International audiencePartially supervised learning extends both supervised and unsu-pervised learning, by considering situations in which only partial information about the response variable is available. In this paper, we consider partially supervised classification and we assume the learning instances to be labeled by Dempster-Shafer mass functions, called soft labels. Linear discriminant analysis and logistic regression are considered as special cases of generative and discriminative parametric models. We show that the evidential EM algorithm can be particularized to fit the parameters in each of these models. We describe experimental results with simulated data sets as well as with two real applications: K-complex detection in sleep EE...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We use partial class memberships in soft classification to model uncertain labelling and mixtures of...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...
International audienceIn this paper, a proposition is made to learn the parameters of evidential con...
International audienceThis paper addresses the problem of Hidden Markov Models (HMM) training and in...
The paper categorizes and reviews the state-of-the-art approaches to the partially supervised learni...
Nowadays, large real-world data sets are collected in science, engineering, health care and other fi...
We consider the problem of semi-supervised graph-based learning. Since in semi-supervised settings, ...
Partial label learning aims to induce a multi-class classifier from training examples where each of ...
Some learning techniques for classification tasks work indirectly, by first trying to fit a full pro...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...
In this paper we propose Softboost, a novel Boosting al-gorithm which combines the merits of transdu...
International audienceThis paper investigates a new approach for training discriminant classifiers w...
Machine learning is used daily in areas such as security, medical care, and financial systems. Failu...
A novel approach to semi-supervised learning for classical Fisher linear discriminant analysis is pr...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We use partial class memberships in soft classification to model uncertain labelling and mixtures of...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...
International audienceIn this paper, a proposition is made to learn the parameters of evidential con...
International audienceThis paper addresses the problem of Hidden Markov Models (HMM) training and in...
The paper categorizes and reviews the state-of-the-art approaches to the partially supervised learni...
Nowadays, large real-world data sets are collected in science, engineering, health care and other fi...
We consider the problem of semi-supervised graph-based learning. Since in semi-supervised settings, ...
Partial label learning aims to induce a multi-class classifier from training examples where each of ...
Some learning techniques for classification tasks work indirectly, by first trying to fit a full pro...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...
In this paper we propose Softboost, a novel Boosting al-gorithm which combines the merits of transdu...
International audienceThis paper investigates a new approach for training discriminant classifiers w...
Machine learning is used daily in areas such as security, medical care, and financial systems. Failu...
A novel approach to semi-supervised learning for classical Fisher linear discriminant analysis is pr...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We use partial class memberships in soft classification to model uncertain labelling and mixtures of...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...