Sequential Mining Classification

Sequential pattern mining is a data mining technique that aims to extract and analyze frequent subsequences from sequences of events or items with time constraint. Sequence data mining was introduced in 1995 with the well-known Apriori algorithm. The algorithm studied the transactions through time,...

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Bibliographic Details
Published in2017 International Conference on Computer and Applications (ICCA) pp. 190 - 194
Main Authors Rjeily, Carine Bou, Badr, Georges, El Hassani, Amir Hajjam, Andres, Emmanuel
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.09.2017
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DOI10.1109/COMAPP.2017.8079747

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Summary:Sequential pattern mining is a data mining technique that aims to extract and analyze frequent subsequences from sequences of events or items with time constraint. Sequence data mining was introduced in 1995 with the well-known Apriori algorithm. The algorithm studied the transactions through time, in order to extract frequent patterns from the sequences of products related to a customer. Later, this technique became useful in many applications: DNA researches, medical diagnosis and prevention, telecommunications, etc. GSP, SPAM, SPADE, PrefixSPan and other advanced algorithms followed. View the evolution of data mining techniques based on sequential data, this paper discusses the multiple extensions of Sequential Pattern mining algorithms. We classified the algorithms into Sequential Pattern mining, Sequential rule mining and Sequence prediction with their extensions. The classification is presented in a tree at the end of the paper.
DOI:10.1109/COMAPP.2017.8079747