A classical approach in multi-class pattern classification is the following. Estimate the probability distributions that generated the observations for each label class, and then label new instances by applying the Bayes classifier to the estimated distributions. That approach provides more useful information than just a class label; it also provides estimates of the conditional distribution of class labels, in situations where there is class overlap. We would like to know whether it is harder to build accurate classifiers via this approach, than by techniques that may process all data with distinct labels together. In this paper we make that question precise by considering it in the context of PAC learnability. We propose two restriction...
There exist many different generalization error bounds for classification. Each of these bounds cont...
There exist many different generalization error bounds for classification. Each of these bounds cont...
International audienceA PAC model under helpful distributions is introduced. A teacher associates a ...
A classical approach in multi-class pattern classication is the following. Estimate prob-ability dis...
In this paper we study a new restriction of the PAC learning framework, in which each label class is...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
Abstract. There has been growing interest in practice in using unla-beled data together with labeled...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
AbstractThe PAC-learning model is distribution-independent in the sense that the learner must reach ...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
We define a new PAC learning model. In this model, examples are drawn according to the universal dis...
The standard PAC-learning model has proven to be a useful theoretical framework for thinking about t...
There exist many different generalization error bounds for classification. Each of these bounds cont...
There exist many different generalization error bounds for classification. Each of these bounds cont...
International audienceA PAC model under helpful distributions is introduced. A teacher associates a ...
A classical approach in multi-class pattern classication is the following. Estimate prob-ability dis...
In this paper we study a new restriction of the PAC learning framework, in which each label class is...
We study a distribution dependent form of PAC learning that uses probability distributions related t...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
AbstractWe present a systematic framework for classifying, comparing, and defining models of PAC lea...
Abstract. There has been growing interest in practice in using unla-beled data together with labeled...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
AbstractThe PAC-learning model is distribution-independent in the sense that the learner must reach ...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
This paper focuses on a general setup for obtaining sample size lower bounds for learning concept cl...
We define a new PAC learning model. In this model, examples are drawn according to the universal dis...
The standard PAC-learning model has proven to be a useful theoretical framework for thinking about t...
There exist many different generalization error bounds for classification. Each of these bounds cont...
There exist many different generalization error bounds for classification. Each of these bounds cont...
International audienceA PAC model under helpful distributions is introduced. A teacher associates a ...