用于解释机器学习模型的交互式可视化

Ashley Ramsey, Yonas Kassa, Akshay Kale, Robin Gandhi, Brian Ricks
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引用次数: 0

摘要

由于学习规则空间的复杂性,研究人员和最终用户通常要求机器学习(ML)模型提供更多的信任和透明度。可解释人工智能(XAI)领域试图通过开发解释ML模型和用于推理的属性的方法来纠正这个问题。在桥梁结构健康监测领域,机器学习可以深入了解桥梁状况与其环境之间的关系。在本文中,我们描述了三种可视化技术,它们解释了决策树(DT) ML模型,该模型可以识别桥梁的哪些特征使其更有可能接受维修。每一种可视化都可以解释、探索和澄清复杂的DT模型。我们概述了这些可视化的发展,以及人工智能和桥梁设计与工程专家的有效性。这项工作在XAI领域具有内在的好处,它是未来研究的方向,也是ML模型的交互式可视化解释工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Interactive Visualizations for Explaining Machine Learning Models
Researchers and end users generally demand more trust and transparency from Machine learning (ML) models due to the complexity of their learned rule spaces. The field of eXplainable Artificial Intelligence (XAI) seeks to rectify this problem by developing methods of explaining ML models and the attributes used in making inferences. In the area of structural health monitoring of bridges, machine learning can offer insight into the relation between a bridge’s conditions and its environment over time. In this paper, we describe three visualization techniques that explain decision tree (DT) ML models that identify which features of a bridge make it more likely to receive repairs. Each of these visualizations enable interpretation, exploration, and clarification of complex DT models. We outline the development of these visualizations, along with their validity by experts in AI and in bridge design and engineering. This work has inherent benefits in the field of XAI as a direction for future research and as a tool for interactive visual explanation of ML models.
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