Scalings in which the graph Laplacian approaches a differential operator in the large graph limit are used to develop understanding of a number of algorithms for semi-supervised learning; in particular the extension, to this graph setting, of the probit algorithm, level set and kriging methods, are studied. Both optimization and Bayesian approaches are considered, based around a regularizing quadratic form found from an affine transformation of the Laplacian, raised to a, possibly fractional, exponent. Conditions on the parameters defining this quadratic form are identified under which well-defined limiting continuum analogues of the optimization and Bayesian semi-supervised learning problems may be found, thereby shedding light on the desi...
Most semi-supervised learning models propagate the labels over the Laplacian graph, where the graph ...
Semi-supervised learning gets estimated marginal distribution P-X with a large number of unlabeled e...
Transductive semi-supervised learning methods aim at automatically labeling large datasets by levera...
Scalings in which the graph Laplacian approaches a differential operator in the large graph limit ar...
Graph-based semi-supervised learning is the problem of propagating labels from a small number of lab...
Classification of high dimensional data finds wide-ranging applications. In many of these applicatio...
In recent years, the need for pattern recognition and data analysis has grown exponentially in vario...
We propose a data-efficient Gaussian process-based Bayesian approach to the semisupervised learning ...
We develop a generalized optimization framework for graph-based semi-supervised learning. The framew...
Graph-based semi-supervised regression (SSR) is the problem of estimating the value of a function on...
International audienceIn this article, a new approach is proposed to study the performance of graph-...
International audienceWe study a semi-supervised learning method based on the similarity graph and R...
We study the behavior of the popular Laplacian Regularization method for Semi-Supervised Learning at...
We study a semi-supervised learning method based on the similarity graph and RegularizedLaplacian. W...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
Most semi-supervised learning models propagate the labels over the Laplacian graph, where the graph ...
Semi-supervised learning gets estimated marginal distribution P-X with a large number of unlabeled e...
Transductive semi-supervised learning methods aim at automatically labeling large datasets by levera...
Scalings in which the graph Laplacian approaches a differential operator in the large graph limit ar...
Graph-based semi-supervised learning is the problem of propagating labels from a small number of lab...
Classification of high dimensional data finds wide-ranging applications. In many of these applicatio...
In recent years, the need for pattern recognition and data analysis has grown exponentially in vario...
We propose a data-efficient Gaussian process-based Bayesian approach to the semisupervised learning ...
We develop a generalized optimization framework for graph-based semi-supervised learning. The framew...
Graph-based semi-supervised regression (SSR) is the problem of estimating the value of a function on...
International audienceIn this article, a new approach is proposed to study the performance of graph-...
International audienceWe study a semi-supervised learning method based on the similarity graph and R...
We study the behavior of the popular Laplacian Regularization method for Semi-Supervised Learning at...
We study a semi-supervised learning method based on the similarity graph and RegularizedLaplacian. W...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
Most semi-supervised learning models propagate the labels over the Laplacian graph, where the graph ...
Semi-supervised learning gets estimated marginal distribution P-X with a large number of unlabeled e...
Transductive semi-supervised learning methods aim at automatically labeling large datasets by levera...