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A New Multiobjective Evolutionary Algorithm for Mining a Reduced Set of Interesting Positive and Negative Quantitative Association Rules

机译:一种新的多目标进化算法,用于挖掘约化有趣的正负定量关联规则集

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Most of the algorithms for mining quantitative association rules focus on positive dependencies without paying particular attention to negative dependencies. The latter may be worth taking into account, however, as they relate the presence of certain items to the absence of others. The algorithms used to extract such rules usually consider only one evaluation criterion in measuring the quality of generated rules. Recently, some researchers have framed the process of extracting association rules as a multiobjective problem, allowing us to jointly optimize several measures that can present different degrees of trade-off depending on the dataset used. In this paper, we propose MOPNAR, a new multiobjective evolutionary algorithm, in order to mine a reduced set of positive and negative quantitative association rules with low computational cost. To accomplish this, our proposal extends a recent multiobjective evolutionary algorithm based on decomposition to perform an evolutionary learning of the intervals of the attributes and a condition selection for each rule, while introducing an external population and a restarting process to store all the nondominated rules found and to improve the diversity of the rule set obtained. Moreover, this proposal maximizes three objectives—comprehensibility, interestingness, and performance—in order to obtain rules that are interesting, easy to understand, and provide good coverage of the dataset. The effectiveness of the proposed approach is validated over several real-world datasets.
机译:用于挖掘定量关联规则的大多数算法都将重点放在正相关性上,而没有特别注意负面相关性。但是,后者可能值得考虑,因为它们将某些项目的存在与其他项目的缺失联系在一起。用于提取此类规则的算法通常在评估生成的规则的质量时仅考虑一种评估标准。最近,一些研究人员将提取关联规则的过程构架为一个多目标问题,使我们可以共同优化几种度量,这些度量可以根据所使用的数据集呈现不同程度的权衡。在本文中,我们提出了一种新的多目标进化算法MOPNAR,以便以较低的计算量来挖掘一组正负定量关联规则的简化集合。为此,我们的建议扩展了基于分解的最新多目标进化算法,以对属性间隔和每个规则的条件选择进行进化学习,同时引入了外部总体和重新启动过程来存储所有发现的非支配规则并提高所获得规则集的多样性。此外,该建议最大化了三个目标(可理解性,趣味性和性能),以便获得有趣,易于理解并提供良好数据集覆盖范围的规则。所提出方法的有效性已在多个实际数据集中得到验证。

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