DocumentCode :
1514460
Title :
Scalable Iterative Graph Duplicate Detection
Author :
Herschel, Melanie ; Naumann, Felix ; Szott, Sascha ; Taubert, Maik
Author_Institution :
Wilhelm-Schickard Inst. fur Inf., Univ. Tubingen, Tubingen, Germany
Volume :
24
Issue :
11
fYear :
2012
Firstpage :
2094
Lastpage :
2108
Abstract :
Duplicate detection determines different representations of real-world objects in a database. Recent research has considered the use of relationships among object representations to improve duplicate detection. In the general case where relationships form a graph, research has mainly focused on duplicate detection quality/effectiveness. Scalability has been neglected so far, even though it is crucial for large real-world duplicate detection tasks. We scale-up duplicate detection in graph data (DDG) to large amounts of data and pairwise comparisons, using the support of a relational database management system. To this end, we first present a framework that generalizes the DDG process. We then present algorithms to scale DDG in space (amount of data processed with bounded main memory) and in time. Finally, we extend our framework to allow batched and parallel DDG, thus further improving efficiency. Experiments on data of up to two orders of magnitude larger than data considered so far in DDG show that our methods achieve the goal of scaling DDG to large volumes of data.
Keywords :
graph theory; iterative methods; relational databases; DDG; duplicate detection in graph data; object representations; real-world objects; relational database management system; scalable iterative graph duplicate detection; Classification algorithms; Databases; Image edge detection; Motion pictures; Runtime; Scalability; Sorting; Duplicate detection; data cleaning; data integration; entity resolution; parallelization; record linkage; scalability;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2011.99
Filename :
5765953
Link To Document :
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