A Probabilistic-Logical Framework for Ontology Matching

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A Probabilistic-Logical Framework for Ontology Matching
A Probabilistic-Logical Framework for Ontology Matching
Bibliographical Metadata
Subject: Ontology Matching
Year: 2010
Authors: Mathias Niepert, Christian Meilicke, Heiner Stuckenschmidt
Venue AAAI
Content Metadata
Problem: Link Discovery
Approach: probabilistic-logical framework for ontology matching based on Markov logiP
Implementation: ml-match
Evaluation: Using thresholds on the a-priori similarity measure

Abstract

Ontology matching is the problem of determining correspondences between concepts, properties, and individuals of different heterogeneous ontologies. With this paper we present a novel probabilistic-logical framework for ontology matching based on Markov logic. We define the syntax and semantics and provide a formalization of the ontology matching problem within the framework. The approach has several advantages over existing methods such as ease of experimentation, incoherence mitigation during the alignment process, and the incorporation of apriori confidence values. We show empirically that the approach is efficient and more accurate than existing matchers on an established ontology alignment benchmark dataset.

Conclusion

We presented a Markov logic based framework for ontology matching capturing a wide range of matching strategies. Since these strategies are expressed with a unified syntax and semantics we can isolate variations and empirically evaluate their effects. Even though we focused only on a small subset of possible alignment strategies the results are already quite promising. We have also successfully learned weights for soft formulae within the framework. In cases where training data is not available, weights set manually by experts still result in improved alignment quality. Research related to determining appropriate weights based on structural properties of ontologies is a topic of future work.

Future work

The framework is not only useful for aligning concepts and properties but can also include instance matching. For this purpose, one would only need to add a hidden predicate modeling instance correspondences. The resulting matching approach would immediately benefit from probabilistic joint inference, taking into account the interdependencies between terminological and instance correspondences.

Approach

Positive Aspects: The approach has several advantages over existing methods such as ease of experimentation, incoherence mitigation during the alignment process, and the incorporation of a-priori confidence values. In cases where training data is not available, weights set manually by experts still result in improved alignment quality. The framework is not only useful for aligning concepts and properties but can also include instance matching. For this purpose, one would only need to add a hidden predicate modeling instance correspondences. The resulting matching approach would immediately benefit from probabilistic joint inference, taking into account the interdependencies between terminological and instance correspondences.

Negative Aspects: No data available now.

Limitations: No data available now.

Challenges: No data available now.

Proposes Algorithm: No data available now.

Methodology: No data available now.

Requirements: training data

Limitations: No data available now.

Implementations

Download-page: http://code.google.com/p/ml-match/

Access API: No data available now.

Information Representation: No data available now.

Data Catalogue: {{{Catalogue}}}

Runs on OS: No data available now.

Vendor: No data available now.

Uses Framework: TheBeast

Has Documentation URL: https://code.google.com/archive/p/ml-match/wikis/MLExample.wiki

Programming Language: No data available now.

Version: No data available now.

Platform: No data available now.

Toolbox: No data available now.

GUI: No

Research Problem

Subproblem of: No data available now.

RelatedProblem: No data available now.

Motivation: No data available now.

Evaluation

Experiment Setup: All experiments were conducted on a desktop PC with AMD Athlon Dual Core Processor 5400B with 2.6GHz and 1GB RAM.

Evaluation Method : No data available now.

Hypothesis: No data available now.

Description: We applied the reasoner Pellet (Sirin et al. 2007) to create the ground MLN formulation and used TheBeast2 (Riedel 2008) to convert the MLN formulations to the corresponding ILP instances. Finally, we applied the mixed integer programming solver SCIP3 to solve the ILP.

Dimensions: {{{Dimensions}}}

Benchmark used: Ontofarm dataset (Svab et al. 2005)

Results: No data available now.

