计算机科学
奇异值分解
互联网
秩(图论)
订单(交换)
数据挖掘
人工智能
数学
组合数学
万维网
业务
财务
作者
Yuxuan Duan,Ling Chen,Jinjie Liu,Xinmin Yang
标识
DOI:10.3389/fams.2025.1587681
摘要
Accurate recovery of Internet traffic data can mitigate the adverse impact of incomplete data on network task processes. In this study, we propose a low-rank recovery model for incomplete Internet traffic data with a fourth-order tensor structure, incorporating spatio-temporal regularization while avoiding the use of d -th order T-SVD. Based on d -th order tensor product, we first establish the equivalence between d -th order tensor nuclear norm and the minimum sum of the squared Frobenius norms of two factor tensors under the unitary transformation domain. This equivalence allows us to leave aside the d -th order T-SVD, significantly reducing the computational complexity of solving the problem. In addition, we integrate the alternating direction method of multipliers (ADMM) to design an efficient and stable algorithm for precise model solving. Finally, we validate the proposed approach by simulating scenarios with random and structured missing data on two real-world Internet traffic datasets. Experimental results demonstrate that our method exhibits significant advantages in data recovery performance compared to existing methods.
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