Exploratory Landscape Analysis provides sample-based methods to calculate features of black-box optimization problems in a quantitative and measurable way. Many problem features have been proposed in the literature in an attempt to provide insights into the structure of problem landscapes and to use in selecting an effective algorithm for a given optimization problem. While there has been some success, evaluating the utility of problem features in practice presents some significant challenges. Machine learning models have been employed as part of the evaluation process, but they may require additional information about the problems as well as having their own hyper-parameters, biases and experimental variability. As a result, extra layers o...
An important challenge in black-box optimization is to be able to understand the relative performanc...
The characterization of optimization problems over continuous parameter spaces plays an important ro...
International audienceIn this paper, we demonstrate the application of features from landscape analy...
Optimization problems are of fundamental practical importance and can be found in almost every aspec...
International audienceFacilitated by the recent advances of Machine Learning (ML), the automated des...
International audienceBlack-box optimization of a previously unknown problem can often prove to be a...
International audienceExploratory landscape analysis (ELA) supports supervised learning approaches f...
International audienceInsights on characteristics of an optimization problem is highly important in ...
Abstract Analysis of optimization problem landscapes is fundamental in the understanding and charact...
Abell T, Malitsky Y, Tierney K. Features for Exploiting Black-Box Optimization Problem Structure. In...
Analysis of optimization problem landscapes is fundamental in the understanding and characterisation...
International audienceExtracting a priori knowledge informing about the landscape underlying an unkn...
Black-box optimization algorithms (BBOAs) are conceived for settings in which exact problem formulat...
In this paper, we investigate how systemic errors due to random sampling impact on automated algorit...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
An important challenge in black-box optimization is to be able to understand the relative performanc...
The characterization of optimization problems over continuous parameter spaces plays an important ro...
International audienceIn this paper, we demonstrate the application of features from landscape analy...
Optimization problems are of fundamental practical importance and can be found in almost every aspec...
International audienceFacilitated by the recent advances of Machine Learning (ML), the automated des...
International audienceBlack-box optimization of a previously unknown problem can often prove to be a...
International audienceExploratory landscape analysis (ELA) supports supervised learning approaches f...
International audienceInsights on characteristics of an optimization problem is highly important in ...
Abstract Analysis of optimization problem landscapes is fundamental in the understanding and charact...
Abell T, Malitsky Y, Tierney K. Features for Exploiting Black-Box Optimization Problem Structure. In...
Analysis of optimization problem landscapes is fundamental in the understanding and characterisation...
International audienceExtracting a priori knowledge informing about the landscape underlying an unkn...
Black-box optimization algorithms (BBOAs) are conceived for settings in which exact problem formulat...
In this paper, we investigate how systemic errors due to random sampling impact on automated algorit...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
An important challenge in black-box optimization is to be able to understand the relative performanc...
The characterization of optimization problems over continuous parameter spaces plays an important ro...
International audienceIn this paper, we demonstrate the application of features from landscape analy...