Two Approaches to Ontology Aggregation Based on Axiom Weakening

Axiom weakening is a novel technique that allows for fine-grained repair of inconsistent ontologies. In a multi-agent setting, integrating ontologies corresponding to multiple agents may lead to inconsistencies. Such inconsistencies can be resolved after the integrated ontology has been built, or their generation can be prevented during ontology generation. We implement and compare these two approaches. First, we study how to repair an inconsistent ontology resulting from a voting-based aggregation of views of heterogeneous agents. Second, we prevent the generation of inconsistencies by letting the agents engage in a turn-based rational protocol about the axioms to be added to the integrated ontology. We instantiate the two approaches using real-world ontologies and compare them by measuring the levels of satisfaction of the agents w.r.t. the ontology obtained by the two procedures.

[1]  Mihalis Yannakakis,et al.  On Generating All Maximal Independent Sets , 1988, Inf. Process. Lett..

[2]  Giovanna Guerrini,et al.  Minimizing conservativity violations in ontology alignments: algorithms and evaluation , 2016, Knowledge and Information Systems.

[3]  Jérôme Euzenat,et al.  Revision in networks of ontologies , 2015, Artif. Intell..

[4]  Thomas G. Dietterich What is machine learning? , 2020, Archives of Disease in Childhood.

[5]  Ulrich Endriss,et al.  Ontology merging as social choice: judgment aggregation under the open world assumption , 2012, J. Log. Comput..

[6]  Piotr Faliszewski,et al.  What Do Multiwinner Voting Rules Do? An Experiment Over the Two-Dimensional Euclidean Domain , 2017, AAAI.

[7]  Bijan Parsia,et al.  Laconic and Precise Justifications in OWL , 2008, SEMWEB.

[8]  Renata Vieira,et al.  Comparing Argumentation Frameworks for Composite Ontology Matching , 2009, ArgMAS.

[9]  Nils J. Nilsson,et al.  Artificial Intelligence , 1974, IFIP Congress.

[10]  Rafael Peñaloza,et al.  Understanding the complexity of axiom pinpointing in lightweight description logics , 2017, Artif. Intell..

[11]  Jérôme Euzenat Interaction-based ontology alignment repair with expansion and relaxation , 2017, IJCAI.

[12]  Rafael Peñaloza,et al.  Repairing Ontologies via Axiom Weakening , 2017, AAAI.

[13]  Jens Lehmann,et al.  Concept learning in description logics using refinement operators , 2009, Machine Learning.

[14]  Valentina A. M. Tamma,et al.  Limiting Logical Violations in Ontology Alignnment Through Negotiation , 2016, KR.