DocumentCode :
7595
Title :
Distributed Strategies for Mining Outliers in Large Data Sets
Author :
Angiulli, Fabrizio ; Basta, Stefano ; Lodi, Stefano ; Sartori, Claudio
Author_Institution :
DIMES Dept., Univ. of Calabria, Rende, Italy
Volume :
25
Issue :
7
fYear :
2013
fDate :
Jul-13
Firstpage :
1520
Lastpage :
1532
Abstract :
We introduce a distributed method for detecting distance-based outliers in very large data sets. Our approach is based on the concept of outlier detection solving set [2], which is a small subset of the data set that can be also employed for predicting novel outliers. The method exploits parallel computation in order to obtain vast time savings. Indeed, beyond preserving the correctness of the result, the proposed schema exhibits excellent performances. From the theoretical point of view, for common settings, the temporal cost of our algorithm is expected to be at least three orders of magnitude faster than the classical nested-loop like approach to detect outliers. Experimental results show that the algorithm is efficient and that its running time scales quite well for an increasing number of nodes. We discuss also a variant of the basic strategy which reduces the amount of data to be transferred in order to improve both the communication cost and the overall runtime. Importantly, the solving set computed by our approach in a distributed environment has the same quality as that produced by the corresponding centralized method.
Keywords :
data mining; distributed processing; distributed environment; distributed method; distributed strategies; large data sets; mining outliers; outlier detection; parallel computation; Arrays; Data mining; Decision support systems; Distributed databases; Nickel; Upper bound; Distance-based outliers; outlier detection; parallel and distributed algorithms;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2012.71
Filename :
6175896
Link To Document :
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