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Mining sequential causal patterns with user-specified skeletons in multi-sequence of event data

conference contribution
posted on 2003-01-01, 00:00 authored by X Hang, Honghua Dai, Elicia LanhamElicia Lanham
The approaches proposed in the past for discovering sequential patterns mainly focused on single sequential data. In the real world, however, some sequential patterns hide their essences among multi-sequential event data. It has been noted that knowledge discovery with either user-specified constraints, or templates, or skeletons is receiving wide attention because it is more efficient and avoids the tedious selection of useful patterns from the mass-produced results. In this paper, a novel pattern in multi-sequential event data that are correlated and its mining approach are presented. We call this pattern sequential causal pattern. A group of skeletons of sequential causal patterns, which may be specified by the user or generated by the program, are verified or mined by embedding them into the mining engine. Experiments show that this method, when applied to discovering the occurring regularities of a crop pest in a region, is successful in mining sequential causal patterns with user-specified skeletons in multi-sequential event data.

History

Title of proceedings

Design and Application of Hybrid Intelligent Systems : Proceedings of the 2003 International Conference on Hybrid Intelligent Systems

Event

Hybrid Intelligent Systems. Conference (3rd : 2003 : Melbourne, Victoria)

Pagination

702 - 711

Publisher

IOS Press

Location

Melbourne, Victoria

Place of publication

Amsterdam, Netherlands

Start date

2003-12-14

End date

2003-12-17

ISBN-13

9781586033941

ISBN-10

1586033948

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2003

Editor/Contributor(s)

A Abraham, M Koppen, K Franke

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