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Parallel Sequential Pattern Mining of Massive Trajectory Data
Author(s) -
Shaojie Qiao,
Tianrui Li,
Jing Peng,
Jiangtao Qiu
Publication year - 2010
Publication title -
international journal of computational intelligence systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.385
H-Index - 41
eISSN - 1875-6891
pISSN - 1875-6883
DOI - 10.1080/18756891.2010.9727705
Subject(s) - computer science , pruning , trajectory , scalability , parallel algorithm , computation , data mining , projection (relational algebra) , task (project management) , sequence (biology) , parallel processing , parallel computing , algorithm , physics , astronomy , genetics , management , database , agronomy , economics , biology
The trajectory pattern mining problem has recently attracted much attention due to the rapid development of location-acquisition technologies, and parallel computing essentially provides an alternative method for handling this problem. This study precisely addresses the problem of parallel mining of trajectory sequential patterns based on the newly proposed concepts with regard to trajectory pattern mining. We propose an efficient and effective parallel sequential patterns mining (plute) algorithm that includes three essential techniques: prefix projection, data parallel formulation, and task parallel formulation. Firstly, the prefix projection technique is used to decompose the search space as well as greatly reduce the candidate trajectory sequences. Secondly, the data parallel formulation decomposes the computations associated with counting the support of trajectory patterns. Thirdly, the task parallel formulation employs the MapReduce programming model to assign the computations across a set of machin...

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