OPTION: OPTImization Algorithm Benchmarking ONtology
Ana Kostovska, Diederick Vermetten, Carola Doerr, Saso D\v{z}eroski,, Pan\v{c}e Panov, Tome Eftimov

TL;DR
This paper introduces OPTION, an ontology for standardizing and enhancing the interoperability of optimization benchmarking data across platforms, enabling better data sharing, querying, and analysis.
Contribution
The paper develops and demonstrates an ontology that semantically annotates optimization benchmarking data, improving interoperability and enabling advanced querying and meta-analysis capabilities.
Findings
Successfully annotated benchmark datasets from BBOB and YABBOB.
Enabled complex queries and data integration across platforms.
Facilitated meta-analysis through integrated knowledge base.
Abstract
Many optimization algorithm benchmarking platforms allow users to share their experimental data to promote reproducible and reusable research. However, different platforms use different data models and formats, which drastically complicates the identification of relevant datasets, their interpretation, and their interoperability. Therefore, a semantically rich, ontology-based, machine-readable data model that can be used by different platforms is highly desirable. In this paper, we report on the development of such an ontology, which we call OPTION (OPTImization algorithm benchmarking ONtology). Our ontology provides the vocabulary needed for semantic annotation of the core entities involved in the benchmarking process, such as algorithms, problems, and evaluation measures. It also provides means for automatic data integration, improved interoperability, and powerful querying…
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Taxonomy
TopicsSemantic Web and Ontologies · Scientific Computing and Data Management · Data Quality and Management
MethodsBalanced Selection · Ontology
