Explanation-by-Example Based on Item Response Theory

Lucas F. F. Cardoso, Joseph Ribeiro, Vitor Santos, Raíssa Silva, M. Mota, R. Prudêncio, Ronnie Alves
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引用次数: 1

Abstract

, Abstract. Intelligent systems that use Machine Learning classification algorithms are increasingly common in everyday society. However, many systems use black-box models that do not have characteristics that allow for self-explanation of their predictions. This situation leads researchers in the field and society to the following question: How can I trust the prediction of a model I cannot understand? In this sense, XAI emerges as a field of AI that aims to create techniques capable of explaining the decisions of the classifier to the end-user. As a result, several techniques have emerged, such as Explanation-by-Example, which has a few initia-tives consolidated by the community currently working with XAI. This research explores the Item Response Theory (IRT) as a tool to explaining the models and measuring the level of reliability of the Explanation-by-Example approach. To this end, four datasets with different levels of complexity were used, and the Random Forest model was used as a hy-pothesis test. From the test set, 83.8% of the errors are from instances in which the IRT points out the model as unreliable. Learning (ML) · Item Response Theory (IRT) · Classification.
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基于项目反应理论的举例解释
、抽象。使用机器学习分类算法的智能系统在日常社会中越来越普遍。然而,许多系统使用黑盒模型,这些模型不具有允许其预测自我解释的特征。这种情况导致该领域和社会的研究人员提出以下问题:我怎么能相信一个我无法理解的模型的预测?从这个意义上说,XAI作为人工智能的一个领域出现,旨在创建能够向最终用户解释分类器决策的技术。因此,出现了一些技术,例如举例解释,它有一些由当前使用XAI的社区整合的倡议。本研究探讨了项目反应理论(IRT)作为解释模型和测量实例解释方法可靠性水平的工具。为此,我们使用了4个不同复杂程度的数据集,并使用随机森林模型进行假设检验。从测试集来看,83.8%的错误来自于IRT指出模型不可靠的实例。学习(ML)·项目反应理论(IRT)·分类。
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