Abstract(#br)Hypergraph learning has been widely applied to various learning tasks. To ensure learning accuracy, it is essential to construct an informative hypergraph structure that effectively modulates data correlations. However, existing hypergraph construction methods essentially resort to an unsupervised learning paradigm, which ignores supervisory information, such as pairwise links/non-links. In this article, to exploit the supervisory information, we propose a novel link-aware hypergraph learning model, which modulates high-order correlations of data samples in a semi-supervised manner. To construct a hypergraph, a coefficients matrix of the entire dataset is first calculated by solving a linear regression problem. Then, pairwise l...
This paper addresses the hyperlink prediction problem in hypernetworks. Different from the tradition...
This thesis contributes to the methodology and application of network theory, the study of graphs as...
Link prediction is an important task that has wide applications in various domains. However, the maj...
Social linking prediction is one of the most fundamental problems in online social networks and has ...
© 1992-2012 IEEE. Graph model is emerging as a very effective tool for learning the complex structur...
As a natural extension of link prediction on graphs, hyperlink prediction aims for the inference of ...
In many applications, relationships among objects of interest are more complex than pairwise. Simply...
Hypergraph is a powerful representation in several computer vision, machine learning and pattern rec...
In this paper, we present a hypergraph neural networks (HGNN) framework for data representation lear...
Clustering is a fundamental problem in network analysis that finds closely connected groups of nodes...
Recent years have witnessed a surge of interest in graph-based transductive image classification. Ex...
Recent empirical evidence has shown that in many real-world systems, successfully represented as net...
Recently there has been considerable interest in learning with higher order relations (i.e., three-w...
This paper is about using multiple types of information for classification of networked data in a se...
Network data has arisen as one of the most common forms of information collection. This is due to th...
This paper addresses the hyperlink prediction problem in hypernetworks. Different from the tradition...
This thesis contributes to the methodology and application of network theory, the study of graphs as...
Link prediction is an important task that has wide applications in various domains. However, the maj...
Social linking prediction is one of the most fundamental problems in online social networks and has ...
© 1992-2012 IEEE. Graph model is emerging as a very effective tool for learning the complex structur...
As a natural extension of link prediction on graphs, hyperlink prediction aims for the inference of ...
In many applications, relationships among objects of interest are more complex than pairwise. Simply...
Hypergraph is a powerful representation in several computer vision, machine learning and pattern rec...
In this paper, we present a hypergraph neural networks (HGNN) framework for data representation lear...
Clustering is a fundamental problem in network analysis that finds closely connected groups of nodes...
Recent years have witnessed a surge of interest in graph-based transductive image classification. Ex...
Recent empirical evidence has shown that in many real-world systems, successfully represented as net...
Recently there has been considerable interest in learning with higher order relations (i.e., three-w...
This paper is about using multiple types of information for classification of networked data in a se...
Network data has arisen as one of the most common forms of information collection. This is due to th...
This paper addresses the hyperlink prediction problem in hypernetworks. Different from the tradition...
This thesis contributes to the methodology and application of network theory, the study of graphs as...
Link prediction is an important task that has wide applications in various domains. However, the maj...