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, ...
Ontology tools performance and scalability are critical to both the growth of the Semantic Web and t...
Numerical validation is at the core of machine learning research as it allows to assess the actual i...
The increasing popularity of the Web of Data is motivating the need to integrate semantic-web ontolo...
We present methods to answer two basic questions that arise when benchmarking optimization algorithm...
Reliable comparison of optimization algorithms requires the use of specialized benchmarking procedur...
International audienceAlgorithm benchmarking plays a vital role in designing new optimization algori...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
International audienceOne of the main goals of the COCO platform is to produce, collect , and make a...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
International audienceNumerical validation is at the core of machine learning research as it allows ...
Ontology tools performance and scalability are critical to both the growth of the Semantic Web and t...
Numerical validation is at the core of machine learning research as it allows to assess the actual i...
The increasing popularity of the Web of Data is motivating the need to integrate semantic-web ontolo...
We present methods to answer two basic questions that arise when benchmarking optimization algorithm...
Reliable comparison of optimization algorithms requires the use of specialized benchmarking procedur...
International audienceAlgorithm benchmarking plays a vital role in designing new optimization algori...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
International audienceOne of the main goals of the COCO platform is to produce, collect , and make a...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
International audienceNumerical validation is at the core of machine learning research as it allows ...
Ontology tools performance and scalability are critical to both the growth of the Semantic Web and t...
Numerical validation is at the core of machine learning research as it allows to assess the actual i...
The increasing popularity of the Web of Data is motivating the need to integrate semantic-web ontolo...