A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas of teaching models within the PAC setting: a polynomial-sized teaching set is associated with each target concept; the criterion of success is PAC identification; an additional parameter, namely the inverse of the minimum probability assigned to any example in the teaching set, is associated with each distribution; the learning algorithm running time takes this new parameter into account. An Occam razor theorem and its converse are proved. Some classical classes of boolean functions, such as Decision Lists, DNF and CNF formulas are proved learnable in this model. Comparisons with other teaching models are made: learnability in the ...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
AbstractIn this paper we extend the Monotone Theory to the PAC-learning Model with membership querie...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
International audienceA PAC model under helpful distributions is introduced. A teacher associates a ...
We define a new PAC learning model. In this model, examples are drawn according to the universal dis...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
We introduce the notion of "partial Occam algorithm". A partial Occam algorithm produces a...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
In this paper we study a new restriction of the PAC learning framework, in which each label class is...
AbstractThe PAC-learning model is distribution-independent in the sense that the learner must reach ...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
We introduce and investigate a new model of learning probability distributions from independent draw...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
AbstractIn this paper we extend the Monotone Theory to the PAC-learning Model with membership querie...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
International audienceA PAC model under helpful distributions is introduced. A teacher associates a ...
We define a new PAC learning model. In this model, examples are drawn according to the universal dis...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
We introduce the notion of "partial Occam algorithm". A partial Occam algorithm produces a...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
In this paper we study a new restriction of the PAC learning framework, in which each label class is...
AbstractThe PAC-learning model is distribution-independent in the sense that the learner must reach ...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
We introduce and investigate a new model of learning probability distributions from independent draw...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
AbstractIn this paper we extend the Monotone Theory to the PAC-learning Model with membership querie...