A review of second-order blind identification methods

被引:20
作者
Pan, Yan [1 ]
Matilainen, Markus [2 ,3 ]
Taskinen, Sara [1 ]
Nordhausen, Klaus [1 ,4 ]
机构
[1] Univ Jyvaskyla, Dept Math & Stat, Jyvaskyla, Finland
[2] Turku Univ Hosp, Turku PET Ctr, Turku, Finland
[3] Univ Turku, Turku, Finland
[4] TU, Inst Stat & Math Methods Econ, Vienna, Austria
来源
WILEY INTERDISCIPLINARY REVIEWS-COMPUTATIONAL STATISTICS | 2022年 / 14卷 / 04期
基金
奥地利科学基金会;
关键词
blind source separation; dimension reduction; joint diagonalization; multivariate time series; INDEPENDENT COMPONENT ANALYSIS; DYNAMIC-FACTOR MODEL; SOURCE SEPARATION; JOINT DIAGONALIZATION; ALGORITHM; NUMBER; EEG; SOBI; DISTRIBUTIONS; SIGNALS;
D O I
10.1002/wics.1550
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Second-order source separation (SOS) is a data analysis tool which can be used for revealing hidden structures in multivariate time series data or as a tool for dimension reduction. Such methods are nowadays increasingly important as more and more high-dimensional multivariate time series data are measured in numerous fields of applied science. Dimension reduction is crucial, as modeling such high-dimensional data with multivariate time series models is often impractical as the number of parameters describing dependencies between the component time series is usually too high. SOS methods have their roots in the signal processing literature, where they were first used to separate source signals from an observed signal mixture. The SOS model assumes that the observed time series (signals) is a linear mixture of latent time series (sources) with uncorrelated components. The methods make use of the second-order statistics-hence the name "second-order source separation." In this review, we discuss the classical SOS methods and their extensions to more complex settings. An example illustrates how SOS can be performed. This article is categorized under: Statistical Models > Time Series Models Statistical and Graphical Methods of Data Analysis > Dimension Reduction Data: Types and Structure > Time Series, Stochastic Processes, and Functional Data
引用
收藏
页数:23
相关论文
共 104 条
[31]  
IEEE 17th International Conference on Smart City
[32]  
IEEE 5th International Conference on Data Science and Systems (HPCC/SmartCity/DSS). Proceedings, P1414, DOI 10.1109/HPCC/SmartCity/DSS.2019.00196
[33]  
Hyvärinen A, 2001, INDEPENDENT COMPONENT ANALYSIS: PRINCIPLES AND PRACTICE, P71
[34]   Blind source separation by nonstationarity of variance:: A cumulant-based approach [J].
Hyvärinen, A .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 2001, 12 (06) :1471-1474
[35]   Model selection using limiting distributions of second-order blind source separation algorithms [J].
Illner, Katrin ;
Miettinen, Jari ;
Fuchs, Christiane ;
Taskinen, Sara ;
Nordhausen, Klaus ;
Oja, Hannu ;
Theis, Fabian J. .
SIGNAL PROCESSING, 2015, 113 :95-103
[36]   An Affine Equivariant Robust Second-Order BSS Method [J].
Ilmonen, Pauliina ;
Nordhausen, Klaus ;
Oja, Hannu ;
Theis, Fabian .
LATENT VARIABLE ANALYSIS AND SIGNAL SEPARATION, LVA/ICA 2015, 2015, 9237 :328-335
[37]   Characteristics of multivariate distributions and the invariant coordinate system [J].
Ilmonen, Pauliina ;
Nevalainen, Jaakko ;
Oja, Hannu .
STATISTICS & PROBABILITY LETTERS, 2010, 80 (23-24) :1844-1853
[38]   A New Performance Index for ICA: Properties, Computation and Asymptotic Analysis [J].
Ilmonen, Pauliina ;
Nordhausen, Klaus ;
Oja, Hannu ;
Ollila, Esa .
LATENT VARIABLE ANALYSIS AND SIGNAL SEPARATION, 2010, 6365 :229-+
[39]   Automatic removal of eye movement and blink artifacts from EEG data using blind component separation [J].
Joyce, CA ;
Gorodnitsky, IF ;
Kutas, M .
PSYCHOPHYSIOLOGY, 2004, 41 (02) :313-325
[40]   A reworked SOBI algorithm based on SCHUR Decomposition for EEG data processing [J].
Kalogiannis, Gregory ;
Karampelas, Nikolaos ;
Hassapis, George .
2017 IEEE 30TH INTERNATIONAL SYMPOSIUM ON COMPUTER-BASED MEDICAL SYSTEMS (CBMS), 2017, :268-271