the advantages of our proposed model in two aspects: 1) The completely human-interpretable model can provide an entire decision-making process that is human-understandable; 2) The completely human-interpretable model is more robust against adversarial attacks.

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Authors (2)
  1. Weishen Pan (14 papers)
  2. Changshui Zhang (81 papers)
Citations (3)

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