VStreamDRLS: Dynamic Graph Representation Learning with Self-Attention
for Enterprise Distributed Video Streaming Solutions
- URL: http://arxiv.org/abs/2011.05671v1
- Date: Wed, 11 Nov 2020 10:00:12 GMT
- Title: VStreamDRLS: Dynamic Graph Representation Learning with Self-Attention
for Enterprise Distributed Video Streaming Solutions
- Authors: Stefanos Antaris, Dimitrios Rafailidis
- Abstract summary: VStreamDRLS is a graph neural network architecture with a self-attention mechanism to capture the evolution of the graph structure of live video streaming events.
We evaluate our proposed approach on the link prediction task on two real-world datasets, generated by enterprise live video streaming events.
- Score: 4.568777157687959
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Live video streaming has become a mainstay as a standard communication
solution for several enterprises worldwide. To efficiently stream high-quality
live video content to a large amount of offices, companies employ distributed
video streaming solutions which rely on prior knowledge of the underlying
evolving enterprise network. However, such networks are highly complex and
dynamic. Hence, to optimally coordinate the live video distribution, the
available network capacity between viewers has to be accurately predicted. In
this paper we propose a graph representation learning technique on weighted and
dynamic graphs to predict the network capacity, that is the weights of
connections/links between viewers/nodes. We propose VStreamDRLS, a graph neural
network architecture with a self-attention mechanism to capture the evolution
of the graph structure of live video streaming events. VStreamDRLS employs the
graph convolutional network (GCN) model over the duration of a live video
streaming event and introduces a self-attention mechanism to evolve the GCN
parameters. In doing so, our model focuses on the GCN weights that are relevant
to the evolution of the graph and generate the node representation,
accordingly. We evaluate our proposed approach on the link prediction task on
two real-world datasets, generated by enterprise live video streaming events.
The duration of each event lasted an hour. The experimental results demonstrate
the effectiveness of VStreamDRLS when compared with state-of-the-art
strategies. Our evaluation datasets and implementation are publicly available
at https://github.com/stefanosantaris/vstreamdrls
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