Deep Reinforcement Learning with Importance Weighted A3C for QoE enhancement in Video Delivery Services

Mandan Naresh, Paresh Saxena, Manik Gupta
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引用次数: 1

Abstract

Adaptive bitrate (ABR) algorithms are used to adapt the video bitrate based on the network conditions to improve the overall video quality of experience (QoE). Recently, reinforcement learning (RL) and asynchronous advantage actor-critic (A3C) methods have been used to generate adaptive bit rate algorithms and they have been shown to improve the overall QoE as compared to fixed rule ABR algorithms. However, a common issue in the A3C methods is the lag between behaviour policy and target policy. As a result, the behaviour and the target policies are no longer synchronized which results in suboptimal updates. In this work, we present ALISA: An Actor-Learner Architecture with Importance Sampling for efficient learning in ABR algorithms. ALISA incorporates importance sampling weights to give more weightage to relevant experience to address the lag issues with the existing A3C methods. We present the design and implementation of ALISA, and compare its performance to state-of-the-art video rate adaptation algorithms including vanilla A3C implemented in the Pensieve framework and other fixed-rule schedulers like BB, BOLA, and RB. Our results show that ALISA improves average QoE by up to 25%-48% higher average QoE than Pensieve, and even more when compared to fixed-rule schedulers.
基于重要性加权A3C的视频交付服务QoE增强深度强化学习
采用自适应比特率(ABR)算法,根据网络条件调整视频比特率,以提高整体视频体验质量。最近,强化学习(RL)和异步优势actor-critic (A3C)方法已被用于生成自适应比特率算法,并且与固定规则ABR算法相比,它们已被证明可以提高总体QoE。然而,A3C方法中的一个常见问题是行为策略和目标策略之间的滞后。结果,行为和目标策略不再同步,从而导致次优更新。在这项工作中,我们提出了ALISA:一个具有重要性采样的参与者-学习者架构,用于ABR算法的有效学习。ALISA引入了重要采样权,赋予相关经验更多权重,以解决现有A3C方法的滞后问题。我们介绍了ALISA的设计和实现,并将其性能与最先进的视频速率自适应算法(包括Pensieve框架中实现的vanilla A3C)和其他固定规则调度程序(如BB、BOLA和RB)进行了比较。我们的结果表明,ALISA的平均QoE比Pensieve提高了25%-48%,与固定规则调度器相比甚至更高。
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