With the rise of the "big data" phenomenon in recent years, data is coming in many different complex forms. One example of this is multi-way data that come in the form of higher-order tensors such as coloured images and movie clips. Although there has been a recent rise in models for looking at the simple case of three-way data in the form of matrices, there is a relative paucity of higher-order tensor variate methods. The most common tensor distribution in the literature is the tensor variate normal distribution; however, its use can be problematic if the data exhibit skewness or outliers. Herein, we develop four skewed tensor variate distributions which to our knowledge are the first skewed tensor distributions to be proposed in the literature, and are able to parameterize both skewness and tail weight. Properties and parameter estimation are discussed, and real and simulated data are used for illustration.
翻译:随着近年来“大数据”现象的上升,数据正在以多种复杂形式出现。这方面的一个例子就是以彩色图像和电影剪辑等高阶高压高压形式出现的多路数据。虽然最近以矩阵形式审视三路数据简单案例的模式有所上升,但高阶高压变异方法相对缺乏。文献中最常见的高压正常分布是抗拉变异的正常分布;然而,如果数据显示偏差或外差,其使用可能会有问题。在这里,我们开发了四种倾斜的高压变异分布,据我们所知,这些分布是文献中首次提出的斜线分布,能够对斜线和尾部重量进行参数比较。讨论了属性和参数估计,并使用真实和模拟的数据进行说明。