The efficient estimation of an approximate model order is very important for real applications with multi-dimensional data if the observed low-rank data is corrupted by additive noise. In this paper, we present a novel robust method for model order estimation of noise-corrupted multi-dimensional low-rank data based on the LineAr Regression of Global Eigenvalues (LaRGE). The LaRGE method uses the multi-linear singular values obtained from the HOSVD of the measurement tensor to construct global eigenvalues. In contrast to the Modified Exponential Test (EFT) that also exploits the approximate exponential profile of the noise eigenvalues, LaRGE does not require the calculation of the probability of false alarm. Moreover, LaRGE achieves a significantly improved performance in comparison with popular state-of-the-art methods. It is well suited for the analysis of biomedical data. The excellent performance of the LaRGE method is illustrated via simulations and results obtained from EEG recordings.
翻译:如果观测到的低位数据被添加噪音破坏,则对近似模型序列的有效估计对于多维数据的实际应用非常重要。在本文中,我们根据全球电子价值(LARGE)一线回归,提出了一种新型强健的方法,用以对噪音-波纹多维低位数据进行模型评估。LARGE方法使用从HOSVD测量强量中HOSVD获得的多线单数值来构建全球电子价值。与同时利用噪音电子价值(EEFT)近似指数特征的变异实验(EFT)相比,LARGE并不要求计算虚假警报的概率。此外,LARGE与流行的先进方法相比,其性能显著提高。它非常适合于生物医学数据分析。LARGE方法的出色性能通过模拟和EEG的录音结果加以说明。