论文标题

随着时间的推移协会规则

Association rules over time

论文作者

Fister Jr., Iztok, Fister, Iztok

论文摘要

如今,通过人工智能系统做出的决定通常很难让用户理解。开发人员面临的最重要的问题之一是如何创建更可解释的机器学习模型。与此相一致,需要开发更可解释的技术,其中视觉解释也起着更重要的作用。该技术也可以成功地用于解释关联规则挖掘的结果。本章重点介绍了两个问题:(1)如何发现相关的关联规则,以及(2)如何在视觉上表达更多属性之间的关系。对于第一个问题的解决方案,所提出的方法使用差分进化,而Sankey图则采用了第二个方法来求解第二个。该方法应用于过去几个季节中包含由业余骑自行车者生成的数据的事务数据库,该数据使用在实现训练课程中佩戴的移动设备,该培训会议分为四个时段。可视化的结果表明,可以通过更改不同时间段中选定的关联规则中出现的属性来指示提高运动员性能的趋势。

Decisions made nowadays by Artificial Intelligence powered systems are usually hard for users to understand. One of the more important issues faced by developers is exposed as how to create more explainable Machine Learning models. In line with this, more explainable techniques need to be developed, where visual explanation also plays a more important role. This technique could also be applied successfully for explaining the results of Association Rule Mining.This Chapter focuses on two issues: (1) How to discover the relevant association rules, and (2) How to express relations between more attributes visually. For the solution of the first issue, the proposed method uses Differential Evolution, while Sankey diagrams are adopted to solve the second one. This method was applied to a transaction database containing data generated by an amateur cyclist in past seasons, using a mobile device worn during the realization of training sessions that is divided into four time periods. The results of visualization showed that a trend in improving performance of an athlete can be indicated by changing the attributes appearing in the selected association rules in different time periods.

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