Measurement of Explanations Generated by XAI Methods Using Features.

Cătălin-Mihai Pesecan, Lăcrămioara Stoicu-Tivadar
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Abstract

An increasing number of explainability methods began to emerge as a response for the black-box methods used to make decisions that could not be easily explained. This created the need for a better evaluation for these methods. In this paper we propose a new method for evaluation based on features. The main advantage of applying the proposed method to CNNs explanations are: a fully automated way to measure the quality of an explanation and the fact that the score uses the same information as the CNN, in this way being able to offer a measure of the quality of explanation that can be obtained automatically, ensuring that the human bias will not be present in the measurement of the explanation.

利用特征测量 XAI 方法生成的解释。
越来越多的可解释性方法开始出现,作为对黑箱方法的回应,黑箱方法用于做出不易解释的决策。这就需要对这些方法进行更好的评估。在本文中,我们提出了一种基于特征的新评估方法。将所提出的方法应用于 CNN 解释的主要优势在于:采用完全自动化的方式来衡量解释的质量,而且评分使用与 CNN 相同的信息,从而能够提供一种可自动获得的解释质量衡量方法,确保在衡量解释时不会出现人为偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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