Access APINo data available now. +
Event in seriesAAAI +
Has BenchmarkOntofarm dataset (Svab et al. 2005) +
Has ChallengesNo data available now. +
Has DataCatalouge{{{Catalogue}}} +
Has DescriptionWe applied the reasoner Pellet (Sirin et a
We applied the

reasoner Pellet (Sirin et al. 2007) to create the ground MLN formulation and used TheBeast2 (Riedel 2008) to convert the MLN formulations to the corresponding ILP instances. Finally, we applied the mixed integer programming solver

SCIP3 to solve the ILP.
programming solver SCIP3 to solve the ILP. +
Has Dimensions{{{Dimensions}}} +
Has DocumentationURLhttps://code.google.com/archive/p/ml-match/wikis/MLExample.wiki +
Has Downloadpagehttp://code.google.com/p/ml-match/ +
Has EvaluationUsing thresholds on the a-priori similarity measure +
Has EvaluationMethodNo data available now. +
Has ExperimentSetupAll experiments were conducted

on a desktop PC with AMD Athlon Dual Core Processor

5400B with 2.6GHz and 1GB RAM. +
Has GUINo +
Has HypothesisNo data available now. +
Has ImplementationMl-match +
Has InfoRepresentationNo data available now. +
Has LimitationsNo data available now. +
Has NegativeAspectsNo data available now. +
Has PositiveAspectsThe approach has several advantages over e
The approach has several advantages over

existing methods such as ease of experimentation, incoherence mitigation during the alignment process, and the incorporation of a-priori confidence values. In cases where training data is not available, weights set manually by experts still result in improved alignment quality. The framework is not only useful for aligning concepts and properties but can also include instance matching. For this purpose, one would only need to add a hidden predicate modeling instance correspondences. The resulting matching approach would immediately benefit from probabilistic joint inference, taking into account the interdependencies

between terminological and instance correspondences.
rminological and instance correspondences. +
Has Requirementstraining data +
Has ResultsNo data available now. +
Has SubproblemNo data available now. +
Has VersionNo data available now. +
Has abstractOntology matching is the problem of determ
Ontology matching is the problem of determining correspondences between concepts, properties, and individuals of different heterogeneous ontologies. With this paper we present a novel probabilistic-logical framework for ontology matching based on Markov logic. We define the syntax and semantics and provide a formalization of the ontology matching problem within the framework. The approach has several advantages over existing methods such as ease of experimentation, incoherence mitigation during the alignment process, and the incorporation of apriori confidence values. We show empirically that the approach is efficient and more accurate than existing matchers on an established ontology alignment benchmark dataset.
shed ontology alignment benchmark dataset. +
Has approachprobabilistic-logical framework for ontology matching based on Markov logiP +
Has authorsMathias Niepert +, Christian Meilicke + and Heiner Stuckenschmidt +
Has conclusionWe presented a Markov logic based framewor
We presented a Markov logic based framework for ontology matching capturing a wide range of matching strategies. Since these strategies are expressed with a unified syntax and semantics we can isolate variations and empirically evaluate their effects. Even though we focused only on a small subset of possible alignment strategies the results are already quite promising. We have also successfully learned weights for soft formulae within the framework. In cases where training data is not available, weights set manually by experts still result in improved alignment quality. Research related to determining appropriate weights based on structural properties of ontologies is a topic of future work.
s of ontologies is a topic of future work. +
Has future workThe framework is not only useful for align
The framework is not only useful for aligning concepts and properties but can also include instance matching. For this purpose, one would only need to add a hidden predicate modeling instance correspondences. The resulting matching approach would immediately benefit from probabilistic joint inference, taking into account the interdependencies between terminological and instance correspondences.
rminological and instance correspondences. +
Has motivationNo data available now. +
Has platformNo data available now. +
Has problemLink Discovery +
Has relatedProblemNo data available now. +
Has subjectOntology Matching +
Has vendorNo data available now. +
Has year2010 +
ImplementedIn ProgLangNo data available now. +
Proposes AlgorithmNo data available now. +
RunsOn OSNo data available now. +
TitleA Probabilistic-Logical Framework for Ontology Matching +
Uses FrameworkTheBeast +
Uses MethodologyNo data available now. +
Uses ToolboxNo data available now. +