The majority of results in computational learning theory are concerned with concept learning, i.e. with the special case of function learning for classes of functions with range {0, 1}. Much less is known about the theory of learning functions with a larger range such as \mathbbNN or \mathbbRR . In particular relatively few results exist about the general structure of common models for function learning, and there are only very few nontrivial function classes for which positive learning results have been exhibited in any of these models. We introduce in this paper the notion of a binary branching adversary tree for function learning, which allows us to give a somewhat surprising equivalent characterization of the optimal learning cost for l...
AbstractWe consider a fundamental problem in computational learning theory: learning an arbitrary Bo...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
Abstraet. The majority of results in computational learning theory are concerned with concept learni...
AbstractThis article investigates algorithmic learning, in the limit, of correct programs for recurs...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
AbstractStudying the learnability of classes of recursive functions has attracted considerable inter...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
AbstractWe consider the problem of learning real-valued functions from random examples when the func...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
AbstractWe consider a fundamental problem in computational learning theory: learning an arbitrary Bo...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
Abstraet. The majority of results in computational learning theory are concerned with concept learni...
AbstractThis article investigates algorithmic learning, in the limit, of correct programs for recurs...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
AbstractStudying the learnability of classes of recursive functions has attracted considerable inter...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
AbstractWe consider the problem of learning real-valued functions from random examples when the func...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
AbstractWe consider a fundamental problem in computational learning theory: learning an arbitrary Bo...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...
This paper concerns learning binary-valued functions defined on, and investigates how a particular t...