International audienceSubtype Discovery consists in finding interpretable and consistent subparts of a dataset, which are also relevant to a certain supervised task. From a mathematical point of view, this can be defined as a clustering task driven by supervised learning in order to uncover subgroups in line with the supervised prediction. In this paper, we propose a general Expectation-Maximization ensemble framework entitled UCSL (Unsupervised Clustering driven by Supervised Learning). Our method is generic, it can integrate any clustering method and can be driven by both binary classification and regression. We propose to construct a non-linear model by merging multiple linear estimators, one per cluster. Each hyperplane is estimated so ...
This paper presents an assembling unsupervised learning framework that adopts the information coming...
Unsupervised clustering can be significantly improved using supervision in the form of pairwise cons...
Decision support systems with machine learning can help organizations improve operations and lower c...
International audienceSubtype Discovery consists in finding interpretable and consistent subparts of...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
Discrimination is a supervised problem in statistics and machine learning that begins with data from...
In this article an introduction on unsupervised cluster analysis is provided. Clustering is the orga...
Deterministic clustering methods at different levels of granularity such as within classes, at the c...
The thesis tackles the problem of uncovering hidden structures in high-dimensional data in the prese...
In the framework of support vector machine (SVM) classifiers, an unsupervised analysis of empirical ...
Abstract State-of-the-art clustering algorithms provide little insight into the ratio...
This paper presents cluster-based ensemble classifier – an approach toward generating ensemble of cl...
One of the common problems with clustering is that the generated clusters often do not match user ex...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
High-dimensional data are becoming increasingly pervasive, and bring new problems and opportunities ...
This paper presents an assembling unsupervised learning framework that adopts the information coming...
Unsupervised clustering can be significantly improved using supervision in the form of pairwise cons...
Decision support systems with machine learning can help organizations improve operations and lower c...
International audienceSubtype Discovery consists in finding interpretable and consistent subparts of...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
Discrimination is a supervised problem in statistics and machine learning that begins with data from...
In this article an introduction on unsupervised cluster analysis is provided. Clustering is the orga...
Deterministic clustering methods at different levels of granularity such as within classes, at the c...
The thesis tackles the problem of uncovering hidden structures in high-dimensional data in the prese...
In the framework of support vector machine (SVM) classifiers, an unsupervised analysis of empirical ...
Abstract State-of-the-art clustering algorithms provide little insight into the ratio...
This paper presents cluster-based ensemble classifier – an approach toward generating ensemble of cl...
One of the common problems with clustering is that the generated clusters often do not match user ex...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
High-dimensional data are becoming increasingly pervasive, and bring new problems and opportunities ...
This paper presents an assembling unsupervised learning framework that adopts the information coming...
Unsupervised clustering can be significantly improved using supervision in the form of pairwise cons...
Decision support systems with machine learning can help organizations improve operations and lower c...