The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible objective functions on a fixed search space, all search algorithms perform equally well. Several refined versions of the theorem find a similar outcome when averaging across smaller sets of functions. This paper argues that NFL results continue to be misunderstood by many researchers, and addresses this issue in several ways. Existing arguments against real-world implications of NFL results are collected and re-stated for accessibility and new ones are added. Specific misunderstandings extant in the literature are identified, with speculation as to how they may have arisen. This paper presents an argument against a common paraphrase of NFL f...
The No Free Lunch theorem (NFL) asks some serious questions to researchers interested in search pr...
Abstract- The No-Free-Lunch (NFL) theorems hold for general multiobjective fitness spaces, in the se...
It is often claimed that Evolutionary Algorithms are superior to other optimization techniques, in p...
[...] Thus not only our reason fails us in the discovery of the ultimate connexion of causes and eff...
Abstract — The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/s...
This letter discusses the recent paper "Some technical remarks on the proof of the 'No Free Lunch' t...
The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/search algor...
A sizable amount of research has been done to improve the mechanisms for knowledge extraction such a...
The No Free Lunch (NFL) theorem due to Wolpert and Macready (1997) has led to controversial discussi...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...
The No Free Lunch (NFL) theorems for optimization tell us that when averaged over all possible optim...
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 ...
International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably in...
The classic NFL theorems are invariably cast in terms of single objective optimization problems. We ...
The No Free Lunch theorem (NFL) asks some serious questions to researchers interested in search pr...
Abstract- The No-Free-Lunch (NFL) theorems hold for general multiobjective fitness spaces, in the se...
It is often claimed that Evolutionary Algorithms are superior to other optimization techniques, in p...
[...] Thus not only our reason fails us in the discovery of the ultimate connexion of causes and eff...
Abstract — The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/s...
This letter discusses the recent paper "Some technical remarks on the proof of the 'No Free Lunch' t...
The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/search algor...
A sizable amount of research has been done to improve the mechanisms for knowledge extraction such a...
The No Free Lunch (NFL) theorem due to Wolpert and Macready (1997) has led to controversial discussi...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...
The No Free Lunch (NFL) theorems for optimization tell us that when averaged over all possible optim...
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 ...
International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably in...
The classic NFL theorems are invariably cast in terms of single objective optimization problems. We ...
The No Free Lunch theorem (NFL) asks some serious questions to researchers interested in search pr...
Abstract- The No-Free-Lunch (NFL) theorems hold for general multiobjective fitness spaces, in the se...
It is often claimed that Evolutionary Algorithms are superior to other optimization techniques, in p...