基于网络服务邻近的强化学习代理领域自适应

Kaushik Dey, Satheesh K. Perepu, P. Dasgupta, Abir Das
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引用次数: 1

摘要

无线网络中服务需求的动态性和进化性促使电信行业考虑使用智能自适应强化学习(RL)代理来控制不断增长的网络服务组合。随着未来6G网络的采用,预计会注入许多新型服务,有时这些服务将由网络外部的应用程序定义。为管理特定服务类型的需求而训练的RL代理可能不适合管理没有域适应的不同服务类型。我们提供了一种简单的启发式方法来评估新服务与现有服务之间的接近程度,并表明最接近服务的RL代理通过定义良好的域适应过程快速适应新的服务类型。我们的方法使经过训练的源策略能够适应动态变化的新情况,而无需重新训练新策略,从而实现显著的计算和成本效益。面对快速发展的服务类型,这样的领域适应技术可能很快为更通用的基于rl的服务管理提供基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Adaptation of Reinforcement Learning Agents based on Network Service Proximity
The dynamic and evolutionary nature of service requirements in wireless networks has motivated the telecom industry to consider intelligent self-adapting Reinforcement Learning (RL) agents for controlling the growing portfolio of network services. Infusion of many new types of services is anticipated with future adoption of 6G networks, and sometimes these services will be defined by applications that are external to the network. An RL agent trained for managing the needs of a specific service type may not be ideal for managing a different service type without domain adaptation. We provide a simple heuristic for evaluating a measure of proximity between a new service and existing services, and show that the RL agent of the most proximal service rapidly adapts to the new service type through a well defined process of domain adaptation. Our approach enables a trained source policy to adapt to new situations with changed dynamics without retraining a new policy, thereby achieving significant computing and cost-effectiveness. Such domain adaptation techniques may soon provide a foundation for more generalized RL-based service management under the face of rapidly evolving service types.
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