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A Survey of Parallel Sequential Pattern Mining

Authors :
Gan, Wensheng
Lin, Jerry Chun-Wei
Fournier-Viger, Philippe
Chao, Han-Chieh
Yu, Philip S.
Source :
ACM Transactions on Knowledge Discovery from Data, 2019
Publication Year :
2018

Abstract

With the growing popularity of shared resources, large volumes of complex data of different types are collected automatically. Traditional data mining algorithms generally have problems and challenges including huge memory cost, low processing speed, and inadequate hard disk space. As a fundamental task of data mining, sequential pattern mining (SPM) is used in a wide variety of real-life applications. However, it is more complex and challenging than other pattern mining tasks, i.e., frequent itemset mining and association rule mining, and also suffers from the above challenges when handling the large-scale data. To solve these problems, mining sequential patterns in a parallel or distributed computing environment has emerged as an important issue with many applications. In this paper, an in-depth survey of the current status of parallel sequential pattern mining (PSPM) is investigated and provided, including detailed categorization of traditional serial SPM approaches, and state of the art parallel SPM. We review the related work of parallel sequential pattern mining in detail, including partition-based algorithms for PSPM, Apriori-based PSPM, pattern growth based PSPM, and hybrid algorithms for PSPM, and provide deep description (i.e., characteristics, advantages, disadvantages and summarization) of these parallel approaches of PSPM. Some advanced topics for PSPM, including parallel quantitative / weighted / utility sequential pattern mining, PSPM from uncertain data and stream data, hardware acceleration for PSPM, are further reviewed in details. Besides, we review and provide some well-known open-source software of PSPM. Finally, we summarize some challenges and opportunities of PSPM in the big data era.<br />Comment: Accepted by ACM Trans. on Knowl. Discov. Data, 33 pages

Subjects

Subjects :
Computer Science - Databases

Details

Database :
arXiv
Journal :
ACM Transactions on Knowledge Discovery from Data, 2019
Publication Type :
Report
Accession number :
edsarx.1805.10515
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3314107