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Association rule mining algorithms on high-dimensional datasets

机译:高维数据集上的关联规则挖掘算法

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摘要

The science of bioinformatics has been accelerating at a fast pace, introducing more features and handling bigger volumes. However, these swift changes have, at the same time, posed challenges to data mining applications, in particular efficient association rule mining. Many data mining algorithms for high-dimensional datasets have been put forward, but the sheer numbers of these algorithms with varying features and application scenarios have complicated making suitable choices. Therefore, we present a general survey of multiple association rule mining algorithms applicable to high-dimensional datasets. The main characteristics and relative merits of these algorithms are explained, as well, pointing out areas for improvement and optimization strategies that might be better adapted to high-dimensional datasets, according to previous studies. Generally speaking, association rule mining algorithms that merge diverse optimization methods with advanced computer techniques can better balance scalability and interpretability.
机译:生物信息学的科学一直在快速发展,引入了更多的功能并处理了更大的数量。但是,这些迅速的变化同时给数据挖掘应用(尤其是有效的关联规则挖掘)带来了挑战。已经提出了许多用于高维数据集的数据挖掘算法,但是这些算法的数量众多,具有不同的功能和应用场景,因此做出适当的选择非常复杂。因此,我们对适用于高维数据集的多种关联规则挖掘算法进行了总体综述。根据以前的研究,还解释了这些算法的主要特征和相对优点,指出了可能更好地适应高维数据集的改进和优化策略的领域。一般而言,将各种优化方法与先进的计算机技术结合在一起的关联规则挖掘算法可以更好地平衡可伸缩性和可解释性。

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