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首页> 外文期刊>Journal of Visual Languages & Computing >Visual analysis of user-driven association rule mining
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Visual analysis of user-driven association rule mining

机译:用户驱动的关联规则挖掘的可视化分析

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Association rules have been widely used for detecting relations between attribute-value pairs of categorical datasets. Existing solutions of mining interesting association rules are based on the support-confidence theory. However, it is non-trivial for the user to understand and modify the rules or the results of intermediate steps in the mining process, because the interestingness of rules might differ largely for various tasks and users. In this paper we reinforce conventional association rule mining process by mapping the entire process into a visualization assisted loop, with which the user workload for modulating parameters and mining rules is reduced, and the mining efficiency is greatly improved. A hierarchical matrix-based visualization technique is proposed for the user to explore the measure value and the intermediate results of association rules. We also design a set of visual exploration tools to support interactively inspection and manipulation of mining process. The effectiveness and usability of our approach is demonstrated with two scenarios. (C) 2017 Elsevier Ltd. All rights reserved.
机译:关联规则已被广泛用于检测分类数据集的属性值对之间的关​​系。挖掘有趣的关联规则的现有解决方案基于支持-置信理论。但是,对于用户来说,理解和修改规则或挖掘过程中的中间步骤的结果并非易事,因为规则的趣味性对于各种任务和用户可能有很大不同。在本文中,我们通过将整个过程映射到可视化辅助循环中来增强常规的关联规则挖掘过程,从而减少了用于调制参数和挖掘规则的用户工作量,并大大提高了挖掘效率。提出了一种基于层次矩阵的可视化技术,供用户探索度量值和关联规则的中间结果。我们还设计了一套视觉探索工具,以支持交互式检查和操纵采矿过程。我们的方法的有效性和可用性在两种情况下得到了证明。 (C)2017 Elsevier Ltd.保留所有权利。

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