Benchmarking Automatic Machine Learning Frameworks
AutoML serves as the bridge between varying levels of expertise when designing machine learning systems and expedites the data science process. A wide range of techniques is taken to address this, however there does not exist an objective comparison of these techniques. We present a benchmark of cur...
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Zusammenfassung: | AutoML serves as the bridge between varying levels of expertise when
designing machine learning systems and expedites the data science process. A
wide range of techniques is taken to address this, however there does not exist
an objective comparison of these techniques. We present a benchmark of current
open source AutoML solutions using open source datasets. We test auto-sklearn,
TPOT, auto_ml, and H2O's AutoML solution against a compiled set of regression
and classification datasets sourced from OpenML and find that auto-sklearn
performs the best across classification datasets and TPOT performs the best
across regression datasets. |
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DOI: | 10.48550/arxiv.1808.06492 |