2024
DOI: 10.1007/s10618-024-01020-3
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Towards more sustainable and trustworthy reporting in machine learning

Raphael Fischer,
Thomas Liebig,
Katharina Morik

Abstract: With machine learning (ML) becoming a popular tool across all domains, practitioners are in dire need of comprehensive reporting on the state-of-the-art. Benchmarks and open databases provide helpful insights for many tasks, however suffer from several phenomena: Firstly, they overly focus on prediction quality, which is problematic considering the demand for more sustainability in ML. Depending on the use case at hand, interested users might also face tight resource constraints and thus should be allowed to i… Show more

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