基于低秩自回归张量补全的QoS预测

Hong Xia, Qingyi Dong, Yanping Chen, Jiahao Zheng, C. Gao, Zhongmin Wang
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摘要

随着网络业务和边缘计算的快速发展,服务质量(QoS)已成为验证网络性能的重要指标。根据QoS值向用户推荐高质量的业务。然而,QoS数据的高稀疏性是因为用户通常只在给定的时间调用某些服务。QoS数据缺失在各种服务推荐系统中非常普遍。因此,对QoS数据进行预测,能够准确地向用户推荐高质量的服务。针对QoS数据的预测问题,针对QoS数据的时间序列特征,构建了一个三阶数据张量“User-Service-Time”。将时间序列变化作为正则化项引入到三阶张量数据预测中。提出了一种基于低秩自回归张量补全(LATC)的QoS预测框架。特别是,构建三阶张量数据模型可以更好地捕捉数据结构的全局一致性。为了考虑数据的局部相关性,引入了时间正则化。最后,为了解决约束优化问题,我们使用通用的交替方向乘法器(ADMM)最小化变量和自回归参数的迭代优化,从而得到最终的预测结果。同时,我们在真实数据集WS-Dream上进行了大量的研究实验。实验表明,在不同程度的数据密度下,本文提出的QoS预测方法的QoS数据预测精度高于现有的预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QoS Prediction based on the Low-rank Autoregressive Tensor Completion
With the rapid development of network services and edge computing, Quality of Service (QoS) has become an important indicator to validate performances of a network. Recommend high-quality services to users based on QoS values. However, the high sparsity of QoS data is because users usually call certain services only at a given time. Missing QoS data is very common in various service recommendation systems. Therefore, it is essential to predict QoS data to accurately recommend high-quality services to users. For the QoS data prediction problem, we build a third-order data tensor “User-Service-Time” for the time series characteristics of QoS data. And introduce time-series variation as a regularization term into third-order tensor Data prediction. We propose a QoS prediction framework using Low-Rank Autoregressive Tensor Completion (LATC). In particular, constructing a third-order tensor data model can better capture the global consistency of the data structure. Time regularization is introduced to take into account the local correlation of the data. Finally, in order to solve the constrained optimization problem, we use the general Alternating Direction Method of Multipliers (ADMM) to minimize the iterative optimization of variables and autoregressive parameters to obtain the final prediction result. Meanwhile, we conduct extensive research experiments on the real dataset WS-Dream. Experiments show that the QoS data prediction accuracy of our proposed QoS prediction method is higher than that of existing prediction methods under different degrees of data density.
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