模糊关联规则挖掘的并行算法

Baowen Xu, Jianjiang Lu, Yingzhou Zhang, Lei Xu, Huowang Chen, Hongji Yang
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引用次数: 8

摘要

研究了模糊关联规则挖掘算法的原理和步骤,提出了模糊关联规则挖掘的并行算法。该算法采用并行模糊c均值算法将定量属性划分为多个模糊集,并利用模糊集软化属性的划分边界。然后,改进了布尔关联规则并行挖掘算法,发现频繁模糊属性。最后,在所有处理器上生成至少具有模糊置信度的模糊关联规则。并行挖掘算法在分布式连接的PC/工作站上实现。实验结果表明,该并行挖掘算法具有良好的放大、缩小和加速性能。
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Parallel algorithm for mining fuzzy association rules
The principle and steps of the algorithm for mining fuzzy association rules is studied, and the parallel algorithm for mining fuzzy association rules is presented. In this parallel mining algorithm, quantitative attributes are partitioned into several fuzzy sets by the parallel fuzzy c-means algorithm, and fuzzy sets are applied to soften the partition boundary of the attributes. Then, the parallel algorithm for mining Boolean association rules is improved to discover frequent fuzzy attributes. Last, the fuzzy association rules with at least fuzzy confidence are generated on all processors. The parallel mining algorithm is implemented on the distributed linked PC/workstation. The experiment results show that the parallel mining algorithm has fine scaleup, sizeup and speedup.
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