A regularized version of Mixture Models is proposed to learn a principal graph from a distribution of $D$-dimensional data points. In the particular case of manifold learning for ridge detection, we assume that the underlying manifold can be modeled as a graph structure acting like a topological prior for the Gaussian clusters turning the problem into a maximum a posteriori estimation. Parameters of the model are iteratively estimated through an Expectation-Maximization procedure making the learning of the structure computationally efficient with guaranteed convergence for any graph prior in a polynomial time. We also embed in the formalism a natural way to make the algorithm robust to outliers of the pattern and heteroscedasticity of the m...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
© 2018, The Author(s). A graph-based classification method is proposed for both semi-supervised lear...
© 2017 IEEE. Many scientific datasets are of high dimension, and the analysis usually requires retai...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Revealing hidden geometry and topology in noisy data sets is a challenging task. An Elo-Elastic prin...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of...
Discovering low-dimensional (nonlinear) manifolds is an important problem in Machine Learning. In ma...
Revealing hidden geometry and topology in noisy data sets is a challenging task. Elastic principal g...
Principal curves and manifolds provide a framework to formulate manifold learning within a statistic...
Abstract — When the amount of labeled data are limited, semi-supervised learning can improve the lea...
In high-dimensional statistics, the manifold hypothesis presumes that the data lie near low-dimensio...
Gaussian Mixture Model (GMM) is one of the most popular data clustering methods which can be viewed ...
In recent years, probabilistic models have become fundamental techniques in machine learning. They a...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
© 2018, The Author(s). A graph-based classification method is proposed for both semi-supervised lear...
© 2017 IEEE. Many scientific datasets are of high dimension, and the analysis usually requires retai...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Revealing hidden geometry and topology in noisy data sets is a challenging task. An Elo-Elastic prin...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of...
Discovering low-dimensional (nonlinear) manifolds is an important problem in Machine Learning. In ma...
Revealing hidden geometry and topology in noisy data sets is a challenging task. Elastic principal g...
Principal curves and manifolds provide a framework to formulate manifold learning within a statistic...
Abstract — When the amount of labeled data are limited, semi-supervised learning can improve the lea...
In high-dimensional statistics, the manifold hypothesis presumes that the data lie near low-dimensio...
Gaussian Mixture Model (GMM) is one of the most popular data clustering methods which can be viewed ...
In recent years, probabilistic models have become fundamental techniques in machine learning. They a...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
© 2018, The Author(s). A graph-based classification method is proposed for both semi-supervised lear...
© 2017 IEEE. Many scientific datasets are of high dimension, and the analysis usually requires retai...