This paper is concerned with learners who aim to learn patterns in infinite binary sequences: shown longer and longer initial segments of a binary sequence, they either attempt to predict whether the next bit will be a 0 or will be a 1 or they issue forecast probabilities for these events. Several variants of this problem are considered. In each case, a no-free-lunch result of the following form is established: the problem of learning is a formidably difficult one, in that no matter what method is pursued, failure is incomparably more common that success; and difficult choices must be faced in choosing a method of learning, since no approach dominates all others in its range of success. In the simplest case, the comparison of the set of sit...
No-free-lunch theorems are important theoretical result in the fields of machine learning and artifi...
Two of the most commonly used models in computational learning theory are the distribution-free mode...
AbstractWe deal with a special class of games against nature which correspond to subsymbolic learnin...
This paper is concerned with learners who aim to learn patterns in infinite binary sequences: shown ...
The No Free Lunch theorems are often used to argue that domain specific knowledge is required to des...
No-free-lunch theorems have shown that learning algorithms cannot be universally good. We show that ...
The No Free Lunch theorems are often used to argue that domain specific knowledge is required to des...
An abstract formalism is presented wherein a mathematical learning theory is explored. Numerous exam...
We consider a model of teaching in which the learners are consistent and have bounded state, but are...
In the present study we provide empirical evidence that human learners succeed in an artificial-gram...
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...
International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably in...
We consider an infinite collection of agents who make decisions, sequentially, about an unknown unde...
The paper studies infinite repetition of finite strategic form games. Players use a learning behavio...
No-free-lunch theorems are important theoretical result in the fields of machine learning and artifi...
Two of the most commonly used models in computational learning theory are the distribution-free mode...
AbstractWe deal with a special class of games against nature which correspond to subsymbolic learnin...
This paper is concerned with learners who aim to learn patterns in infinite binary sequences: shown ...
The No Free Lunch theorems are often used to argue that domain specific knowledge is required to des...
No-free-lunch theorems have shown that learning algorithms cannot be universally good. We show that ...
The No Free Lunch theorems are often used to argue that domain specific knowledge is required to des...
An abstract formalism is presented wherein a mathematical learning theory is explored. Numerous exam...
We consider a model of teaching in which the learners are consistent and have bounded state, but are...
In the present study we provide empirical evidence that human learners succeed in an artificial-gram...
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...
International audienceThis paper analyses extensions of No-Free-Lunch (NFL) theorems to countably in...
We consider an infinite collection of agents who make decisions, sequentially, about an unknown unde...
The paper studies infinite repetition of finite strategic form games. Players use a learning behavio...
No-free-lunch theorems are important theoretical result in the fields of machine learning and artifi...
Two of the most commonly used models in computational learning theory are the distribution-free mode...
AbstractWe deal with a special class of games against nature which correspond to subsymbolic learnin...