Learning a classifier when only knowing the features and marginal distribution of class labels in each of the data groups is both theoretically interesting and practically useful. Specifically, we consider the case in which the ratio of the number of data instances to the number of classes is large. We prove sample complexity upper bound in this setting, which is inspired by an analysis of existing algorithms. We further formulate the problem in a density estimation framework to learn a generative classifier. We also develop a practical RBM-based algorithm which shows promising performance on benchmark datasets. (C) 2014 Elsevier B.V. All rights reserved.http://gateway.webofknowledge.com/gateway/Gateway.cgi?GWVersion=2&SrcApp=PARTNER_APP&Sr...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
This work was partially supported Cluster of Excellence CoTeSys funded by the German DFG. This work ...
Learning a classifier when only knowing about the features and marginal distribution of class labels...
In Learning with Label Proportions (LLP), the objective is to learn a supervised classifier when, in...
AbstractAs a powerful tool of weakly labeled learning, proportion learning has drawn much attention ...
We study the problem of learning with la-bel proportions in which the training data is provided in g...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
Generative networks implicitly approximate complex densities from their sampling with impressive acc...
Estimating class proportions has emerged as an important direction in positive-unlabeled learning. W...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
In learning from label proportions (LLP), the instances are grouped into bags, and the task is to le...
In this work, we investigated the application of score-based gradient learning in discriminative and...
When choosing a classification rule, it is important to take into account the amount of sample data ...
Classification is a fundamental topic in the literature of data mining and all recent hot topics lik...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
This work was partially supported Cluster of Excellence CoTeSys funded by the German DFG. This work ...
Learning a classifier when only knowing about the features and marginal distribution of class labels...
In Learning with Label Proportions (LLP), the objective is to learn a supervised classifier when, in...
AbstractAs a powerful tool of weakly labeled learning, proportion learning has drawn much attention ...
We study the problem of learning with la-bel proportions in which the training data is provided in g...
International audienceGiven any generative classifier based on an inexact density model, we can defi...
Generative networks implicitly approximate complex densities from their sampling with impressive acc...
Estimating class proportions has emerged as an important direction in positive-unlabeled learning. W...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
In learning from label proportions (LLP), the instances are grouped into bags, and the task is to le...
In this work, we investigated the application of score-based gradient learning in discriminative and...
When choosing a classification rule, it is important to take into account the amount of sample data ...
Classification is a fundamental topic in the literature of data mining and all recent hot topics lik...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
This work was partially supported Cluster of Excellence CoTeSys funded by the German DFG. This work ...