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Multilinear Subspace Regression: An Orthogonal Tensor Decomposition Approach

机译:多线性子空间回归:正交张量分解方法

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A multilinear subspace regression model based on so called latent variable decomposition is introduced. Unlike standard regression methods which typically employ matrix (2D) data representations followed by vector subspace transformations, the proposed approach uses tensor subspace transformations to model common latent variables across both the independent and dependent data. The proposed approach aims to maximize the correlation between the so derived latent variables and is shown to be suitable for the prediction of multidimensional dependent data from multidimensional independent data, where for the estimation of the latent variables we introduce an algorithm based on Multilinear Singular Value Decomposition (MSVD) on a specially defined cross-covariance tensor. It is next shown that in this way we are also able to unify the existing Partial Least Squares (PLS) and N-way PLS regression algorithms within the same framework. Simulations on benchmark synthetic data confirm the advantages of the proposed approach, in terms of its predictive ability and robustness, especially for small sample sizes. The potential of the proposed technique is further illustrated on a real world task of the decoding of human intracranial electrocorticogram (ECoG) from a simultaneously recorded scalp electroencephalograph (EEG).
机译:介绍了一种基于潜在变量分解的多线性子空间回归模型。与通常使用矩阵(2D)数据表示形式然后进行向量子空间变换的标准回归方法不同,所提出的方法使用张量子空间变换来对独立数据和从属数据上的公共潜在变量进行建模。所提出的方法旨在最大化这样得出的潜在变量之间的相关性,并被证明适合于从多维独立数据中预测多维相关数据,其中对于潜在变量的估计,我们引入了一种基于多线性奇异值分解的算法(MSVD)在特别定义的互协方差张量上。接下来表明,通过这种方式,我们还可以统一同一框架内现有的偏最小二乘(PLS)和N方向PLS回归算法。在基准合成数据上的仿真证实了该方法的优势,就其预测能力和鲁棒性而言,尤其是对于小样本量。在从同时记录的头皮脑电图仪(EEG)解码人颅内脑电图(ECoG)的现实世界任务中,进一步说明了所提出技术的潜力。

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