剖析因特网——流量、用户和应用

B. Ghita, Taimur Bakhshi
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引用次数: 0

摘要

近年来,监测网络流量的工作显著增加,以便了解用户行为并提供更好的服务。本文将回顾这些工作,重点介绍流量分析带来的好处,特别是在提供更好的用户体验和更高质量的服务方面。讨论将集中在三个标题上:基于流量统计分析识别和分析应用程序,基于网络交互识别用户和异常检测,以及在异构用户环境中提供公平性。在加密和隧道环境中,分析应用程序是一项具有挑战性的任务,但可以根据每个应用程序(从电子邮件到视频流)的需求更好地提供网络资源。识别用户可能会引起隐私方面的担忧,但主要目的不是将他们单独挑出来,而是在总体层面上满足他们的需求,无论是在处理重大变化方面,还是在检测到异常情况时潜在地充当第一道防线。最后,虽然全球用户的行为可能看起来相似,但在需求、使用和每个用户的期望方面存在显著差异;在这样一个多样化的环境中确保公平,需要确认用户需求,并在提供和需求方面适应不同的环境。该报告将借鉴近年来在上述领域进行的一系列研究,包括研究界和普利茅斯大学的研究,并讨论这些发现如何影响更广泛的用户群体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Internet of Profiling - Traffic, Users and Applications
Recent years have witnessed a significant increase in monitoring network traffic in order to profile user behaviour and to provide better service. This paper will provide a review of these efforts, highlighting the benefits brought by traffic profiling, particularly in relation to providing a better user experience and higher quality of service. The discussion will focus on three headings: identifying and profiling applications based on statistical analysis of traffic, identifying users and anomaly detection based on network interaction, and providing fairness in a heterogeneous user environment. Profiling applications is a challenging task in the context of encryption and tunnelling, but allows better provision of network resources, in line with the needs of each application, from email to video streaming. Identifying users may raise concerns in terms of privacy, but the primary aim is not to single them out but to cater for their needs at an aggregate level, both in terms of dealing with significant variations as well as potentially acting as a first line of defence when anomalies are detected. Finally, while globally the behaviour of users may appear similar, there is significant variation in terms of the demand, usage, and expectations of each user; ensuring fairness in such a diverse environment requires acknowledging the user requirements and accommodating them against a heterogeneous environment in terms of provision and demand. The presentation will draw from a number of research studies undertaken over the recent years in the above areas, both across the research community as well as at Plymouth University, and discuss how the findings impact on the wider user community.
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