International audienceLandscape-aware algorithm selection approaches have so far mostly been relying on landscape feature extraction as a preprocessing step, independent of the execution of optimization algorithms in the portfolio. This introduces a significant overhead in computational cost for many practical applications, as features are extracted and computed via sampling and evaluating the problem instance at hand, similarly to what the optimization algorithm would perform anyway within its search trajectory. As suggested in [Jankovic et al., EvoAPP 2021], trajectory-based algorithm selection circumvents the problem of costly feature extraction by computing landscape features from points that a solver sampled and evaluated during the op...
We propose a method called Selection by Performance Prediction (SPP) which allows one, when faced wi...
In this paper, we investigate how systemic errors due to random sampling impact on automated algorit...
International audienceBlack-box optimization of a previously unknown problem can often prove to be a...
Landscape-aware algorithm selection approaches have so far mostly been relying on landscape feature ...
International audiencePer-instance algorithm selection seeks to recommend, for a given problem insta...
Per-instance algorithm selection seeks to recommend, for a given problem instance and a given perfor...
Black-box optimization algorithms (BBOAs) are conceived for settings in which exact problem formulat...
In optimization, algorithm selection, which is the selection of the most suitable algorithm for a sp...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Portfolio-based algorithm selection has seen tremendous practical success over the past two decades....
International audienceIn this paper, we demonstrate the application of features from landscape analy...
In this paper, we demonstrate the application of features from landscape analysis, initially propose...
International audienceThe proper setting of algorithm parameters is a well-known issue that gave ris...
The abundance of algorithms developed to solve different problems has given rise to an important res...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
We propose a method called Selection by Performance Prediction (SPP) which allows one, when faced wi...
In this paper, we investigate how systemic errors due to random sampling impact on automated algorit...
International audienceBlack-box optimization of a previously unknown problem can often prove to be a...
Landscape-aware algorithm selection approaches have so far mostly been relying on landscape feature ...
International audiencePer-instance algorithm selection seeks to recommend, for a given problem insta...
Per-instance algorithm selection seeks to recommend, for a given problem instance and a given perfor...
Black-box optimization algorithms (BBOAs) are conceived for settings in which exact problem formulat...
In optimization, algorithm selection, which is the selection of the most suitable algorithm for a sp...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Portfolio-based algorithm selection has seen tremendous practical success over the past two decades....
International audienceIn this paper, we demonstrate the application of features from landscape analy...
In this paper, we demonstrate the application of features from landscape analysis, initially propose...
International audienceThe proper setting of algorithm parameters is a well-known issue that gave ris...
The abundance of algorithms developed to solve different problems has given rise to an important res...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
We propose a method called Selection by Performance Prediction (SPP) which allows one, when faced wi...
In this paper, we investigate how systemic errors due to random sampling impact on automated algorit...
International audienceBlack-box optimization of a previously unknown problem can often prove to be a...