<p>In this paper, we argue for representing networks as a bag of triangular motifs, particularly for important network problems that current model-based approaches handle poorly due to computational bottlenecks incurred by using edge representations. Such approaches require both 1-edges and 0-edges (missing edges) to be provided as input, and as a consequence, approximate inference algorithms for these models usually require Ω(N<sup>2</sup> ) time per iteration, precluding their application to larger real-world networks. In contrast, triangular modeling requires less computation, while providing equivalent or better inference quality. A triangular motif is a vertex triple containing 2 or 3 edges, and the number of such motifs is Θ(Σ<sub>i</...
In network analysis, community detection and network embedding are two important topics. Community d...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
One of the main characteristics of real-world networks is their large clustering. Clustering is one ...
Network based inference is almost ubiquitous in modern machine learning applications. In this disser...
Network embedding aims to learn the low-dimensional representations of vertexes in a network, while ...
Network embedding, which aims to learn the low-dimensional representations of vertices, is an import...
We develop a full theoretical approach to clustering in complex networks. A key concept is introduce...
Networks arise in a huge variety of real data scenarios: starting from social networks like Facebook...
Today’s social and internet networks contain millions or even billions of nodes, and copious amounts...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
Networks are useful when modeling interactions in real-world systems based on relational data. Since...
In this thesis, the focus is on data that has network structure and on problems that benefit from th...
This thesis focuses on a new graphon-based approach for fitting models to large networks and establi...
In network analysis, community detection and network embedding are two important topics. Community d...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
One of the main characteristics of real-world networks is their large clustering. Clustering is one ...
Network based inference is almost ubiquitous in modern machine learning applications. In this disser...
Network embedding aims to learn the low-dimensional representations of vertexes in a network, while ...
Network embedding, which aims to learn the low-dimensional representations of vertices, is an import...
We develop a full theoretical approach to clustering in complex networks. A key concept is introduce...
Networks arise in a huge variety of real data scenarios: starting from social networks like Facebook...
Today’s social and internet networks contain millions or even billions of nodes, and copious amounts...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
Networks are useful when modeling interactions in real-world systems based on relational data. Since...
In this thesis, the focus is on data that has network structure and on problems that benefit from th...
This thesis focuses on a new graphon-based approach for fitting models to large networks and establi...
In network analysis, community detection and network embedding are two important topics. Community d...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...
Many real-world networks tend to be very dense. Particular examples of interest arise in the constru...