计算机科学
先验概率
插补(统计学)
互联网
数据建模
分解
人工智能
数据挖掘
贝叶斯概率
机器学习
缺少数据
万维网
数据库
生态学
生物
作者
Wenwu Gong,Zhejun Huang,Lili Yang
标识
DOI:10.1109/itsc57777.2023.10422071
摘要
Low-rank tensor methods and their relaxation forms have performed excellently in tensor completion problems, including internet traffic data imputation. However, most are based on the unfolding matrix's nuclear norm, which inevitably destroys the traffic tensor structure and significantly suffers from computation burden. Also, few consider the intrinsic spatiotemporal features, especially for the underlying spatial similarity. This paper proposes a novel low-rank and spatiotemporal priors enhanced Tucker decomposition (called LSPTD) for internet traffic data imputation. LSPTD model exploits the spatial similarity using factor graph embedding and characterizes the temporal correlation using the Toeplitz matrix. Two easily implementable algorithms and the closed-form updating rules are designed to solve the LSPTD model. Numerical experiments on the Abilene and GÉANT datasets demonstrate that our proposed model is superior to the other imputation methods in terms of NMAE and computation time.
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