Most currently used tensor regression models for high-dimensional data are based on Tucker decomposition, which has good properties but loses its efficiency in compressing tensors very quickly as the order of tensors increases, say greater than four or five. However, for the simplest tensor autoregression in handling time series data, its coefficient tensor already has the order of six. This paper revises a newly proposed tensor train (TT) decomposition and then applies it to tensor regression such that a nice statistical interpretation can be obtained. The new tensor regression can well match the data with hierarchical structures, and it even can lead to a better interpretation for the data with factorial structures, which are supposed to be better fitted by models with Tucker decomposition. More importantly, the new tensor regression can be easily applied to the case with higher order tensors since TT decomposition can compress the coefficient tensors much more efficiently. The methodology is also extended to tensor autoregression for time series data, and nonasymptotic properties are derived for the ordinary least squares estimations of both tensor regression and autoregression. A new algorithm is introduced to search for estimators, and its theoretical justification is also discussed. Theoretical and computational properties of the proposed methodology are verified by simulation studies, and the advantages over existing methods are illustrated by two real examples.
翻译:目前使用的大多数高度数据弹性回归模型都是基于塔克分解的,塔克分解具有良好的特性,但随着高压结构的顺序增加,在压缩高压时速结构方面却丧失了效率。然而,对于处理时间序列数据的简单高压自动回归,其系数强已经达到六分之分。本文件对新提议的高压列(TT)分解进行了修订,然后将其应用于高压回归,这样就可以获得良好的统计解释。新的高压回归可以很好地将数据与等级结构相匹配,甚至可以导致对带有保理结构的数据进行更好的解释,而这种结构应该由塔克分解的模型加以更好的配置。更重要的是,新的高压回化可以很容易地适用于处理高压的情况,因为TT分解分解可以更高效地压缩高压电压列列(TTT)分解,然后将其应用到高压回归,这样就可以获得一个良好的统计方法。新的回溯性能特性可以用来对高压回归和自制结构结构结构结构结构进行普通的最小的估算,而这种结构结构结构结构结构结构结构结构结构结构结构结构结构的模型也是通过两个示范性研究而加以验证的。新的算法是用来研究的,通过模拟和模拟分析的推而加以研究的,通过两个推论的推而加以推而加以验证的。