A fast and low idle time method for mining frequent patterns in distributed and many-task computing environments

被引:0
作者
Chun-Cheng Lin
Sheng-Hao Chung
Ju-Chin Chen
Yuan-Tse Yu
Kawuu W. Lin
机构
[1] National Chiao Tung University,Department of Industrial Engineering and Management
[2] National Kaohsiung University of Science and Technology,Department of Computer Science and Information Engineering
[3] National Kaohsiung Normal University,Department of Software Engineering and Management
来源
Distributed and Parallel Databases | 2018年 / 36卷
关键词
Distributed mining; Distributed computing; Frequent pattern mining; Many-task computing;
D O I
暂无
中图分类号
学科分类号
摘要
Association rules mining has attracted much attention among data mining topics because it has been successfully applied in various fields to find the association between purchased items by identifying frequent patterns (FPs). Currently, databases are huge, ranging in size from terabytes to petabytes. Although past studies can effectively discover FPs to deduce association rules, the execution efficiency is still a critical problem, particularly for big data. Progressive size working set (PSWS) and parallel FP-growth (PFP) are state-of-the-art methods that have been applied successfully to parallel and distributed computing technology to improve mining processing time in many-task computing, thereby bridging the gap between high-throughput and high-performance computing. However, such methods cannot mine before obtaining a complete FP-tree or the corresponding subdatabase, causing a high idle time for computing nodes. We propose a method that can begin mining when a small part of an FP-tree is received. The idle time of computing nodes can be reduced, and thus, the time required for mining can be reduced effectively. Through an empirical evaluation, the proposed method is shown to be faster than PSWS and PFP.
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页码:613 / 641
页数:28
相关论文
共 46 条
  • [1] Adnan M(2009)DRFP-tree: disk-resident frequent pattern tree Appl. Intell. 30 84-97
  • [2] Alhajj R(1996)Parallel mining of association rules IEEE Trans. Knowl. Data Eng. 8 962-969
  • [3] Agrawal R(2008)MapReduce: simplified data processing on large clusters Commun. ACM 51 107-113
  • [4] Shafer JC(1840)Profiling of high-frequency accident locations by use of association rules Transp. Res. Rec. 2003 123-130
  • [5] Dean J(2000)Mining frequent patterns without candidate generation ACM SIGMOD Record 29 1-12
  • [6] Ghemawat S(2004)Mining frequent patterns without candidate generation: a frequent-pattern tree approach Data Min. Knowl. Disc. 8 53-87
  • [7] Geurts K(2004)Frequent pattern mining on message passing multiprocessor systems Distrib. Parallel Databases 16 321-334
  • [8] Wets G(2015)A fast and resource efficient mining algorithm for discovering frequent patterns in distributed computing environments Fut. Gener. Comput. Syst. 52 49-58
  • [9] Brijs T(2016)A fast and distributed algorithm for mining frequent patterns in congested networks Computing 98 235-256
  • [10] Vanhoof K(2010)A novel parallel algorithm for frequent pattern mining with privacy preserved in cloud computing environments Int. J. Ad Hoc Ubiquitous Comput. 6 205-215