This work addresses graph-based semi-supervised classification and betweenness computation in large, sparse, networks (several millions of nodes). The objective of semi-supervised classification is to assign a label to unlabeled nodes using the whole topology of the graph and the labeling at our disposal. Two approaches are developed to avoid explicit computation of pairwise proximity between the nodes of the graph, which would be impractical for graphs containing millions of nodes. The first approach directly computes, for each class, the sum of the similarities between the nodes to classify and the labeled nodes of the class, as suggested initially in [1,2]. Along this approach, two algorithms exploiting different state-of-the-art kernels...
Graphs (networks) are an important tool to model data in different domains.Real-world graphs are usu...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
This paper describes a novel technique, called D-walks, to tackle semi-supervised classification pro...
This paper describes a novel technique, called D-walks, to tackle semi-supervised classification pro...
Abstract—This paper introduces a novel, well-founded, be-tweenness measure, called the Bag-of-Paths ...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
Semi-supervised node classification on graph-structured data has many applications such as fraud det...
We address the problem of semi-supervised learning in relational networks, networks in which nodes a...
The volume of data generated by internet and social networks is increasing every day, and there is a...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
There has been substantial interest from both computer science and statistics in developing methods ...
We consider the problem of semi-supervised graphbased learning.Since in semi-supervised settings,the...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
Graphs (networks) are an important tool to model data in different domains.Real-world graphs are usu...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
This paper describes a novel technique, called D-walks, to tackle semi-supervised classification pro...
This paper describes a novel technique, called D-walks, to tackle semi-supervised classification pro...
Abstract—This paper introduces a novel, well-founded, be-tweenness measure, called the Bag-of-Paths ...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
Semi-supervised node classification on graph-structured data has many applications such as fraud det...
We address the problem of semi-supervised learning in relational networks, networks in which nodes a...
The volume of data generated by internet and social networks is increasing every day, and there is a...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
There has been substantial interest from both computer science and statistics in developing methods ...
We consider the problem of semi-supervised graphbased learning.Since in semi-supervised settings,the...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
Graphs (networks) are an important tool to model data in different domains.Real-world graphs are usu...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...