Title of article :
Mining frequent itemsets in a stream
Author/Authors :
Toon Calders ، نويسنده , , Nele Dexters، نويسنده , , Joris J.M. Gillis، نويسنده , , Bart Goethals، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
23
From page :
233
To page :
255
Abstract :
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rapid succession and storing parts of the stream is typically impossible. Nonetheless, it has many useful applications; e.g., opinion and sentiment analysis from social networks. Current stream mining algorithms are based on approximations. In earlier work, mining frequent items in a stream under the max-frequency measure proved to be effective for items. In this paper, we extended our work from items to itemsets. Firstly, an optimized incremental algorithm for mining frequent itemsets in a stream is presented. The algorithm maintains a very compact summary of the stream for selected itemsets. Secondly, we show that further compacting the summary is non-trivial. Thirdly, we establish a connection between the size of a summary and results from number theory. Fourthly, we report results of extensive experimentation, both of synthetic and real-world datasets, showing the efficiency of the algorithm both in terms of time and space.
Keywords :
Frequent itemset mining , Datastream , Theory , EXPERIMENTS , algorithm
Journal title :
Information Systems
Serial Year :
2014
Journal title :
Information Systems
Record number :
1230370
Link To Document :
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