视觉因子在分类规则集理解中的探索与验证

Jun Yuan, O. Nov, E. Bertini
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引用次数: 8

摘要

规则集通常用于机器学习(ML)中,作为在需要透明度和可理解性的设置中传达模型逻辑的一种方式。规则集通常表示为基于文本的逻辑语句(规则)列表。令人惊讶的是,迄今为止,在探索呈现规则的视觉替代方案方面的工作有限。在本文中,我们探讨了设计规则替代表示的想法,重点关注一些我们认为对规则可读性和理解有积极影响的视觉因素。然后,我们提出了一项用户研究,探索它们的影响。结果表明,一些设计因素对读者处理规则的效率有很大的影响,而对准确性的影响很小。这项工作可以帮助从业者在使用规则作为沟通策略来理解ML模型时采用更有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Exploration And Validation of Visual Factors in Understanding Classification Rule Sets
Rule sets are often used in Machine Learning (ML) as a way to communicate the model logic in settings where transparency and intelligibility are necessary. Rule sets are typically presented as a text-based list of logical statements (rules). Surprisingly, to date there has been limited work on exploring visual alternatives for presenting rules. In this paper, we explore the idea of designing alternative representations of rules, focusing on a number of visual factors we believe have a positive impact on rule readability and understanding. We then presents a user study exploring their impact. The results show that some design factors have a strong impact on how efficiently readers can process the rules while having minimal impact on accuracy. This work can help practitioners employ more effective solutions when using rules as a communication strategy to understand ML models.
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