Matching biomedical ontologies based on formal concept analysis
The goal of ontology matching is to identify correspondences between entities from different yet overlapping ontologies so as to facilitate semantic integration, reuse and interoperability. As a well developed mathematical model for analyzing individuals and structuring concepts, Formal Concept Anal...
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Published in | Journal of biomedical semantics Vol. 9; no. 1; pp. 11 - 27 |
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Main Authors | , , , |
Format | Journal Article |
Language | English |
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England
BioMed Central Ltd
19.03.2018
BioMed Central BMC |
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Abstract | The goal of ontology matching is to identify correspondences between entities from different yet overlapping ontologies so as to facilitate semantic integration, reuse and interoperability. As a well developed mathematical model for analyzing individuals and structuring concepts, Formal Concept Analysis (FCA) has been applied to ontology matching (OM) tasks since the beginning of OM research, whereas ontological knowledge exploited in FCA-based methods is limited. This motivates the study in this paper, i.e., to empower FCA with as much as ontological knowledge as possible for identifying mappings across ontologies.
We propose a method based on Formal Concept Analysis to identify and validate mappings across ontologies, including one-to-one mappings, complex mappings and correspondences between object properties. Our method, called FCA-Map, incrementally generates a total of five types of formal contexts and extracts mappings from the lattices derived. First, the token-based formal context describes how class names, labels and synonyms share lexical tokens, leading to lexical mappings (anchors) across ontologies. Second, the relation-based formal context describes how classes are in taxonomic, partonomic and disjoint relationships with the anchors, leading to positive and negative structural evidence for validating the lexical matching. Third, the positive relation-based context can be used to discover structural mappings. Afterwards, the property-based formal context describes how object properties are used in axioms to connect anchor classes across ontologies, leading to property mappings. Last, the restriction-based formal context describes co-occurrence of classes across ontologies in anonymous ancestors of anchors, from which extended structural mappings and complex mappings can be identified.
Evaluation on the Anatomy, the Large Biomedical Ontologies, and the Disease and Phenotype track of the 2016 Ontology Alignment Evaluation Initiative campaign demonstrates the effectiveness of FCA-Map and its competitiveness with the top-ranked systems. FCA-Map can achieve a better balance between precision and recall for large-scale domain ontologies through constructing multiple FCA structures, whereas it performs unsatisfactorily for smaller-sized ontologies with less lexical and semantic expressions.
Compared with other FCA-based OM systems, the study in this paper is more comprehensive as an attempt to push the envelope of the Formal Concept Analysis formalism in ontology matching tasks. Five types of formal contexts are constructed incrementally, and their derived concept lattices are used to cluster the commonalities among classes at lexical and structural level, respectively. Experiments on large, real-world domain ontologies show promising results and reveal the power of FCA. |
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AbstractList | The goal of ontology matching is to identify correspondences between entities from different yet overlapping ontologies so as to facilitate semantic integration, reuse and interoperability. As a well developed mathematical model for analyzing individuals and structuring concepts, Formal Concept Analysis (FCA) has been applied to ontology matching (OM) tasks since the beginning of OM research, whereas ontological knowledge exploited in FCA-based methods is limited. This motivates the study in this paper, i.e., to empower FCA with as much as ontological knowledge as possible for identifying mappings across ontologies.
We propose a method based on Formal Concept Analysis to identify and validate mappings across ontologies, including one-to-one mappings, complex mappings and correspondences between object properties. Our method, called FCA-Map, incrementally generates a total of five types of formal contexts and extracts mappings from the lattices derived. First, the token-based formal context describes how class names, labels and synonyms share lexical tokens, leading to lexical mappings (anchors) across ontologies. Second, the relation-based formal context describes how classes are in taxonomic, partonomic and disjoint relationships with the anchors, leading to positive and negative structural evidence for validating the lexical matching. Third, the positive relation-based context can be used to discover structural mappings. Afterwards, the property-based formal context describes how object properties are used in axioms to connect anchor classes across ontologies, leading to property mappings. Last, the restriction-based formal context describes co-occurrence of classes across ontologies in anonymous ancestors of anchors, from which extended structural mappings and complex mappings can be identified.
Evaluation on the Anatomy, the Large Biomedical Ontologies, and the Disease and Phenotype track of the 2016 Ontology Alignment Evaluation Initiative campaign demonstrates the effectiveness of FCA-Map and its competitiveness with the top-ranked systems. FCA-Map can achieve a better balance between precision and recall for large-scale domain ontologies through constructing multiple FCA structures, whereas it performs unsatisfactorily for smaller-sized ontologies with less lexical and semantic expressions.
