ACM Home Page
Please provide us with feedback. Feedback
Leveraging data and structure in ontology integration
Full text PdfPdf (462 KB)
Source
International Conference on Management of Data archive
Proceedings of the 2007 ACM SIGMOD international conference on Management of data table of contents
Beijing, China
SESSION: Data cleaning and integration table of contents
Pages: 449 - 460  
Year of Publication: 2007
ISBN:978-1-59593-686-8
Authors
Octavian Udrea  University of Maryland, College Park, MD
Lise Getoor  University of Maryland, College Park, MD
Renée J. Miller  University of Toronto, Toronto, ON, Canada
Sponsors
ACM: Association for Computing Machinery
SIGMOD: ACM Special Interest Group on Management of Data
Publisher
ACM  New York, NY, USA
Bibliometrics
Downloads (6 Weeks): 32,   Downloads (12 Months): 238,   Citation Count: 5
Additional Information:

abstract   references   cited by   index terms   collaborative colleagues  

Tools and Actions: Request Permissions Request Permissions    Review this Article  
DOI Bookmark: Use this link to bookmark this Article: http://doi.acm.org/10.1145/1247480.1247531
What is a DOI?

ABSTRACT

There is a great deal of research on ontology integration which makes use of rich logical constraints to reason about the structural and logical alignment of ontologies. There is also considerable work on matching data instances from heterogeneous schema or ontologies. However, little work exploits the fact that ontologies include both data and structure. We aim to close this gap by presenting a new algorithm (ILIADS) that tightly integrates both data matching and logical reasoning to achieve better matching of ontologies. We evaluate our algorithm on a set of 30 pairs of OWL Lite ontologies with the schema and data matchings found by human reviewers. We compare against two systems - the ontology matching tool FCA-merge [28] and the schema matching tool COMA++ [1]. ILIADS shows an average improvement of 25% in quality over FCA-merge and a 11% improvement in recall over COMA++.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

1
 
2
 
3
 
4
W. Cohen, P. Ravikumar, and S. Fienberg. A comparison of string metrics for matching names and records. In KDD Workshop on Data Cleaning and Object Consolidation, 2003.
5
 
6
A. Doan, J. Madhavan, P. Domingos, and A. Y. Halevy. Ontology Matching: A Machine Learning Approach. In Handbook on Ontologies, pages 385--404. Springer-Verlag, 2004.
 
7
M. Ehrig and S. Staab. QOM-Quick Ontology Mapping. In ISWC, pages 683--697, 2004.
 
8
J. Euzenat, D. Loup, M. Touzani, and P. Valtchev. Ontology alignment with OLA. In ISWC EON, pages 59--68, 2004.
 
9
F. Giunchiglia, P. Shvaiko, and M. Yatskevich. S-Match: an algorithm and an implementation of semantic matching. In Semantic Interoperability and Integration, number 04391 in Dagstuhl Sem. Proc., 2005.
 
10
I. Horrocks, P. Patel-Schneider, and F. van Harmelen. From SHIQ and RDF to OWL: The making of a web ontology language. Journal of Web Semantics, 1(1):7--26, 2003.
 
11
I. Horrocks, U. Sattler, and S. Tobies. Practical reasoning for very expressive description logics. Logic J. of the IGPL, 8(3):239--264, 2000.
 
12
Y. Kalfoglou and M. Schorlemmer. If-map: an ontology mapping method based on information flow theory. J. Data Sem., 1(1):98--127, Oct. 2003.
13
 
14
 
15
J. Madhavan, P. A. Bernstein, A. Doan, and A. Halevy. Corpus-based schema matching. ICDE, 0:57--68, 2005.
 
16
D. L. McGuinness, R. Fikes, J. Rice, and S. Wilder. An environment for merging and testing large ontologies. In KR, pages 483--493, 2000.
 
17
S. Melnik, H. Garcia-Molina, and E. Rahm. Similarity Flooding: A Versatile Graph Matching Algorithm and Its Application to Schema Matching. ICDE, page 117, 2002.
 
18
 
19
F. Naumann, A. Bilke, J. Bleiholder, and M. Weis. Data fusion in three steps: Resolving schema, tuple, and value inconsistencies. IEEE Data Eng. Bull., 29(2):21--31, 2006.
 
20
 
21
C. Patel, K. Supekar, and Y. Lee. OntoGenie: Extracting Ontology Instances from WWW. In Human Language Technology for the Semantic Web and Web Services, ISWC, 2003.
 
22
L. Popa, Y. Velegrakis, R. J. Miller, M. A. Hernàndez, and R. Fagin. Translating Web Data. In VLDB, pages 598--609, 2002.
 
23
R. Pottinger and P. A. Bernstein. Merging Models Based on Given Correspondences. In VLDB, pages 826--873, 2003.
 
24
 
25
P. Resnik. Using information content to evaluate semantic similarity in a taxonomy. In IJCAI, pages 448--453, 1995.
 
26
N. Silva and J. Rocha. Ontology mapping for interoperability in semantic web. In ICWI, pages 603--610, 2003.
 
27
E. Sirin and B. Parsia. Pellet: An OWL DL Reasoner. In Description Logics, volume 104 of CEUR Work. Proc., 2004.
 
28
G. Stumme and A. Maedche. FCA-MERGE: Bottom-Up Merging of Ontologies. In IJCAI, pages 225--234, 2001.
 
29
W. Winkler. Advanced methods for record linkage., 1994. Technical report, Statistical Research Division, Washington, DC: U.S. Bureau of the Census.


Collaborative Colleagues:
Octavian Udrea: colleagues
Lise Getoor: colleagues
Renée J. Miller: colleagues