灵敏度分析的度量工具与应用于神经网络

IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Jaime Pizarroso, David Alfaya , José Portela, Antonio Muñoz
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引用次数: 0

摘要

由于机器学习模型被认为是具有重大社会影响的自主决策,因此了解这些模型如何工作的需求迅速上升。可解释人工智能(Explainable Artificial Intelligence, XAI)旨在为机器学习模型做出的预测提供解释,以使模型对用户来说更可信、更透明。例如,为问题选择相关的输入变量直接影响模型的学习和准确预测的能力。获取输入变量重要性的主要XAI技术之一是基于偏导数的灵敏度分析。然而,该方法的现有文献没有提供用于从偏导数中检索信息的聚合度量的理由。本文提出了一个利用度量技术研究机器学习模型灵敏度的理论框架。从这个度量解释,一个完整的家族新的定量指标称为α-曲线被提取。这些α-曲线为机器学习模型的输入变量的重要性提供了比文献中现有的XAI方法更深入的信息。我们使用合成数据集和真实数据集证明了α-曲线的有效性,将结果与其他变量重要性的XAI方法进行了比较,并将分析结果与基本事实或文献信息进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Metric tools for sensitivity analysis with applications to neural networks
As Machine Learning models are considered for autonomous decisions with significant social impact, the need to understand how these models work rises rapidly. Explainable Artificial Intelligence (XAI) aims to provide interpretations for predictions made by Machine Learning models, in order to make the model trustworthy and more transparent for the user. For example, selecting relevant input variables for the problem directly impacts the model’s ability to learn and make accurate predictions. One of the main XAI techniques to obtain input variable importance is the sensitivity analysis based on partial derivatives. However, existing literature of this method provides no justification of the aggregation metrics used to retrieved information from the partial derivatives. In this paper, a theoretical framework is proposed to study sensitivities of ML models using metric techniques. From this metric interpretation, a complete family of new quantitative metrics called α-curves is extracted. These α-curves provide information with greater depth on the importance of the input variables for a machine learning model than existing XAI methods in the literature. We demonstrate the effectiveness of the α-curves using synthetic and real datasets, comparing the results against other XAI methods for variable importance and validating the analysis results with the ground truth or literature information.
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来源期刊
Applied Soft Computing
Applied Soft Computing 工程技术-计算机:跨学科应用
CiteScore
15.80
自引率
6.90%
发文量
874
审稿时长
10.9 months
期刊介绍: Applied Soft Computing is an international journal promoting an integrated view of soft computing to solve real life problems.The focus is to publish the highest quality research in application and convergence of the areas of Fuzzy Logic, Neural Networks, Evolutionary Computing, Rough Sets and other similar techniques to address real world complexities. Applied Soft Computing is a rolling publication: articles are published as soon as the editor-in-chief has accepted them. Therefore, the web site will continuously be updated with new articles and the publication time will be short.
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