动力系数
因子分析
系列(地层学)
代表(政治)
维数(图论)
大数据
计算机科学
时间序列
因子(编程语言)
计量经济学
降维
时域
领域(数学分析)
过程(计算)
数学
数据挖掘
机器学习
纯数学
法学
程序设计语言
操作系统
古生物学
数学分析
政治
生物
计算机视觉
政治学
作者
Marc Hallin,Marco Lippi
标识
DOI:10.1016/j.spa.2013.04.001
摘要
High-dimensional time series may well be the most common type of dataset in the so-called “big data” revolution, and have entered current practice in many areas, including meteorology, genomics, chemometrics, connectomics, complex physics simulations, biological and environmental research, finance and econometrics. The analysis of such datasets poses significant challenges, both from a statistical as well as from a numerical point of view. The most successful procedures so far have been based on dimension reduction techniques and, more particularly, on high-dimensional factor models. Those models have been developed, essentially, within time series econometrics, and deserve being better known in other areas. In this paper, we provide an original time-domain presentation of the methodological foundations of those models (dynamic factor models usually are described via a spectral approach), contrasting such concepts as commonality and idiosyncrasy, factors and common shocks, dynamic and static principal components. That time-domain approach emphasizes the fact that, contrary to the static factor models favored by practitioners, the so-called general dynamic factor model essentially does not impose any constraints on the data-generating process, but follows from a general representation result.
科研通智能强力驱动
Strongly Powered by AbleSci AI