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Boosting association rule mining in large datasets via Gibbs sampling

机译:通过Gibbs采样促进大型数据集中的关联规则挖掘

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摘要

Current algorithms for association rule mining from transaction data are mostly deterministic and enumerative. They can be computationally intractable even for mining a dataset containing just a few hundred transaction items, if no action is taken to constrain the search space. In this paper, we develop a Gibbs-sampling–induced stochastic search procedure to randomly sample association rules from the itemset space, and perform rule mining from the reduced transaction dataset generated by the sample. Also a general rule importance measure is proposed to direct the stochastic search so that, as a result of the randomly generated association rules constituting an ergodic Markov chain, the overall most important rules in the itemset space can be uncovered from the reduced dataset with probability 1 in the limit. In the simulation study and a real genomic data example, we show how to boost association rule mining by an integrated use of the stochastic search and the Apriori algorithm.
机译:当前用于从交易数据中挖掘关联规则的算法主要是确定性和枚举性的。如果不采取任何措施来限制搜索空间,即使对于仅包含几百个交易项目的数据集的挖掘,它们也可能在计算上难以处理。在本文中,我们开发了一种Gibbs抽样诱导的随机搜索程序,以从项目集空间中随机抽取关联规则,并从该样本生成的简化交易数据集中执行规则挖掘。还提出了一般规则重要性度量来指导随机搜索,以便由于随机生成的构成遍历马尔可夫链的关联规则的结果,可以从概率为1的简化数据集中发现项集空间中总体上最重要的规则。在极限。在仿真研究和真实的基因组数据示例中,我们展示了如何通过随机搜索和Apriori算法的集成使用来促进关联规则挖掘。

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