Large-Scale Sequential Utility Pattern Mining in Uncertain Environments

J. Wu, Shuo Liu, Jerry Chun‐wei Lin
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Abstract

High utility sequential pattern mining (HUSPM) considers timestamp, internal quantization, and external utility factors to mine high utility sequential patterns (HUSP), which has taken an essential place in data mining. The data collection may be uncertain in real life due to environmental factors, equipment limitations, privacy issues, etc. With the rapid increase of uncertain data volume, the efficiency of traditional mining algorithms decreases seriously. When the data volume is large, the conventional stand-alone algorithm will generate more candidate sequences, occupy a lot of memory, and significantly affect the execution speed. This paper designs a high utility probability sequence pattern mining algorithm based on MapReduce. The algorithm utilizes the MapReduce framework to solve the bottleneck of single-computer operation when the data volume is too large. The algorithm adopts an effective pruning strategy, which can effectively handle and reduce the number of candidate itemsets generated, thus the performance of the designed model can be greatly improved. The performance of the proposed algorithm is verified experimentally, and the correctness and completeness of the proposed algorithm are demonstrated and discussed to show the great achievement of the designed model.
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不确定环境下大规模顺序效用模式挖掘
高效用序列模式挖掘(HUSPM)考虑时间戳、内部量化和外部效用因素来挖掘高效用序列模式(HUSP),在数据挖掘中占有重要地位。由于环境因素、设备限制、隐私问题等,数据收集在现实生活中可能存在不确定性。随着不确定数据量的迅速增加,传统挖掘算法的效率严重下降。当数据量较大时,传统的单机算法会产生更多的候选序列,占用大量内存,显著影响执行速度。本文设计了一种基于MapReduce的高效用概率序列模式挖掘算法。该算法利用MapReduce框架解决了数据量过大时单机运行的瓶颈问题。该算法采用有效的剪枝策略,可以有效地处理和减少生成的候选项集的数量,从而大大提高设计模型的性能。通过实验验证了所提算法的性能,并对所提算法的正确性和完整性进行了论证和讨论,显示了所设计模型的巨大成就。
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