This paper presents AutoGOAL, a system for automatic machine learning (AutoML) that uses heterogeneous techniques. In contrast with existing AutoML approaches, our contribution can automatically build machine learning pipelines that combine techniques and algorithms from different frameworks, including shallow classifiers, natural language processing tools, and neural networks. We define the heterogeneous AutoML optimization problem as the search for the best sequence of algorithms that transforms specific input data into the desired output. This provides a novel theoretical and practical approach to AutoML. Our proposal is experimentally evaluated in diverse machine learning problems and compared with alternative approaches, showing that i...
International audienceAutomated machine learning (AutoML) can make data scientists more productive. ...
This work deals with automated machine learning (AutoML), which is a field that aims to automatize t...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...
This paper introduces a web demo that showcases the main characteristics of the AutoGOAL framework. ...
This paper introduces Hierarchical Machine Learning Optimisation (HML-Opt), an AutoML framework that...
This open access book presents the first comprehensive overview of general methods in Automated Mach...
AutoML automatically selects, composes and parameterizes machine learning algorithms into a workflow...
This open access book presents the first comprehensive overview of general methods in Automatic Mach...
This open access book presents the first comprehensive overview of general methods in Automatic Mach...
Over the last decade, the long-running endeavour to automate high-level processes in machine learnin...
The recent developments in machine learning have shown its applicability in numerous real-world appl...
peer reviewedAutomatic machine learning is an important problem in the forefront of machine learnin...
Automated machine learning (AutoML) aims to automatically produce the best machine learning pipeline...
This paper proposes Auto-MEKAGGP, an Automated Machine Learning (Auto-ML) method for Multi-Label Cla...
International audienceThe success of machine learning in many domains crucially relies on human mach...
International audienceAutomated machine learning (AutoML) can make data scientists more productive. ...
This work deals with automated machine learning (AutoML), which is a field that aims to automatize t...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...
This paper introduces a web demo that showcases the main characteristics of the AutoGOAL framework. ...
This paper introduces Hierarchical Machine Learning Optimisation (HML-Opt), an AutoML framework that...
This open access book presents the first comprehensive overview of general methods in Automated Mach...
AutoML automatically selects, composes and parameterizes machine learning algorithms into a workflow...
This open access book presents the first comprehensive overview of general methods in Automatic Mach...
This open access book presents the first comprehensive overview of general methods in Automatic Mach...
Over the last decade, the long-running endeavour to automate high-level processes in machine learnin...
The recent developments in machine learning have shown its applicability in numerous real-world appl...
peer reviewedAutomatic machine learning is an important problem in the forefront of machine learnin...
Automated machine learning (AutoML) aims to automatically produce the best machine learning pipeline...
This paper proposes Auto-MEKAGGP, an Automated Machine Learning (Auto-ML) method for Multi-Label Cla...
International audienceThe success of machine learning in many domains crucially relies on human mach...
International audienceAutomated machine learning (AutoML) can make data scientists more productive. ...
This work deals with automated machine learning (AutoML), which is a field that aims to automatize t...
We study the AutoML problem of automatically configuring machine learning pipelines by jointly selec...