Compared with other FCA-based OM systems, the study in this paper is more comprehensive as an attempt to push the envelope of the Formal Concept Analysis formalism in ontology matching tasks. Five types of formal contexts are constructed incrementally, and their derived concept lattices are used to cluster the commonalities among classes at lexical and structural level, respectively. Experiments on large, real-world domain ontologies show promising results and reveal the power of FCA. Abstract Background The goal of ontology matching is to identify correspondences between entities from different yet overlapping ontologies so as to facilitate semantic integration, reuse and interoperability. As a well developed mathematical model for analyzing individuals and structuring concepts, Formal Concept Analysis (FCA) has been applied to ontology matching (OM) tasks since the beginning of OM research, whereas ontological knowledge exploited in FCA-based methods is limited. This motivates the study in this paper, i.e., to empower FCA with as much as ontological knowledge as possible for identifying mappings across ontologies. Methods We propose a method based on Formal Concept Analysis to identify and validate mappings across ontologies, including one-to-one mappings, complex mappings and correspondences between object properties. Our method, called FCA-Map, incrementally generates a total of five types of formal contexts and extracts mappings from the lattices derived. First, the token-based formal context describes how class names, labels and synonyms share lexical tokens, leading to lexical mappings (anchors) across ontologies. Second, the relation-based formal context describes how classes are in taxonomic, partonomic and disjoint relationships with the anchors, leading to positive and negative structural evidence for validating the lexical matching. Third, the positive relation-based context can be used to discover structural mappings. Afterwards, the property-based formal context describes how object properties are used in axioms to connect anchor classes across ontologies, leading to property mappings. Last, the restriction-based formal context describes co-occurrence of classes across ontologies in anonymous ancestors of anchors, from which extended structural mappings and complex mappings can be identified. Results Evaluation on the Anatomy, the Large Biomedical Ontologies, and the Disease and Phenotype track of the 2016 Ontology Alignment Evaluation Initiative campaign demonstrates the effectiveness of FCA-Map and its competitiveness with the top-ranked systems. FCA-Map can achieve a better balance between precision and recall for large-scale domain ontologies through constructing multiple FCA structures, whereas it performs unsatisfactorily for smaller-sized ontologies with less lexical and semantic expressions. Conclusions Compared with other FCA-based OM systems, the study in this paper is more comprehensive as an attempt to push the envelope of the Formal Concept Analysis formalism in ontology matching tasks. Five types of formal contexts are constructed incrementally, and their derived concept lattices are used to cluster the commonalities among classes at lexical and structural level, respectively. Experiments on large, real-world domain ontologies show promising results and reveal the power of FCA. The goal of ontology matching is to identify correspondences between entities from different yet overlapping ontologies so as to facilitate semantic integration, reuse and interoperability. As a well developed mathematical model for analyzing individuals and structuring concepts, Formal Concept Analysis (FCA) has been applied to ontology matching (OM) tasks since the beginning of OM research, whereas ontological knowledge exploited in FCA-based methods is limited. This motivates the study in this paper, i.e., to empower FCA with as much as ontological knowledge as possible for identifying mappings across ontologies.BACKGROUNDThe goal of ontology matching is to identify correspondences between entities from different yet overlapping ontologies so as to facilitate semantic integration, reuse and interoperability. As a well developed mathematical model for analyzing individuals and structuring concepts, Formal Concept Analysis (FCA) has been applied to ontology matching (OM) tasks since the beginning of OM research, whereas ontological knowledge exploited in FCA-based methods is limited. This motivates the study in this paper, i.e., to empower FCA with as much as ontological knowledge as possible for identifying mappings across ontologies.We propose a method based on Formal Concept Analysis to identify and validate mappings across ontologies, including one-to-one