Mining Moving Patterns Based on Frequent Patterns Growth in Sensor Networks
A novel algorithm named FP-mine (FP: Frequent Pattern) is proposed in this paper to mine frequent moving patterns with two dimensional attributes including locations and time in sensor networks. FP- mine is based on a novel data structure named P-tree and an algorithm of frequent pattern growth name...
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Zusammenfassung: | A novel algorithm named FP-mine (FP: Frequent Pattern) is proposed in this paper to mine frequent moving patterns with two dimensional attributes including locations and time in sensor networks. FP- mine is based on a novel data structure named P-tree and an algorithm of frequent pattern growth named FP-growth. The P-tree can efficiently store large numbers of original moving patterns compactly. The algorithm FP-growth adopts an idea of pattern growth and a method of conditional search, recursively fetches frequent prefix patterns from the conditional pattern bases directly, and joins the suffix to make a pattern grow. Simulation results show FP-mine can efficiently discover frequent moving patterns with two dimensional attributes in sensor networks and decreases its time and space complexity simultaneously. |
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DOI: | 10.1109/NAS.2007.37 |