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A novel rule infusion technique for generating simulated binary data to validate data mining methods

机译:一种用于生成模拟二进制数据以验证数据挖掘方法的新规则注入技术

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Mathematical analysis of existing data mining methods is not straightforward and in many cases it is not possible. Therefore, simulated data plays a central role in validation of data mining results in a given situation, i.e., noise, missing value and multicollinearity levels. This paper proposes a longitudinal binary data simulation focusing on presentation of the major challenge of infusing user-defined rules. Results of applying Apriori, PRAT, Prism, and JRip rule extraction methods on these simulated data in several missing value levels are presented in this paper. This simulation proved to be essential in verifying data mining results that we have generated on Medical Epidemiological and Social Aspects of Aging (MESA) data set.
机译:现有数据挖掘方法的数学分析并不简单,而且在许多情况下是不可能的。因此,在给定情况下,即噪声,缺失值和多重共线性度,模拟数据在验证数据挖掘结果中起着核心作用。本文提出了一个纵向二进制数据模拟,重点介绍了注入用户定义规则的主要挑战。本文介绍了在几种缺失值水平上对这些模拟数据应用Apriori,PRAT,Prism和JRip规则提取方法的结果。事实证明,该模拟对于验证我们根据衰老的医学流行病学和社会方面(MESA)数据集生成的数据挖掘结果至关重要。

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