利用社会网络来预测需求和估计通信网络管理的可用资源

A. Vashist, S. Mau, A. Poylisher, R. Chadha, Abhrajit Ghosh
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引用次数: 15

摘要

计算机网络的存在为社会网络提供了一种交流媒介,来自社会网络的信息可以帮助估计他们的交流需求。尽管如此,目前的网络管理忽视了来自社交网络的信息。另一方面,由于其有限和波动的带宽,移动自组织网络具有固有的资源约束。随着流量负载的增加,我们需要决定何时以及如何限制流量,以最大限度地提高用户满意度,同时保持网络运行。做出这些决策的最先进技术是基于网络测量,因此通过减少允许进入网络的流量来采用反应性方法来恶化网络状态。然而,更好的方法是在拥塞发生之前避免拥塞,通过(a)监测网络的早期充血性相变信号,以及(b)使用来自覆盖的社交网络的用户和应用程序信息预测未来的网络流量。我们使用机器学习方法来预测在不将网络过渡到充血性阶段的情况下可以接受的流量负载数量,并预测近期流量负载的来源和目的地。当将这两个预测输入到允许控制组件中时,可以确保更好地管理受限的网络资源,同时最大限度地提高用户体验的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging social network for predicting demand and estimating available resources for communication network management
Computer networks exist to provide a communication medium for social networks, and information from social networks can help in estimating their communication needs. Despite this, current network management ignores the information from social networks. On the other hand, due to their limited and fluctuating bandwidth, mobile ad hoc networks are inherently resource-constrained. As traffic load increases, we need to decide when and how to throttle the traffic to maximize user satisfaction while keeping the network operational. The state-of-the-art for making these decisions is based on network measurements and so employs a reactive approach to deteriorating network state by reducing the amount of traffic admitted into the network. However, a better approach is to avoid congestion before it occurs, by (a) monitoring the network for early onset signals of congestive phase transition, and (b) predicting future network traffic using user and application information from the overlaying social network. We use machine learning methods to predict the amount of traffic load that can be admitted without transitioning the network to a congestive phase and to predict the source and destination of near future traffic load. These two predictions when fed into an admission control component ensure better management of constrained network resources while maximizing the quality of user experience.
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