With the widespread adoption of temporal graphs to study fast evolving interactions in dynamic networks, attention is needed to provide graph metrics in time and at scale. In this paper, we introduce ATMoN, an open-source library developed to computationally offload graph processing engines and ease the communication overhead in dynamic networks over an unprecedented wealth of data. This is achieved, by efficiently adapting, in place and inexpensively, the temporal granularity at which graph metrics are computed based on runtime knowledge captured by a low-cost probabilistic learning model capable of approximating both the metric stream evolution and the volatility of the graph topology. After a thorough evaluation with real-world data from...
Generative models for network time series (also known as dynamic graphs) have tremendous potential i...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
Predicting new links in complex networks can have a large societal impact. In fact, many complex sys...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
The rapid increase in connected data from various sources such as the World Wide Web, social network...
Dynamic networks - spontaneous, self-organizing groups of devices - are a promising new computing pl...
AbstractA large number of topics in biology, medicine, neuroscience, psychology and sociology can be...
How can we augment a dynamic graph for improving the performance of dynamic graph neural networks? G...
Understanding the evolutionary patterns of real-world complex systems such as human interactions, bi...
The challenge in predicting future links over large scale networks (social networks) is not only mai...
In this paper, we describe an interactive visualization tool for representing the dynamics of graph ...
Recent years have seen a surge in research on dynamic graph representation learning, which aims to m...
International audienceGraph autoencoders (GAE), also known as graph embedding methods, learn latent ...
Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many...
Machine learning on graph data has gained significant interest because of its applicability to vario...
Generative models for network time series (also known as dynamic graphs) have tremendous potential i...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
Predicting new links in complex networks can have a large societal impact. In fact, many complex sys...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
The rapid increase in connected data from various sources such as the World Wide Web, social network...
Dynamic networks - spontaneous, self-organizing groups of devices - are a promising new computing pl...
AbstractA large number of topics in biology, medicine, neuroscience, psychology and sociology can be...
How can we augment a dynamic graph for improving the performance of dynamic graph neural networks? G...
Understanding the evolutionary patterns of real-world complex systems such as human interactions, bi...
The challenge in predicting future links over large scale networks (social networks) is not only mai...
In this paper, we describe an interactive visualization tool for representing the dynamics of graph ...
Recent years have seen a surge in research on dynamic graph representation learning, which aims to m...
International audienceGraph autoencoders (GAE), also known as graph embedding methods, learn latent ...
Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many...
Machine learning on graph data has gained significant interest because of its applicability to vario...
Generative models for network time series (also known as dynamic graphs) have tremendous potential i...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
Predicting new links in complex networks can have a large societal impact. In fact, many complex sys...