International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably infinite and uncountable infinite domains and investigates the design of optimal optimization algorithms. The original NFL theorem due to Wolpert and Macready states that, for finite search domains, all search heuristics have the same performance when averaged over the uniform distribution over all possible functions. For infinite domains the extension of the concept of distribution over all possible functions involves measurability issues and stochastic process the- ory. For countably infinite domains, we prove that the natural extension of NFL theorems, for the current formalization of probability, does not hold, but that a weaker form of NFL does...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
Abstract — Recent work on the foundational underpinnings of black-box optimization has begun to unco...
International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably in...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...
International audienceThis paper investigates extensions of No Free Lunch (NFL) theorems to countabl...
Abstract — The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/s...
The No Free Lunch (NFL) theorem due to Wolpert and Macready (1997) has led to controversial discussi...
The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/search algor...
[...] Thus not only our reason fails us in the discovery of the ultimate connexion of causes and eff...
The No Free Lunch (NFL)theorem due to Wolpert and Macready (1997)has led to controversial discussion...
The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible...
AbstractThe No-Free-Lunch theorem states that there does not exist a genuine general-purpose optimiz...
The classic NFL theorems are invariably cast in terms of single objective optimization problems. We ...
Abstract—Function optimisation is a major challenge in com-puter science. The No Free Lunch theorems...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
Abstract — Recent work on the foundational underpinnings of black-box optimization has begun to unco...
International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably in...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...
International audienceThis paper investigates extensions of No Free Lunch (NFL) theorems to countabl...
Abstract — The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/s...
The No Free Lunch (NFL) theorem due to Wolpert and Macready (1997) has led to controversial discussi...
The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/search algor...
[...] Thus not only our reason fails us in the discovery of the ultimate connexion of causes and eff...
The No Free Lunch (NFL)theorem due to Wolpert and Macready (1997)has led to controversial discussion...
The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible...
AbstractThe No-Free-Lunch theorem states that there does not exist a genuine general-purpose optimiz...
The classic NFL theorems are invariably cast in terms of single objective optimization problems. We ...
Abstract—Function optimisation is a major challenge in com-puter science. The No Free Lunch theorems...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
Abstract — Recent work on the foundational underpinnings of black-box optimization has begun to unco...