We present a new perspective for investigating the Probably Approximate Correct (PAC) learnability of classes of concepts. We focus on special sets of points for characterizing the concepts within their class. This gives rise to a general notion of boundary of a concept, which holds even in discrete spaces, and to a special probability measuring technique. This technique is applied (i) to narrow the gap between the minimum and maximum sample sizes necessary to learn under a more stringent learnability definition , and (ii) to get self-explanatory indices of the complexity of the learning task. These indices can be roughly estimated during the learning process and appear very useful in the treatment of nonsymbolic procedures, e.g. in the con...
) z Bhaskar DasGupta y Department of Computer Science University of Minnesota Minneapolis, MN 554...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
We provide some theoretical results on sample complexity of PAC learning when the hypotheses are giv...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
AbstractThis paper focuses on a general setup for obtaining sample size lower bounds for learning co...
textabstractA stochastic model of learning from examples has been introduced by Valiant [1984]. This...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
AbstractIn this paper we study a new view on the PAC-learning model in which the examples are more c...
The distribution-independent model of concept learning from examples ("PAC-learning") due to Valiant...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
. Within the framework of pac-learning, we explore the learnability of concepts from samples using t...
) z Bhaskar DasGupta y Department of Computer Science University of Minnesota Minneapolis, MN 554...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
We provide some theoretical results on sample complexity of PAC learning when the hypotheses are giv...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
AbstractWe present a new perspective for investigating the probably approximate correct (PAC) learna...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
AbstractThis paper focuses on a general setup for obtaining sample size lower bounds for learning co...
textabstractA stochastic model of learning from examples has been introduced by Valiant [1984]. This...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
AbstractIn this paper we study a new view on the PAC-learning model in which the examples are more c...
The distribution-independent model of concept learning from examples ("PAC-learning") due to Valiant...
Probably Approximately Correct (i.e., PAC) learning is a core concept of sample complexity theory, a...
. Within the framework of pac-learning, we explore the learnability of concepts from samples using t...
) z Bhaskar DasGupta y Department of Computer Science University of Minnesota Minneapolis, MN 554...
AbstractValiant's protocol for learning is extended to the case where the distribution of the exampl...
We provide some theoretical results on sample complexity of PAC learning when the hypotheses are giv...