DocumentCode :
1284386
Title :
Efficient Mining of Frequent Item Sets on Large Uncertain Databases
Author :
Wang, Liang ; Cheung, David Wai-Lok ; Cheng, Reynold ; Lee, Sau Dan ; Yang, Xuan S.
Author_Institution :
Dept. of Comput. Sci., Univ. of Hong Kong, Hong Kong, China
Volume :
24
Issue :
12
fYear :
2012
Firstpage :
2170
Lastpage :
2183
Abstract :
The data handled in emerging applications like location-based services, sensor monitoring systems, and data integration, are often inexact in nature. In this paper, we study the important problem of extracting frequent item sets from a large uncertain database, interpreted under the Possible World Semantics (PWS). This issue is technically challenging, since an uncertain database contains an exponential number of possible worlds. By observing that the mining process can be modeled as a Poisson binomial distribution, we develop an approximate algorithm, which can efficiently and accurately discover frequent item sets in a large uncertain database. We also study the important issue of maintaining the mining result for a database that is evolving (e.g., by inserting a tuple). Specifically, we propose incremental mining algorithms, which enable Probabilistic Frequent Item set (PFI) results to be refreshed. This reduces the need of re-executing the whole mining algorithm on the new database, which is often more expensive and unnecessary. We examine how an existing algorithm that extracts exact item sets, as well as our approximate algorithm, can support incremental mining. All our approaches support both tuple and attribute uncertainty, which are two common uncertain database models. We also perform extensive evaluation on real and synthetic data sets to validate our approaches.
Keywords :
Poisson distribution; data mining; database management systems; uncertainty handling; PFI; PWS; Poisson binomial distribution; approximate algorithm; attribute uncertainty; frequent item set discovery; frequent item set extraction; frequent item set mining; incremental mining algorithms; large uncertain databases; possible world semantics; probabilistic frequent item set; real data sets; synthetic data sets; tuple uncertainty; Approximation algorithms; Data mining; Itemsets; Mobile radio mobility management; Uncertainty; Frequent item sets; approximate algorithm; incremental mining; uncertain data set;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2011.165
Filename :
5963676
Link To Document :
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