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A Metric for Selection of the Most Promising Rules

机译:选择最有前途的规则的度量标准

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The process of Knowledge Discovery in Databases pursues the goal of extracting useful knowledge from large amounts of data. It comprises a pre-processing step, application of a data-mining algorithm and post-processing of results. When rule induction is applied for datamining one must be prepared to deal with the generation of a large number of rules. In these circumstances it is important to have a way of selecting the rules that have the highest predictive power. We propose a metric for selection of the n rules with the highest average distance between them. We defend that applying our metric to select the rules that are more distant improves the system prediction capabilities against other criteria for rule selection. We present an application example and empirical results produced from a synthesized data set on a financial domain.
机译:数据库中的知识发现过程追求的目标是从大量数据中提取有用的知识。它包括预处理步骤,数据挖掘算法的应用和结果的后处理。将规则归纳应用于数据挖掘时,必须准备处理大量规则的生成。在这些情况下,重要的是要有一种选择具有最高预测能力的规则的方法。我们提出了一种度量标准,用于选择它们之间具有最大平均距离的n条规则。我们辩称,应用度量标准来选择距离更远的规则会提高系统预测能力,而与其他规则选择准则相比。我们提供了一个应用示例,以及从金融领域的综合数据集得出的经验结果。

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