This paper proposes uRace, a unified race algorithm for efficient offline parameter tuning of deterministic algorithms. We build on the similarity between a stochastic simulation environment and offline tuning of deterministic algorithms, where the stochastic element in the latter is the unknown problem instance given to the algorithm. Inspired by techniques from the simulation optimization literature, uRace enforces fair comparisons among parameter configurations by evaluating their performance on the same training instances. It relies on rapid statistical elimination of inferior parameter configurations and an increasingly localized search of the parameter space to quickly identify good parameter settings. We empirically evaluate uRace by...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
We extend the idea of model-based algorithms for deterministic optimization to simulation optimizati...
This paper proposes uRace, a unified race algorithm for efficient offline parameter tuning of determ...
Abstract. Tuning stochastic local search algorithms for tackling large instances is difficult due to...
The authors develop a two-timescale simultaneous perturbation stochastic approximation algorithm for...
International audienceEvolutionary algorithms (EA) are recently used to explore the parameter space ...
Abstract Algorithms for solving hard optimization problems typically have several parameters that ne...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
This article investigates simulation-based optimization problems with a stochastic objective functio...
We develop an online optimisation framework for self tuning of computer systems. Towards this, we fi...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
We present two efficient discrete parameter simulation optimization (DPSO) algorithms for the long-r...
AbstractModern optimization algorithms typically require the setting of a large number of parameters...
Modern optimization algorithms typically require the setting of a large number of parameters to opti...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
We extend the idea of model-based algorithms for deterministic optimization to simulation optimizati...
This paper proposes uRace, a unified race algorithm for efficient offline parameter tuning of determ...
Abstract. Tuning stochastic local search algorithms for tackling large instances is difficult due to...
The authors develop a two-timescale simultaneous perturbation stochastic approximation algorithm for...
International audienceEvolutionary algorithms (EA) are recently used to explore the parameter space ...
Abstract Algorithms for solving hard optimization problems typically have several parameters that ne...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
This article investigates simulation-based optimization problems with a stochastic objective functio...
We develop an online optimisation framework for self tuning of computer systems. Towards this, we fi...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
We present two efficient discrete parameter simulation optimization (DPSO) algorithms for the long-r...
AbstractModern optimization algorithms typically require the setting of a large number of parameters...
Modern optimization algorithms typically require the setting of a large number of parameters to opti...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
We extend the idea of model-based algorithms for deterministic optimization to simulation optimizati...