XAI-TRIS: non-linear image benchmarks to quantify false positive post-hoc attribution of feature importance

IF 4.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Benedict Clark, Rick Wilming, Stefan Haufe
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引用次数: 0

Abstract

The field of ‘explainable’ artificial intelligence (XAI) has produced highly acclaimed methods that seek to make the decisions of complex machine learning (ML) methods ‘understandable’ to humans, for example by attributing ‘importance’ scores to input features. Yet, a lack of formal underpinning leaves it unclear as to what conclusions can safely be drawn from the results of a given XAI method and has also so far hindered the theoretical verification and empirical validation of XAI methods. This means that challenging non-linear problems, typically solved by deep neural networks, presently lack appropriate remedies. Here, we craft benchmark datasets for one linear and three different non-linear classification scenarios, in which the important class-conditional features are known by design, serving as ground truth explanations. Using novel quantitative metrics, we benchmark the explanation performance of a wide set of XAI methods across three deep learning model architectures. We show that popular XAI methods are often unable to significantly outperform random performance baselines and edge detection methods, attributing false-positive importance to features with no statistical relationship to the prediction target rather than truly important features. Moreover, we demonstrate that explanations derived from different model architectures can be vastly different; thus, prone to misinterpretation even under controlled conditions.

Abstract Image

XAI-TRIS:非线性图像基准,用于量化特征重要性的假阳性事后归因
可解释 "人工智能(XAI)领域提出了一些备受赞誉的方法,这些方法试图让人类 "理解 "复杂的机器学习(ML)方法的决策,例如通过对输入特征赋予 "重要性 "分数。然而,由于缺乏正式的支持,人们并不清楚从特定 XAI 方法的结果中可以安全地得出什么结论,这也阻碍了 XAI 方法的理论验证和经验验证。这意味着,通常由深度神经网络解决的具有挑战性的非线性问题目前缺乏适当的补救措施。在这里,我们为一种线性分类和三种不同的非线性分类场景制作了基准数据集,其中重要的类条件特征在设计上是已知的,可作为地面实况解释。利用新颖的定量指标,我们对三种深度学习模型架构的各种 XAI 方法的解释性能进行了基准测试。我们的研究表明,流行的 XAI 方法往往无法显著超越随机性能基线和边缘检测方法,它们将假阳性重要性归因于与预测目标没有统计关系的特征,而不是真正重要的特征。此外,我们还证明了从不同模型架构中得出的解释可能大相径庭;因此,即使在受控条件下也容易产生误读。
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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来源期刊
Machine Learning
Machine Learning 工程技术-计算机:人工智能
CiteScore
11.00
自引率
2.70%
发文量
162
审稿时长
3 months
期刊介绍: Machine Learning serves as a global platform dedicated to computational approaches in learning. The journal reports substantial findings on diverse learning methods applied to various problems, offering support through empirical studies, theoretical analysis, or connections to psychological phenomena. It demonstrates the application of learning methods to solve significant problems and aims to enhance the conduct of machine learning research with a focus on verifiable and replicable evidence in published papers.
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