mappings, complex mappings and correspondences between object properties. Our method, called FCA-Map, incrementally generates a total of five types of formal contexts and extracts mappings from the lattices derived. First, the token-based formal context describes how class names, labels and synonyms share lexical tokens, leading to lexical mappings (anchors) across ontologies. Second, the relation-based formal context describes how classes are in taxonomic, partonomic and disjoint relationships with the anchors, leading to positive and negative structural evidence for validating the lexical matching. Third, the positive relation-based context can be used to discover structural mappings. Afterwards, the property-based formal context describes how object properties are used in axioms to connect anchor classes across ontologies, leading to property mappings. Last, the restriction-based formal context describes co-occurrence of classes across ontologies in anonymous ancestors of anchors, from which extended structural mappings and complex mappings can be identified.METHODSWe propose a method based on Formal Concept Analysis to identify and validate mappings across ontologies, including one-to-one mappings, complex mappings and correspondences between object properties. Our method, called FCA-Map, incrementally generates a total of five types of formal contexts and extracts mappings from the lattices derived. First, the token-based formal context describes how class names, labels and synonyms share lexical tokens, leading to lexical mappings (anchors) across ontologies. Second, the relation-based formal context describes how classes are in taxonomic, partonomic and disjoint relationships with the anchors, leading to positive and negative structural evidence for validating the lexical matching. Third, the positive relation-based context can be used to discover structural mappings. Afterwards, the property-based formal context describes how object properties are used in axioms to connect anchor classes across ontologies, leading to property mappings. Last, the restriction-based formal context describes co-occurrence of classes across ontologies in anonymous ancestors of anchors, from which extended structural mappings and complex mappings can be identified.Evaluation on the Anatomy, the Large Biomedical Ontologies, and the Disease and Phenotype track of the 2016 Ontology Alignment Evaluation Initiative campaign demonstrates the effectiveness of FCA-Map and its competitiveness with the top-ranked systems. FCA-Map can achieve a better balance between precision and recall for large-scale domain ontologies through constructing multiple FCA structures, whereas it performs unsatisfactorily for smaller-sized ontologies with less lexical and semantic expressions.RESULTSEvaluation on the Anatomy, the Large Biomedical Ontologies, and the Disease and Phenotype track of the 2016 Ontology Alignment Evaluation Initiative campaign demonstrates the effectiveness of FCA-Map and its competitiveness with the top-ranked systems. FCA-Map can achieve a better balance between precision and recall for large-scale domain ontologies through constructing multiple FCA structures, whereas it performs unsatisfactorily for smaller-sized ontologies with less lexical and semantic expressions.Compared with other FCA-based OM systems, the study in this paper is more comprehensive as an attempt to push the envelope of the Formal Concept Analysis formalism in ontology matching tasks. Five types of formal contexts are constructed incrementally, and their derived concept lattices are used to cluster the commonalities among classes at lexical and structural level, respectively. Experiments on large, real-world domain ontologies show promising results and reveal the power of FCA.CONCLUSIONSCompared with other FCA-based OM systems, the study in this paper is more comprehensive as an attempt to push the envelope of the Formal Concept Analysis formalism in ontology matching tasks. Five types of formal contexts are constructed incrementally, and their derived concept lattices are used to cluster the commonalities among classes at lexical and structural level, respectively. Experiments on large, real-world domain ontologies show promising results and reveal the power of FCA. |
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Audience | Academic |
Author | Zhang, Songmao Chen, Guowei Zhao, Mengyi Li, Weizhuo |
