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CANDECOMP/PARAFAC model order selection based on Reconstruction Error in the presence of Kronecker structured colored noise

机译:在存在Kronecker结构色噪声的情况下基于重构误差的CANDECOMP / PARAFAC模型顺序选择

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Canonical Decomposition (CANDECOMP) also known as Parallel Factor Analysis (PARAFAC) is a wellknown multiway model in high-dimensional data modeling. Approaches that use CANDECOMP/PARAFAC for parametric modeling of a noisy observation require an estimate of the number of signal components (rank) of the data as well. In real applications, the true model of data is unknown and model order selection is a challenging step of these algorithms. In addition, considering noise samples with correlation in different dimensions makes the model order selection even more challenging. Model order selection methods generally minimize a criterion to find the optimum model order. In this paper, we propose using the Reconstruction error, which is the error between the reconstructed data and the unavailable noiseless data, for a range of possible ranks, and use an estimate of this error as the desired criterion for order selection. Furthermore, we propose using the CORCONDIA measure for determining the range of possible model orders. In the presence of the colored noise with Kronecker structure, our proposed algorithm performs the multidimensional prewhitening prior to the model order selection. In addition, our method is able to estimate the noise covariance through an iterative algorithm when no prior information about the noise covariance is available. Simulation results show that the proposed method can be effectively exploited for robustly detecting the true rank of the observed tensor even in mid and low SNRs (i.e. 0-10 dB). It also has an advantage over the state-of-the-art methods, such as different variants of CORCONDIA, by having a better Probability of Detection (PoD) with almost no extra computational overhead after the CANDECOMP/PARAFAC decomposition. Crown Copyright (C) 2015 Published by Elsevier Inc. All rights reserved.
机译:规范分解(CANDECOMP)也称为并行因子分析(PARAFAC),是高维数据建模中众所周知的多向模型。使用CANDECOMP / PARAFAC进行噪声观测的参数化建模的方法也需要估计数据的信号分量数量(等级)。在实际应用中,真正的数据模型是未知的,而模型顺序的选择是这些算法的一个挑战性步骤。另外,考虑在不同维度上具有相关性的噪声样本会使模型阶数的选择更具挑战性。模型顺序选择方法通常会最小化找到最佳模型顺序的准则。在本文中,我们建议使用Reconstruction误差(即重构数据与不可用的无噪声数据之间的误差)用于一定范围的等级,并将该误差的估计值用作订单选择的期望标准。此外,我们建议使用CORCONDIA度量来确定可能的模型订单的范围。在存在具有Kronecker结构的彩色噪声的情况下,我们提出的算法在选择模型阶数之前执行多维预白化。另外,当没有关于噪声协方差的先验信息可用时,我们的方法能够通过迭代算法估计噪声协方差。仿真结果表明,即使在中低SNR(即0-10 dB)下,所提出的方法也可以有效地用于鲁棒地检测所观察到的张量的真实等级。它具有优于最新方法(例如CORCONDIA的不同变体)的优势,因为它具有更好的检测概率(PoD),并且在CANDECOMP / PARAFAC分解后几乎没有额外的计算开销。 Crown版权所有(C)2015,Elsevier Inc.保留所有权利。

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