Co-training is a major multi-view learning paradigm that alternately trains two classifiers on two distinct views and maximizes the mutual agreement on the two-view unlabeled data. Traditional co-training algorithms usually train a learner on each view separately and then force the learners to be consistent across views. Although many co-trainings have been developed, it is quite possible that a learner will receive erroneous labels for unlabeled data when the other learner has only mediocre accuracy. This usually happens in the first rounds of co-training, when there are only a few labeled examples. As a result, co-training algorithms often have unstable performance. In this paper, Hessian-regularized co-training is proposed to overcome th...
Automatic recognition of visual objects using a deep learning approach has been successfully applied...
Recently, Semi-Supervised learning algorithms such as co-training are used in many domains. In co-tr...
The good performances of most classical learning algorithms are generally founded on high quality tr...
Co-training is a major multi-view learning paradigm that alternately trains two classifiers on two d...
© 2014 Liu et al. Co-training is a major multi-view learning paradigm that alternately trains two cl...
Co-training is a famous semi-supervised learning paradigm exploiting unlabeled data with two views. ...
Co-training is a famous semi-supervised learning paradigm exploiting unlabeled data with two views. ...
Co-training is a semi supervised learning method that effectively learns from a pool of labeled and ...
© 2017 Elsevier Inc. It is time-consuming and expensive to gather and label the growing multimedia d...
Abstract. Co-training, a paradigm of semi-supervised learning, may alleviate effectively the data sc...
Abstract—Co-training, a paradigm of semi-supervised learning, is promised to alleviate effectively t...
In this paper we present a case study of co-training to image classification. We consider two scene ...
Facing the problem of massive unlabeled data and limited labeled samples, semi-supervised learning i...
In several scientific applications, data are generated from two or more diverse sources (views) with...
Co-training can learn from datasets having a small number of labelled examples and a large number of...
Automatic recognition of visual objects using a deep learning approach has been successfully applied...
Recently, Semi-Supervised learning algorithms such as co-training are used in many domains. In co-tr...
The good performances of most classical learning algorithms are generally founded on high quality tr...
Co-training is a major multi-view learning paradigm that alternately trains two classifiers on two d...
© 2014 Liu et al. Co-training is a major multi-view learning paradigm that alternately trains two cl...
Co-training is a famous semi-supervised learning paradigm exploiting unlabeled data with two views. ...
Co-training is a famous semi-supervised learning paradigm exploiting unlabeled data with two views. ...
Co-training is a semi supervised learning method that effectively learns from a pool of labeled and ...
© 2017 Elsevier Inc. It is time-consuming and expensive to gather and label the growing multimedia d...
Abstract. Co-training, a paradigm of semi-supervised learning, may alleviate effectively the data sc...
Abstract—Co-training, a paradigm of semi-supervised learning, is promised to alleviate effectively t...
In this paper we present a case study of co-training to image classification. We consider two scene ...
Facing the problem of massive unlabeled data and limited labeled samples, semi-supervised learning i...
In several scientific applications, data are generated from two or more diverse sources (views) with...
Co-training can learn from datasets having a small number of labelled examples and a large number of...
Automatic recognition of visual objects using a deep learning approach has been successfully applied...
Recently, Semi-Supervised learning algorithms such as co-training are used in many domains. In co-tr...
The good performances of most classical learning algorithms are generally founded on high quality tr...