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Discovering Maximal Periodic-Frequent Patterns in Very Large Temporal Databases

R. Uday Kiran, Yutaka Watanobe, Bhaskar Chaudhury, Koji Zettsu, Masashi Toyoda, Masaru Kitsuregawa

202024 citationsDOI

Abstract

Periodic-frequent pattern mining (PFPM) is an important data mining model having many real-world applications. However, the successful industrial application of this model has been hindered by the problem of combinatorial explosion of patterns, that is the generation of too many redundant patterns, most of which may be useless to the user. To address this problem, this paper proposes a novel model of maximal periodic- frequent pattern that may exist in a temporal database. A new pattern-growth algorithm, called Maximum Periodic-Frequent Pattern-growth (maxPFP-growth), has also been introduced to efficiently find all desired patterns in the data. Experimental results demonstrate that maxPFP-growth is not only memory and runtime efficient, but also highly scalable as well. The usefulness of our model has also been demonstrated with a case study on traffic congestion analytics.

Topics & Concepts

Computer scienceScalabilityData miningTemporal databaseAnalyticsPattern detectionDatabaseArtificial intelligenceData Mining Algorithms and ApplicationsData Management and AlgorithmsAdvanced Database Systems and Queries
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