DocumentCode :
39728
Title :
OCCT: A One-Class Clustering Tree for Implementing One-to-Many Data Linkage
Author :
Dror, Moshe ; Shabtai, Asaf ; Rokach, L. ; Elovici, Yuval
Author_Institution :
Dept. of Inf. Syst. Eng., Ben-Gurion Univ. of the Negev, Beer-Sheva, Israel
Volume :
26
Issue :
3
fYear :
2014
fDate :
Mar-14
Firstpage :
682
Lastpage :
697
Abstract :
One-to-many data linkage is an essential task in many domains, yet only a handful of prior publications have addressed this issue. Furthermore, while traditionally data linkage is performed among entities of the same type, it is extremely necessary to develop linkage techniques that link between matching entities of different types as well. In this paper, we propose a new one-to-many data linkage method that links between entities of different natures. The proposed method is based on a one-class clustering tree (OCCT) that characterizes the entities that should be linked together. The tree is built such that it is easy to understand and transform into association rules, i.e., the inner nodes consist only of features describing the first set of entities, while the leaves of the tree represent features of their matching entities from the second data set. We propose four splitting criteria and two different pruning methods which can be used for inducing the OCCT. The method was evaluated using data sets from three different domains. The results affirm the effectiveness of the proposed method and show that the OCCT yields better performance in terms of precision and recall (in most cases it is statistically significant) when compared to a C4.5 decision tree-based linkage method.
Keywords :
data mining; pattern classification; pattern clustering; statistical analysis; tree data structures; OCCT; association rules; data set evaluation; entity matching; inner nodes; one-class clustering tree; one-to-many data linkage implementation; precision; pruning methods; recall; splitting criteria; statistical analysis; tree leaves; Buildings; Classification algorithms; Couplings; Decision trees; Numerical models; Training; Vegetation; Clustering; classification; data matching; decision tree induction;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2013.23
Filename :
6427741
Link To Document :
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