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References | D Faria (178_CR4) 2013 R Bendaoud (178_CR20) 2008 178_CR41 L Guan-yu (178_CR23) 2010 M Niepert (178_CR6) 2010 N Duyhoa (178_CR5) 2012 M Uschold (178_CR17) 1996; 11 M Gulić (178_CR8) 2016; 41 M Obitko (178_CR21) 2004; 128 W Zhu (178_CR44) 2017 178_CR9 L Cui (178_CR43) 2017; 24 E Jiménez-Ruiz (178_CR2) 2011 M Achichi (178_CR31) 2016 I Harrow (178_CR40) 2017; 8 R Wille (178_CR16) 1982 R Godin (178_CR32) 1993 178_CR37 B Ganter (178_CR27) 2012 Y Zhao (178_CR25) 2006 178_CR10 S Zhang (178_CR30) 2007; 3 G. Diallo (178_CR7) 2014; 5 178_CR35 178_CR14 M Bain (178_CR19) 2003 178_CR11 178_CR33 178_CR12 178_CR34 J Euzenat (178_CR1) 2013 G Stumme (178_CR15) 2001 MG Scutellà (178_CR38) 1990; 8 X Xu (178_CR26) 2010 DA Lindberg (178_CR13) 1993; 32 R-C Chen (178_CR24) 2011; 11 178_CR28 178_CR29 S Patwardhan (178_CR36) 2003 X Chen (178_CR39) 2014 M Cheatham (178_CR42) 2013 KXS de Souza (178_CR22) 2004 P Cimiano (178_CR18) 2004 WE Djeddi (178_CR3) 2010 |
References_xml | – ident: 178_CR28 – volume: 8 start-page: 55 issue: 1 year: 2017 ident: 178_CR40 publication-title: J Biomed Semant doi: 10.1186/s13326-017-0162-9 – volume: 3 start-page: 1 issue: 2 year: 2007 ident: 178_CR30 publication-title: Int J Semant Web Inf Syst doi: 10.4018/jswis.2007040101 – ident: 178_CR34 – ident: 178_CR11 – volume: 11 start-page: 93 issue: 02 year: 1996 ident: 178_CR17 publication-title: Knowl Eng Rev doi: 10.1017/S0269888900007797 – volume-title: String Similarity Metrics for Ontology Alignment year: 2013 ident: 178_CR42 doi: 10.1007/978-3-642-41338-4_19 – ident: 178_CR9 – volume: 32 start-page: 281 issue: 4 year: 1993 ident: 178_CR13 publication-title: IMIA Yearbook – volume-title: International Conference on Formal Concept Analysis year: 2004 ident: 178_CR18 – ident: 178_CR41 – volume-title: International Conference on Knowledge Engineering and Knowledge Management year: 2008 ident: 178_CR20 – volume-title: International Semantic Web Conference year: 2011 ident: 178_CR2 – volume-title: International Semantic Web Conference (Posters and Demos) 2014 year: 2014 ident: 178_CR39 – volume-title: CEUR Workshop Proceedings, vol. 1766 year: 2016 ident: 178_CR31 – volume: 128 start-page: 1377 issue: 3 year: 2004 ident: 178_CR21 publication-title: CLA – volume: 11 start-page: 1908 issue: 2 year: 2011 ident: 178_CR24 publication-title: Appl Soft Comput doi: 10.1016/j.asoc.2010.06.007 – volume-title: 2010 First International Conference on Networking and Distributed Computing year: 2010 ident: 178_CR26 – volume-title: OTM Confederated International Conferences" On the Move to Meaningful Internet Systems" year: 2013 ident: 178_CR4 – ident: 178_CR29 – ident: 178_CR33 – ident: 178_CR10 – volume-title: Proceedings of the 4th International Conference on Computational Linguistics and Intelligent Text Processing year: 2003 ident: 178_CR36 – ident: 178_CR12 – volume-title: Machine and Web Intelligence (ICMWI), 2010 International Conference On year: 2010 ident: 178_CR3 – volume-title: Australasian Joint Conference on Artificial Intelligence year: 2003 ident: 178_CR19 – volume-title: Ordered Sets year: 1982 ident: 178_CR16 – volume-title: ACM SIGplan Notices, vol. 28 year: 1993 ident: 178_CR32 – volume: 41 start-page: 50 year: 2016 ident: 178_CR8 publication-title: Web Semant Sci Serv Agents World Wide Web doi: 10.1016/j.websem.2016.09.001 – volume-title: Advanced Int’l Conference on Telecommunications and Int’l Conference on Internet and Web Applications and Services (AICT-ICIW’06) year: 2006 ident: 178_CR25 – volume-title: Ontology Matching. 2nd ed. year: 2013 ident: 178_CR1 doi: 10.1007/978-3-642-38721-0 – volume-title: Computer Science and Information Technology (ICCSIT), 2010 3rd IEEE International Conference On year: 2010 ident: 178_CR23 – volume-title: Proceedings of the Twenty-Fourth AAAI Conference on Artificial Intelligence year: 2010 ident: 178_CR6 – volume: 5 start-page: 44 issue: 1 year: 2014 ident: 178_CR7 publication-title: J Biomed Semant doi: 10.1186/2041-1480-5-44 – volume: 24 start-page: 788 year: 2017 ident: 178_CR43 publication-title: J Am Med Inform Assoc doi: 10.1093/jamia/ocw175 – volume-title: Formal Concept Analysis: Mathematical Foundations year: 2012 ident: 178_CR27 – ident: 178_CR14 – volume-title: AMIA Annual Symp Proc 2017 year: 2017 ident: 178_CR44 – ident: 178_CR35 – ident: 178_CR37 – volume-title: Seventh International Workshop on Ontology Matching year: 2012 ident: 178_CR5 – volume-title: OTM Confederated International Conferences" On the Move to Meaningful Internet Systems" year: 2004 ident: 178_CR22 – volume: 8 start-page: 265 issue: 3 year: 1990 ident: 178_CR38 publication-title: J Log Program doi: 10.1016/0743-1066(90)90026-2 – volume-title: IJCAI year: 2001 ident: 178_CR15 |
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SubjectTerms | Algorithms Biological Ontologies Concept lattice Formal concept analysis Ontology matching Phenotype Vocabulary, Controlled |
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