Abstract

Ontology alignment is vital in Semantic Web technologies with numerous applications in diverse disciplines. Due to diversity and abundance of ontology alignment systems, a proper evaluation can portray the evolution of ontology alignment and depicts the efficiency of a system for a particular domain. Evaluation can help system designers recognize the strength and shortcomings of their systems, and aid application developers to select a proper alignment system. This article presents a new evaluation and comparison methodology based on multiple performance metrics that accommodates experts’ preferences via a multi-criteria decision-making (MCDM) method, i.e., Bayesian best–worst method (BWM). First, the importance of a performance metric for a specific task/application is determined according to experts’ preferences. The alignment systems are then evaluated based on proposed expert-based collective performance (ECP) that takes into account multiple metrics as well as their calibrated importance. For comparison, the alignment systems are ranked based on a probabilistic scheme, where it includes the extent to which one alignment system is preferred over another. The proposed methodology is applied to six tracks from ontology alignment evaluation initiative (OAEI), where the importance of performance metrics are calibrated by designing a survey and eliciting the preferences of ontology alignment experts. Accordingly, the participating alignment systems in the OAEI 2018 are evaluated and ranked. While the proposed methodology is applied to six OAEI tracks to demonstrate its applicability, it can also be applied to any benchmark or application of ontology alignment.

Highlights

  • Ontology alignment is the process of finding similar entities in two different ontologies stating similar pieces of information in distinct ways

  • This paper modeled the evaluation and comparison of alignment systems with respect to multiple performance metrics as a multi-criteria decision-making (MCDM) problem, where performance metrics and alignment systems served as the criteria and alternatives, respectively

  • We elicited the preferences of ontology alignment experts on the performance metrics for different ontology alignment evaluation initiative (OAEI) tracks to calibrate the importance of each metric as well as the extent to which one metric is preferred over another

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Summary

Introduction

Ontology alignment is the process of finding similar entities in two different ontologies stating similar pieces of information in distinct ways. Despite the tremendous progress for developing alignment systems for different challenges such as complex and large-scale ontologies [1,2], little efforts have been taken for developing a reliable means for evaluation and comparison of the systems [3]. There are different problems which have been solved by using ontology alignment. In agent-based modeling, the communication between agents with different syntaxes is possible by using ontology alignment [6]. Ontology alignment is used to enable interoperability in logistics by aligning different logistics standards and transforming the associated instances [7]. Other applications of ontology alignment include, but not limited to, ontology integration [8,9], linked data [10], and peer-to-peer information sharing [11]

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