Comparing Feature Importance and Rule Extraction for Interpretability on Text Data

Gianluigi Lopardo, D. Garreau
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引用次数: 1

Abstract

Complex machine learning algorithms are used more and more often in critical tasks involving text data, leading to the development of interpretability methods. Among local methods, two families have emerged: those computing importance scores for each feature and those extracting simple logical rules. In this paper we show that using different methods can lead to unexpectedly different explanations, even when applied to simple models for which we would expect qualitative coincidence. To quantify this effect, we propose a new approach to compare explanations produced by different methods.
文本数据可解释性特征重要性与规则提取的比较
复杂的机器学习算法越来越多地用于涉及文本数据的关键任务,从而导致可解释性方法的发展。在局部方法中,出现了两类:计算每个特征的重要性分数的方法和提取简单逻辑规则的方法。在本文中,我们表明,使用不同的方法可以导致意想不到的不同的解释,甚至当应用于简单的模型,我们期望定性重合。为了量化这种影响,我们提出了一种新的方法来比较不同方法产生的解释。
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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