基于三维矩阵的关联规则可视化系统

Tingting Zhang, Zheng Chang, T. Ristaniemi, Guohua Liu
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引用次数: 4

摘要

随着挖掘数据集数量的不断增加,由于结果的数量和性质的复杂性,挖掘有趣的规则变得越来越困难。对人类感知和直觉的研究表明,图形表示可以更好地说明如何利用人类视觉系统的能力从数据中寻找信息。在这项工作中,我们提出并实现了一个基于三维矩阵的关联规则可视化系统。主要的可视化表示将基于扩展矩阵的方法与规则到项目的映射应用于一般事务数据集。为了降低关联规则的维数,提出了一种新的规则合并和权重分配方法,使用户能够在新规则中找到更重要的项。此外,排序、过滤、缩放和旋转等交互功能有助于决策者探索各个方面感兴趣的规则。最后,从逻辑推理的角度对系统进行了广泛的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Matrix-Based Visualization System of Association Rules
With the growing number of mining datasets, it becomes increasingly difficult to explore interesting rules because of the large number of resultant and its nature complexity. Studies on human perception and intuition show that graphical representation could be a better illustration of how to seek information from the data using the capabilities of human visual system. In this work, we present and implement a 3D matrix-based approach visualization system of association rules. The main visual representation applies the extended matrix-based approach with rule-to-items mapping to general transaction data set. A novel method merging rules and assigning weight is proposed in order to reduce the dimension of the association rules, which will help users to find more important items in the new rule. Furthermore, several interactions such as sorting, filtering, zoom and rotation, facilitate decision-makers to explore the rules which are of interest in various aspects. Finally, extensive evaluations have been conducted to assess the system from a logical reasoning point of view.
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