The focus of this thesis is on learning approaches for what we call ``low-quality data'' and in particular data in which only small amounts of labeled target data is available. The first part provides background discussion on low-quality data issues, followed by preliminary study in this area. The remainder of the thesis focuses on a particular scenario: multi-view semi-supervised learning. Multi-view learning generally refers to the case of learning with data that has multiple natural views, or sets of features, associated with it. Multi-view semi-supervised learning methods try to exploit the combination of multiple views along with large amounts of unlabeled data in order to learn better predictive functions when limited labeled data is ...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
Work at Professor Joan Bruna lab in Deep Learning.Although Deep Learning has successfully been appli...
Abstract. In many real-world applications there are usually abundant unlabeled data but the amount o...
One underlying assumption of the conventional multi-view learning algorithms is that all examples ca...
Semi-supervised learning is the class of machine learning that deals with the use of supervised and ...
An increasing number of multi-view data are being published by studies in several fields. This type ...
Multi-View Learning (MVL) is a framework which combines data from heteroge- neous sources in an effi...
© 2015 IEEE. It is often expensive and time consuming to collect labeled training samples in many re...
In the multi-view learning paradigm, the input variable is partitioned into two different views X1 a...
SemiBoost Mallapragada et al. (2009) is a boosting framework for semi-supervised learning, in which ...
Providing sufficient labeled training data in many application domains is a laborious and costly tas...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
Supervised classification consists in learning a predictive model using a set of labeled samples. It...
Real-world data is often multi-view, with each view representing a different perspective of the data...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
Work at Professor Joan Bruna lab in Deep Learning.Although Deep Learning has successfully been appli...
Abstract. In many real-world applications there are usually abundant unlabeled data but the amount o...
One underlying assumption of the conventional multi-view learning algorithms is that all examples ca...
Semi-supervised learning is the class of machine learning that deals with the use of supervised and ...
An increasing number of multi-view data are being published by studies in several fields. This type ...
Multi-View Learning (MVL) is a framework which combines data from heteroge- neous sources in an effi...
© 2015 IEEE. It is often expensive and time consuming to collect labeled training samples in many re...
In the multi-view learning paradigm, the input variable is partitioned into two different views X1 a...
SemiBoost Mallapragada et al. (2009) is a boosting framework for semi-supervised learning, in which ...
Providing sufficient labeled training data in many application domains is a laborious and costly tas...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
Supervised classification consists in learning a predictive model using a set of labeled samples. It...
Real-world data is often multi-view, with each view representing a different perspective of the data...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
Work at Professor Joan Bruna lab in Deep Learning.Although Deep Learning has successfully been appli...