正则化高维低管阶张量回归

IF 1 4区 数学 Q3 STATISTICS & PROBABILITY
S. Roy, G. Michailidis
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引用次数: 2

摘要

:张量回归模型在社会和行为科学的各个领域都引起了人们的兴趣,包括神经成像分析、神经网络、图像处理等。张量分解的最新理论进展促进了各种张量回归模型的显著发展。大多数可用文献的焦点都集中在正则多项式(CP)分解及其回归系数张量的变体上。CP分解的系数张量能够以相对较小的样本量进行估计,但它可能并不总是捕捉数据中潜在的复杂结构。在这项工作中,我们利用了最近发展起来的输卵管秩的概念,并开发了一个张量回归模型,其中有效张量被分解为两个分量:低输卵管秩张量和结构化稀疏张量。我们首先解决了包括系数张量的两个分量的可识别性问题,随后开发了一种快速且可扩展的交替最小化算法来解决凸正则化程序。此外,我们为模型参数提供了高维标度下的有限样本误差边界。该模型的性能是根据合成数据进行评估的,也用于涉及智能辅导平台数据的应用程序中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regularized high dimension low tubal-rank tensor regression
: Tensor regression models are of emerging interest in diverse fields of social and behavioral sciences, including neuroimaging analysis, neural networks, image processing and so on. Recent theoretical advance- ments of tensor decomposition have facilitated significant development of various tensor regression models. The focus of most of the available lit- erature has been on the Canonical Polyadic (CP) decomposition and its variants for the regression coefficient tensor. A CP decomposed coefficient tensor enables estimation with relatively small sample size, but it may not always capture the underlying complex structure in the data. In this work, we leverage the recently developed concept of tubal rank and develop a tensor regression model, wherein the coefficient tensor is decomposed into two components: a low tubal rank tensor and a structured sparse one. We first address the issue of identifiability of the two components comprising the coefficient tensor and subsequently develop a fast and scalable Alternating Minimization algorithm to solve the convex regularized program. Further, we provide finite sample error bounds under high dimensional scaling for the model parameters. The performance of the model is assessed on synthetic data and is also used in an application involving data from an intelligent tutoring platform.
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来源期刊
Electronic Journal of Statistics
Electronic Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.80
自引率
9.10%
发文量
100
审稿时长
3 months
期刊介绍: The Electronic Journal of Statistics (EJS) publishes research articles and short notes on theoretical, computational and applied statistics. The journal is open access. Articles are refereed and are held to the same standard as articles in other IMS journals. Articles become publicly available shortly after they are accepted.
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