Semi-supervised learning methods constitute a category of machine learning methods which use labelled points together with unlabeled data to tune the classifier. The main idea of the semi-supervised methods is based on an assumption that the classification function should change smoothly over a similarity graph. In the first part of the thesis, we propose a generalized optimization approach for the graph-based semi-supervised learning which implies as particular cases the Standard Laplacian, Normalized Laplacian and PageRank based methods. Using random walk theory, we provide insights about the differences among the graph-based semi-supervised learning methods and give recommendations for the choice of the kernel parameters and labelled poi...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Many real life applications involve the ranking of objects instead of their classification. For exam...
Real-world data entities are often connected by meaningful relationships, forming large-scale networ...
Semi-supervised learning methods constitute a category of machine learning methods which use labelle...
Les méthodes d'apprentissage semi-supervisé constituent une catégorie de méthodes d'apprentissage au...
We develop a generalized optimization framework for graph-based semi-supervised learning. The framew...
Graph-Based Semi-Supervised Learning (G-SSL) techniques learn from both labelled and unla- belled da...
We develop a generalized optimization framework for graph-based semi-supervised learning. The framew...
Abstract. Semi-supervised learning methods constitute a category of machine learning methods which u...
International audienceWe study a semi-supervised learning method based on the similarity graph and R...
Ranking nodes in graphs is of much recent interest. Edges, via the graph Laplacian, are used to enco...
This work addresses graph-based semi-supervised classification and betweenness computation in large,...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
Semi-supervised node classification on graph-structured data has many applications such as fraud det...
We study a semi-supervised learning method based on the similarity graph and RegularizedLaplacian. W...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Many real life applications involve the ranking of objects instead of their classification. For exam...
Real-world data entities are often connected by meaningful relationships, forming large-scale networ...
Semi-supervised learning methods constitute a category of machine learning methods which use labelle...
Les méthodes d'apprentissage semi-supervisé constituent une catégorie de méthodes d'apprentissage au...
We develop a generalized optimization framework for graph-based semi-supervised learning. The framew...
Graph-Based Semi-Supervised Learning (G-SSL) techniques learn from both labelled and unla- belled da...
We develop a generalized optimization framework for graph-based semi-supervised learning. The framew...
Abstract. Semi-supervised learning methods constitute a category of machine learning methods which u...
International audienceWe study a semi-supervised learning method based on the similarity graph and R...
Ranking nodes in graphs is of much recent interest. Edges, via the graph Laplacian, are used to enco...
This work addresses graph-based semi-supervised classification and betweenness computation in large,...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
Semi-supervised node classification on graph-structured data has many applications such as fraud det...
We study a semi-supervised learning method based on the similarity graph and RegularizedLaplacian. W...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Many real life applications involve the ranking of objects instead of their classification. For exam...
Real-world data entities are often connected by meaningful relationships, forming large-scale networ...