Open World Learning Graph Convolution for Latency Estimation in Routing Networks
Accurate routing network status estimation is a key component in Software Defined Networking. However, existing deep-learning-based methods for modeling network routing are not able to extrapolate towards unseen feature distributions. Nor are they able to handle scaled and drifted network attributes...
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Zusammenfassung: | Accurate routing network status estimation is a key component in Software
Defined Networking. However, existing deep-learning-based methods for modeling
network routing are not able to extrapolate towards unseen feature
distributions. Nor are they able to handle scaled and drifted network
attributes in test sets that include open-world inputs. To deal with these
challenges, we propose a novel approach for modeling network routing, using
Graph Neural Networks. Our method can also be used for network-latency
estimation. Supported by a domain-knowledge-assisted graph formulation, our
model shares a stable performance across different network sizes and
configurations of routing networks, while at the same time being able to
extrapolate towards unseen sizes, configurations, and user behavior. We show
that our model outperforms most conventional deep-learning-based models, in
terms of prediction accuracy, computational resources, inference speed, as well
as ability to generalize towards open-world input. |
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DOI: | 10.48550/arxiv.2207.14643 |