This paper proposes an autoregressive (AR) model for sequences of graphs, which generalises traditional AR models. A first novelty consists in formalising the AR model for a very general family of graphs, characterised by a variable topology, and attributes associated with nodes and edges. A graph neural network (GNN) is also proposed to learn the AR function associated with the graph-generating process (GGP), and subsequently predict the next graph in a sequence. The proposed method is compared with four baselines on synthetic GGPs, denoting a significantly better performance on all considered problems
The forecasting of multi-variate time processes through graph-based techniques has recently been add...
This thesis studies the introduction of a priori structure into the design of learning systems based...
Autoregressive networks can achieve promising performance in many sequence modeling tasks with short...
This paper proposes an autoregressive (AR) model for sequences of graphs, which generalises traditio...
Generating graphs is certainly a complex task. It requires to sample from a learned distribution of ...
Several real-world problems (e.g., in bioinformatics/proteomics, or in recognition of video sequence...
Several real-world problems (e.g., in bioinformatics/proteomics, or in recognition of video sequence...
This article introduces the GNAR package, which fits, predicts, and simulates from a powerful new cl...
An algorithm is presented for topology selection in graphical models of autoregressive Gaussian time...
In several applications the information is naturally represented by graphs. Traditional approaches c...
Graph-based learning and estimation are fundamental problems in various applications involving power...
In the current Big Data era, large amounts of data are collected from complex systems, such as senso...
Real-world graphs like social networks are often evolutionary over time, whose observations at diffe...
In the paper, we consider the problem of link prediction in time-evolving graphs. We assume that cer...
The graph neural network model Many underlying relationships among data in several areas of science ...
The forecasting of multi-variate time processes through graph-based techniques has recently been add...
This thesis studies the introduction of a priori structure into the design of learning systems based...
Autoregressive networks can achieve promising performance in many sequence modeling tasks with short...
This paper proposes an autoregressive (AR) model for sequences of graphs, which generalises traditio...
Generating graphs is certainly a complex task. It requires to sample from a learned distribution of ...
Several real-world problems (e.g., in bioinformatics/proteomics, or in recognition of video sequence...
Several real-world problems (e.g., in bioinformatics/proteomics, or in recognition of video sequence...
This article introduces the GNAR package, which fits, predicts, and simulates from a powerful new cl...
An algorithm is presented for topology selection in graphical models of autoregressive Gaussian time...
In several applications the information is naturally represented by graphs. Traditional approaches c...
Graph-based learning and estimation are fundamental problems in various applications involving power...
In the current Big Data era, large amounts of data are collected from complex systems, such as senso...
Real-world graphs like social networks are often evolutionary over time, whose observations at diffe...
In the paper, we consider the problem of link prediction in time-evolving graphs. We assume that cer...
The graph neural network model Many underlying relationships among data in several areas of science ...
The forecasting of multi-variate time processes through graph-based techniques has recently been add...
This thesis studies the introduction of a priori structure into the design of learning systems based...
Autoregressive networks can achieve promising performance in many sequence modeling tasks with short...