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Feature Engineering for Deep Reinforcement Learning Based Routing - 2019

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Feature Engineering for Deep Reinforcement Learning Based Routing | S-Logix

Research Area:  Machine Learning

Abstract:

Recent advances in Deep Reinforcement Learning (DRL) techniques are providing a dramatic improvement in decision-making and automated control problems. As a result, we are witnessing a growing number of research works that are proposing ways of applying DRL techniques to network-related problems such as routing. However, such proposals failed to achieve good results, often under-performing traditional routing techniques. We argue that successfully applying DRL-based techniques to networking requires finding good representations of the network parameters: feature engineering. DRL agents need to represent both the state (e.g., link utilization) and the action space (e.g., changes to the routing policy). In this paper, we show that existing approaches use straightforward representations that lead to poor performance. We propose a novel representation of the state and action that outperforms existing ones and that is flexible enough to be applied to many networking use-cases. We test our representation in two different scenarios: (i) routing in optical transport networks and (ii) QoS-aware routing in IP networks. Our results show that the DRL agent achieves significantly better performance compared to existing state/action representations.

Keywords:  
Routing
Proposals
Reinforcement learning
Optical fiber networks
Quality of service
IP networks
Network topology

Author(s) Name:  Jose Suarez-Varela; Albert Mestres; Junlin Yu; Li Kuang

Journal name:  IEEE International Conference on Communications

Conferrence name:  

Publisher name:  IEEE

DOI:  10.1109/ICC.2019.8761276

Volume Information: