LGAICYNov 23, 2022

FAIRification of MLC data

arXiv:2211.12757v1h-index: 65
Originality Synthesis-oriented
AI Analysis

This work addresses the need for robust and trustworthy benchmarking in the MLC field, which is incremental as it applies existing data management standards to this domain.

The paper tackles the problem of ensuring proper benchmarking in multi-label classification (MLC) by introducing an ontology-based online catalogue of MLC datasets that adhere to FAIR and TRUST principles, resulting in a publicly accessible resource with extensive dataset descriptions and benchmark data.

The multi-label classification (MLC) task has increasingly been receiving interest from the machine learning (ML) community, as evidenced by the growing number of papers and methods that appear in the literature. Hence, ensuring proper, correct, robust, and trustworthy benchmarking is of utmost importance for the further development of the field. We believe that this can be achieved by adhering to the recently emerged data management standards, such as the FAIR (Findable, Accessible, Interoperable, and Reusable) and TRUST (Transparency, Responsibility, User focus, Sustainability, and Technology) principles. To FAIRify the MLC datasets, we introduce an ontology-based online catalogue of MLC datasets that follow these principles. The catalogue extensively describes many MLC datasets with comprehensible meta-features, MLC-specific semantic descriptions, and different data provenance information. The MLC data catalogue is extensively described in our recent publication in Nature Scientific Reports, Kostovska & Bogatinovski et al., and available at: http://semantichub.ijs.si/MLCdatasets. In addition, we provide an ontology-based system for easy access and querying of performance/benchmark data obtained from a comprehensive MLC benchmark study. The system is available at: http://semantichub.ijs.si/MLCbenchmark.

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