The Learning and Prediction of Network Traffic: A Revisiting to Sparse Representation

Yitu Wang, T. Nakachi
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引用次数: 3

Abstract

With accurate network traffic prediction, future communication networks can realize self-management and enjoy intelligent and efficient automation. Benefiting from discovering the sparse property of network traffic in temporal domain, it becomes possible to develop compact algorithms with high accuracy and low computational complexity. For this purpose, we establish an analytical framework for network traffic prediction by extending traditional sparse representation to predictive sparse representation, and try to take the full advantage of such sparsity. Specifically, 1). To equip sparse representation with predictive capability, we divide the historical traffic records into two sets, and jointly train the representative/predictive dictionaries, such that the query point is embedded in terms of a sparse combination of dictionary atoms, and jointly coded with its T+1 time slot behind counterpart. 2). To estimate the sparse code of the query point, we only have to decompose its counterpart into a sparse combination of the representative dictionary atoms by adopting iterative projection method, which provides extra flexibility and adaptability in determining the dependence range. After this, the prediction is performed based on the predictive dictionary. 3). To promote the capability of capturing the rapidly changing traffic, we slightly modify the sparse representation-based prediction by adopting Lyapunov optimization, and minimize the time averaged prediction error. Finally, our proposed algorithm is evaluated by simulation to show its superiority over the conventional schemes.
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网络流量的学习与预测:再论稀疏表示
通过对网络流量的准确预测,未来的通信网络可以实现自我管理,实现智能化、高效率的自动化。通过发现网络流量在时域的稀疏特性,可以开发出精度高、计算复杂度低的紧凑算法。为此,我们将传统的稀疏表示扩展为预测稀疏表示,建立了网络流量预测的分析框架,并试图充分利用这种稀疏性。具体而言,1).为了使稀疏表示具有预测能力,我们将历史流量记录分成两组,并联合训练代表性/预测字典,使查询点以字典原子的稀疏组合嵌入,并与对应的T+1时隙联合编码。2).为了估计查询点的稀疏代码,我们只需要采用迭代投影法将查询点的对应项分解为具有代表性的字典原子的稀疏组合,这在确定依赖范围方面提供了额外的灵活性和适应性。在此之后,基于预测字典执行预测。3)为了提高捕获快速变化的流量的能力,我们采用Lyapunov优化对基于稀疏表示的预测进行微调,使时间平均预测误差最小化。最后,通过仿真验证了该算法的优越性。
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