QoE Inference and Improvement Without End-Host Control

Ashkan Nikravesh, Qi Alfred Chen, Scott Haseley, Xiao Zhu, Geoffrey Challen, Z. Morley Mao
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引用次数: 11

Abstract

Network quality-of-service (QoS) does not always translate to user quality-of-experience (QoE). Consequently, knowledge of user QoE is desirable in several scenarios that have traditionally operated on QoS information. Examples include traffic management by ISPs and resource allocation by the operating system. But today these systems lack ways to measure user QoE. To help address this problem, we propose offline generation of per-app models mapping app-independent QoS metrics to app-specific QoE metrics. This enables any entity that can observe an app's network traffic-including ISPs and access points-to infer the app's QoE. We describe how to generate such models for many diverse apps with significantly different QoE metrics. We generate models for common user interactions of 60 popular apps. We then demonstrate the utility of these models by implementing a QoE-aware traffic management framework and evaluate it on a WiFi access point. Our approach successfully improves QoE metrics that reflect user-perceived performance. First, we demonstrate that prioritizing traffic for latency-sensitive apps can improve responsiveness and video frame rate, by 46% and 115%, respectively. Second, we show that a novel QoE-aware bandwidth allocation scheme for bandwidth-intensive apps can improve average video bitrate for multiple users by up to 23%.
无终端主机控制的QoE推断与改进
网络服务质量(QoS)并不总是转化为用户体验质量(QoE)。因此,在传统上对QoS信息进行操作的几个场景中,需要了解用户QoE。例如由isp进行流量管理和由操作系统进行资源分配。但如今,这些系统缺乏衡量用户QoE的方法。为了帮助解决这个问题,我们建议离线生成每个应用模型,将独立于应用的QoS指标映射到特定于应用的QoE指标。这使得任何可以观察到应用程序网络流量的实体(包括isp和接入点)都可以推断应用程序的QoE。我们描述了如何为许多具有显著不同QoE指标的不同应用程序生成这样的模型。我们为60个流行应用程序的常见用户交互生成模型。然后,我们通过实现感知qos的流量管理框架并在WiFi接入点上对其进行评估来演示这些模型的效用。我们的方法成功地改善了反映用户感知性能的QoE指标。首先,我们证明了对延迟敏感的应用程序的流量进行优先排序可以提高响应性和视频帧率,分别提高46%和115%。其次,我们证明了一种新的带宽密集型应用的qos感知带宽分配方案可以将多个用户的平均视频比特率提高高达23%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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