DocumentCode :
28372
Title :
A Blocking Framework for Entity Resolution in Highly Heterogeneous Information Spaces
Author :
Papadakis, George ; Ioannou, Ekaterini ; Palpanas, T. ; Niederee, Claudia ; Nejdl, Wolfgang
Author_Institution :
L3S Res. Center, Leibniz Univ. of Hanover, Hanover, Germany
Volume :
25
Issue :
12
fYear :
2013
fDate :
Dec. 2013
Firstpage :
2665
Lastpage :
2682
Abstract :
In the context of entity resolution (ER) in highly heterogeneous, noisy, user-generated entity collections, practically all block building methods employ redundancy to achieve high effectiveness. This practice, however, results in a high number of pairwise comparisons, with a negative impact on efficiency. Existing block processing strategies aim at discarding unnecessary comparisons at no cost in effectiveness. In this paper, we systemize blocking methods for clean-clean ER (an inherently quadratic task) over highly heterogeneous information spaces (HHIS) through a novel framework that consists of two orthogonal layers: the effectiveness layer encompasses methods for building overlapping blocks with small likelihood of missed matches; the efficiency layer comprises a rich variety of techniques that significantly restrict the required number of pairwise comparisons, having a controllable impact on the number of detected duplicates. We map to our framework all relevant existing methods for creating and processing blocks in the context of HHIS, and additionally propose two novel techniques: attribute clustering blocking and comparison scheduling. We evaluate the performance of each layer and method on two large-scale, real-world data sets and validate the excellent balance between efficiency and effectiveness that they achieve.
Keywords :
pattern clustering; HHIS; attribute clustering blocking; block creation; block processing; blocking framework; clean-clean ER; comparison scheduling; duplicate detection; effectiveness layer; efficiency layer; entity resolution; highly heterogeneous information spaces; highly heterogeneous-noisy-user-generated entity collections; large-scale real-world data sets; layer performance evaluation; missed match likelihood; orthogonal layers; overlapping blocks; pairwise comparisons; quadratic task; Blocking methods; Context awareness; Data mining; Information retrieval; Redundancy; Information integration; blocking methods; entity resolution;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2012.150
Filename :
6255742
Link To Document :
بازگشت