Automatic machine learning (AutoML) aims at automatically choosing the best configuration for machine learning tasks. However, a configuration evaluation can be very time consuming particularly on learning tasks with large datasets. This limitation usually restrains derivative-free optimization from releasing its full power for a fine configuration search using many evaluations. To alleviate this limitation, in this paper, we propose a derivative-free optimization framework for AutoML using multi-fidelity evaluations. It uses many lowfidelity evaluations on small data subsets and very few highfidelity evaluations on the full dataset. However, the lowfidelity evaluations can be badly biased, and need to be corrected with only a very low cost...
International audienceThe sensitivity of machine learning (ML) algorithms w.r.t. their hyper-paramet...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Liuliakov A, Hermes L, Hammer B. AutoML technologies for the identification of sparse classification...
Automated machine learning (AutoML) frameworks have become important tools in the data scientists' a...
International audienceThis paper tackles the AutoML problem, aimed to automatically select an ML alg...
Automated machine learning (AutoML) promises to democratize machine learning by automatically genera...
Automated machine learning (AutoML) promises to democratize machine learning by automatically genera...
186 pagesAutomated machine learning (AutoML) seeks to reduce the human and machine costs of finding ...
Hyperparameter optimization (HPO) is a fundamental problem in automatic machine learning (AutoML). H...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
In the last few years, as processing the data became a part of everyday life in different areas of h...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...
Automated Machine Learning (AutoML) systems have been shown to efficiently build good models for new...
This thesis proposes three main contributions to advance the state-of-the-art of AutoML approaches. ...
International audienceThe sensitivity of machine learning (ML) algorithms w.r.t. their hyper-paramet...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Liuliakov A, Hermes L, Hammer B. AutoML technologies for the identification of sparse classification...
Automated machine learning (AutoML) frameworks have become important tools in the data scientists' a...
International audienceThis paper tackles the AutoML problem, aimed to automatically select an ML alg...
Automated machine learning (AutoML) promises to democratize machine learning by automatically genera...
Automated machine learning (AutoML) promises to democratize machine learning by automatically genera...
186 pagesAutomated machine learning (AutoML) seeks to reduce the human and machine costs of finding ...
Hyperparameter optimization (HPO) is a fundamental problem in automatic machine learning (AutoML). H...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
In the last few years, as processing the data became a part of everyday life in different areas of h...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...
Automated Machine Learning (AutoML) systems have been shown to efficiently build good models for new...
This thesis proposes three main contributions to advance the state-of-the-art of AutoML approaches. ...
International audienceThe sensitivity of machine learning (ML) algorithms w.r.t. their hyper-paramet...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Liuliakov A, Hermes L, Hammer B. AutoML technologies for the identification of sparse classification...