Robust high dimensional factor models with applications to statistical machine learning.

IF 3.9 1区 数学 Q1 STATISTICS & PROBABILITY
Statistical Science Pub Date : 2021-05-01 Epub Date: 2021-04-19 DOI:10.1214/20-sts785
Jianqing Fan, Kaizheng Wang, Yiqiao Zhong, Ziwei Zhu
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引用次数: 0

Abstract

Factor models are a class of powerful statistical models that have been widely used to deal with dependent measurements that arise frequently from various applications from genomics and neuroscience to economics and finance. As data are collected at an ever-growing scale, statistical machine learning faces some new challenges: high dimensionality, strong dependence among observed variables, heavy-tailed variables and heterogeneity. High-dimensional robust factor analysis serves as a powerful toolkit to conquer these challenges. This paper gives a selective overview on recent advance on high-dimensional factor models and their applications to statistics including Factor-Adjusted Robust Model selection (FarmSelect) and Factor-Adjusted Robust Multiple testing (FarmTest). We show that classical methods, especially principal component analysis (PCA), can be tailored to many new problems and provide powerful tools for statistical estimation and inference. We highlight PCA and its connections to matrix perturbation theory, robust statistics, random projection, false discovery rate, etc., and illustrate through several applications how insights from these fields yield solutions to modern challenges. We also present far-reaching connections between factor models and popular statistical learning problems, including network analysis and low-rank matrix recovery.

鲁棒高维因子模型及其在统计机器学习中的应用。
因子模型是一类强大的统计模型,已被广泛用于处理从基因组学、神经科学到经济学和金融学的各种应用中经常出现的依赖性测量。随着数据的收集规模不断扩大,统计机器学习面临着一些新的挑战:高维度、观测变量之间的强依赖性、重尾变量和异质性。高维稳健因子分析是克服这些挑战的强大工具。本文选择性地综述了高维因子模型的最新进展及其在统计学中的应用,包括因子调整稳健模型选择(FarmSelect)和因子调整稳健多重检验(FarmTest)。我们表明,经典方法,特别是主成分分析(PCA),可以针对许多新问题进行调整,并为统计估计和推理提供强大的工具。我们强调了主成分分析及其与矩阵扰动理论、稳健统计、随机投影、错误发现率等的联系,并通过几个应用程序说明了这些领域的见解如何为现代挑战提供解决方案。我们还提出了因子模型与流行的统计学习问题之间的深远联系,包括网络分析和低秩矩阵恢复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Statistical Science
Statistical Science 数学-统计学与概率论
CiteScore
6.50
自引率
1.80%
发文量
40
审稿时长
>12 weeks
期刊介绍: The central purpose of Statistical Science is to convey the richness, breadth and unity of the field by presenting the full range of contemporary statistical thought at a moderate technical level, accessible to the wide community of practitioners, researchers and students of statistics and probability.
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