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Frequent Item Set Mining Algorithm Based on Bit Combination

机译:基于位组合的频繁项集挖掘算法

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A frequent item set mining algorithm based on bit combination is proposed in this paper. Frequent item set mining algorithm based on bit combination is an algorithm that searches for possible frequent item set by transforming data into binary bit representation and adding data representing the combination of regulatory elements step by step, and then mining frequent item set by bit and calculation. In the process of data mining, the algorithm is optimized by pruning, preprocessing and frequent item set culling. Because the recursive method used by traditional frequent item set mining algorithms such as FP-Growth algorithm can't effectively parallel a large number of data, the greatest advantage of this algorithm is that it facilitates the parallel computation of data and provides a new idea for improving the efficiency of frequent item set mining. The parallel acceleration of the algorithm is realized by using OpenMP technology to verify the parallel feasibility of the algorithm in this paper.
机译:提出了一种基于位组合的频繁项集挖掘算法。基于位组合的频繁项集挖掘算法是一种算法,该算法通过将数据转换为二进制位表示形式并逐步添加代表监管要素组合的数据,然后逐位挖掘并进行计算来搜索可能的频繁项集。在数据挖掘过程中,通过修剪,预处理和频繁项集剔除对算法进行了优化。由于传统频繁项集挖掘算法(例如FP-Growth算法)使用的递归方法无法有效地并行处理大量数据,因此该算法的最大优势在于它促进了数据的并行计算并为提高频繁项目集挖掘的效率。利用OpenMP技术实现了该算法的并行加速,验证了该算法的并行可行性。

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