Graph-based semi-supervised regression (SSR) is the problem of estimating the value of a function on a weighted graph from its values (labels) on a small subset of the vertices. This paper is concerned with the consistency of SSR in the context of classification, in the setting where the labels have small noise and the underlying graph weighting is consistent with well-clustered nodes. We present a Bayesian formulation of SSR in which the weighted graph defines a Gaussian prior, using a graph Laplacian, and the labeled data defines a likelihood. We analyze the rate of contraction of the posterior measure around the ground truth in terms of parameters that quantify the small label error and inherent clustering in the graph. We obtain bounds ...
A graph-based prior is proposed for parametric semi-supervised classi-fication. The prior utilizes b...
International audienceIn this article, a new approach is proposed to study the performance of graph-...
This paper proposes and develops a new graph-based semi-supervised learning method. Different from ...
Graph-based semi-supervised regression (SSR) is the problem of estimating the value of a function on...
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...
We propose a data-efficient Gaussian process-based Bayesian approach to the semisupervised learning ...
This dissertation is devoted to nonparametric Bayesian label prediction on a graph. Label prediction...
Recently, techniques for applying convolutional neural networks to graph-structured data have emerge...
Abstract—In this paper we present a graph-based semi-supervised method for solving regression proble...
Graph-based semi-supervised learning methods combine the graph structure and labeled data to classif...
Semi-supervised learning gets estimated marginal distribution P-X with a large number of unlabeled e...
A graph-based prior is proposed for parametric semi-supervised classi-fication. The prior utilizes b...
In recent years, the need for pattern recognition and data analysis has grown exponentially in vario...
We propose a simple taxonomy of probabilistic graphical models for the semi-supervised learning prob...
A graph-based prior is proposed for parametric semi-supervised classi-fication. The prior utilizes b...
International audienceIn this article, a new approach is proposed to study the performance of graph-...
This paper proposes and develops a new graph-based semi-supervised learning method. Different from ...
Graph-based semi-supervised regression (SSR) is the problem of estimating the value of a function on...
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...
We propose a data-efficient Gaussian process-based Bayesian approach to the semisupervised learning ...
This dissertation is devoted to nonparametric Bayesian label prediction on a graph. Label prediction...
Recently, techniques for applying convolutional neural networks to graph-structured data have emerge...
Abstract—In this paper we present a graph-based semi-supervised method for solving regression proble...
Graph-based semi-supervised learning methods combine the graph structure and labeled data to classif...
Semi-supervised learning gets estimated marginal distribution P-X with a large number of unlabeled e...
A graph-based prior is proposed for parametric semi-supervised classi-fication. The prior utilizes b...
In recent years, the need for pattern recognition and data analysis has grown exponentially in vario...
We propose a simple taxonomy of probabilistic graphical models for the semi-supervised learning prob...
A graph-based prior is proposed for parametric semi-supervised classi-fication. The prior utilizes b...
International audienceIn this article, a new approach is proposed to study the performance of graph-...
This paper proposes and develops a new graph-based semi-supervised learning method. Different from ...