A sizable amount of research has been done to improve the mechanisms for knowledge extraction such as machine learning classification or regression. Quite unintuitively, the no free lunch (NFL) theorem states that all optimization problem strategies perform equally well when averaged over all possible problems. This fact seems to clash with the effort put forth toward better algorithms. This letter explores empirically the effect of the NFL theorem on some popular machine learning classification techniques over real-world data sets.Peer Reviewe
No-free-lunch theorems are important theoretical result in the fields of machine learning and artifi...
It is often claimed that Evolutionary Algorithms are superior to other optimization techniques, in p...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...
The No Free Lunch (NFL) Theorem imposes a theoretical restriction on optimization algorithms and the...
The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible...
Abstract — The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/s...
The No Free Lunch theorems are often used to argue that domain specific knowledge is required to des...
Traditionally the machine learning community has viewed the No Free Lunch (NFL) theorems for search ...
This letter discusses the recent paper "Some technical remarks on the proof of the 'No Free Lunch' t...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
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 ...
The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/search algor...
The no-free-lunch theorems promote a skeptical conclusion that all possible machine learning algorit...
The no-free-lunch theorems promote a skeptical conclusion that all possible machine learning algorit...
No-free-lunch theorems are important theoretical result in the fields of machine learning and artifi...
It is often claimed that Evolutionary Algorithms are superior to other optimization techniques, in p...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...
The No Free Lunch (NFL) Theorem imposes a theoretical restriction on optimization algorithms and the...
The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible...
Abstract — The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/s...
The No Free Lunch theorems are often used to argue that domain specific knowledge is required to des...
Traditionally the machine learning community has viewed the No Free Lunch (NFL) theorems for search ...
This letter discusses the recent paper "Some technical remarks on the proof of the 'No Free Lunch' t...
We extend previous results concerning Black-Box search algorithms, presenting new theoretical tools ...
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 ...
The No-Free-Lunch (NFL) Theorem provides a fundamental limit governing all optimization/search algor...
The no-free-lunch theorems promote a skeptical conclusion that all possible machine learning algorit...
The no-free-lunch theorems promote a skeptical conclusion that all possible machine learning algorit...
No-free-lunch theorems are important theoretical result in the fields of machine learning and artifi...
It is often claimed that Evolutionary Algorithms are superior to other optimization techniques, in p...
AbstractThe No Free Lunch (NFL) theorem due to Wolpert and Macready (IEEE Trans. Evol. Comput. 1(1) ...