Title
Efficient Frequent Itemset Mining From Dense Data Streams
Abstract
Due to advances in technology, high volumes of valuable data can be produced at high velocity in many real-life applications. Hence, efficient data mining techniques for discovering implicit, previously unknown, and potentially useful frequent itemsets from data streams are in demand. Many existing stream mining algorithms capture important stream data and assume that the captured data can fit into main memory. However, problems arise when the available memory is so limited that such an assumption does not hold. In this paper, we present a data structure to capture important data from the streams onto the disk. In addition, we present two algorithms-which use this data structure-to mine frequent itemsets from these dense (or sparse) data streams.
Year
DOI
Venue
2014
10.1007/978-3-319-11116-2_56
WEB TECHNOLOGIES AND APPLICATIONS, APWEB 2014
Field
DocType
Volume
Data structure,Data mining,Data stream mining,Computer science,Data stream,Stream data,Uncertain data,Streaming data,STREAMS,Database
Conference
8709
ISSN
Citations 
PageRank 
0302-9743
4
0.42
References 
Authors
24
4
Name
Order
Citations
PageRank
Alfredo Cuzzocrea11751200.90
Fan Jiang222314.08
Wookey Lee319629.22
Carson K. Leung41625115.64