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Finding the Most Interesting Association Rules by Aggregating Objective Interestingness Measures

机译:通过聚合目标有趣措施来寻找最有趣的关联规则

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Association rule post-processing is a research challenge in KDD. In this post-processing task, objective interestingness measures are very useful for finding interesting rules possessing certain characteristics. Till now, the usual method for using objective interestingness measures is to select one or several suitable measures for filtering rules. This paper proposes a new approach to aggregate a set of interestingness measures using the Choquet integral as an advanced aggregation operator. Since an objective interestingness measure is considered as a point of view on rule quality, the aggregation of a set of objective interestingness measures can extract rules satisfying many points of view. The experiment is carried out on different groups (i.e. different natures) of objective interestingness measures to observe their behaviors.
机译:关联规则后处理是KDD中的研究挑战。在这项后处理任务中,客观有趣的措施对于寻找具有某些特征的有趣规则非常有用。到目前为止,使用客观有趣措施的通常方法是选择一个或几种适当的过滤规则措施。本文提出了一种新方法,可以使用Choquet作为高级聚合运算符来聚合一组有趣措施。由于客观有趣的措施被视为对规则质量的观点,因此一系列客观有趣措施的汇总可以提取满足许多观点的规则。实验在不同的群体(即不同的性质)上进行客观有趣的措施,以观察其行为。

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