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WLAR-Viz: Weighted Least Association Rules Visualization

机译:WLAR-Viz:加权最小关联规则可视化

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摘要

Mining weighted least association rules has been an increasing demand in data mining research. However, mining these types of rules often facing with difficulties especially in identifying which rules are really interesting. One of the alternative solutions is by applying the visualization model in those particular rules. In this paper, a model for visualizing weighted least association rules is proposed. The proposed model contains five main steps, including scanning dataset, constructing Least Pattern Tree (LP-Tree), applying Weighted Support Association Rules (WSAR*), capturing Weighted Least Association Rules (WELAR) and finally visualizing the respective rules. The results show that by using a three dimensional plots provide user friendly navigation to understand the weighted support and weighted least association rules.
机译:加权最小关联规则的挖掘一直是数据挖掘研究中日益增长的需求。但是,挖掘这些类型的规则通常会遇到困难,尤其是在确定哪些规则真正有趣时。一种替代解决方案是通过在这些特定规则中应用可视化模型。本文提出了一种可视化加权最小关联规则的模型。提出的模型包含五个主要步骤,包括扫描数据集,构建最小模式树(LP-Tree),应用加权支持关联规则(WSAR *),捕获加权最小关联规则(WELAR)并最终可视化各个规则。结果表明,通过使用三维图可以提供用户友好的导航,以了解加权支持和加权最小关联规则。

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