非对称客观度量在过滤关联规则网络中的应用

D. Calçada, R. D. Padua, S. O. Rezende
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引用次数: 2

摘要

本文提出了过滤关联规则网络(Filtered-Association Rules Network,简称filter - arn)来构造、修剪和分析一组关联规则以构造候选假设。filter - arn算法使用非对称客观度量、附加价值和增益来选择关联规则,然后构建一个允许更多勘探信息的网络。过滤后的arn使用三个数据集进行验证:lens和Soybean Large,这两个数据集都可以在线获取文本和有机施肥(绿肥)数据的真实数据集。通过将滤波后的ARN与传统的ARN进行比较,并将结果与决策树进行比较,验证了结果的正确性。该方法呈现出令人满意的结果,显示其解释一组客观项目的能力,并通过使用客观措施保证统计依赖性来帮助建立更巩固的假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asymmetric Objective Measures Applied to Filter Association Rules Networks
In this paper, the Filtered-Association Rules Network (Filtered-ARN) is presented to structure, prune, and analyze a set of association rules to construct candidate hypotheses. The Filtered-ARN algorithm selects association rules with the use of asymmetric objective measures, Added Value and Gain, then builds a network allowing more exploration information. The Filtered-ARN was validated using three datasets: Lenses and Soybean Large, both available online for a text and a real dataset with data on organic fertilization (Green Manure). The results were validated by comparing the Filtered-ARN with the conventional ARN and also comparing the results with the decision tree. The approach presented promising results, showing its ability to explain a set of objective items and the aid to build more consolidated hypotheses by guaranteeing statistical dependence with the use of objective measures.
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