Stationary subspace analysis
Encyclopedia
Stationary Subspace Analysis (SSA) is a blind source separation algorithm
Algorithm
In mathematics and computer science, an algorithm is an effective method expressed as a finite list of well-defined instructions for calculating a function. Algorithms are used for calculation, data processing, and automated reasoning...

 which factorizes a multivariate time series
Time series
In statistics, signal processing, econometrics and mathematical finance, a time series is a sequence of data points, measured typically at successive times spaced at uniform time intervals. Examples of time series are the daily closing value of the Dow Jones index or the annual flow volume of the...

 into stationary
Stationary
Stationary can mean:* In statistics and probability: a stationary process.* In mathematics: a stationary point.* In mathematics: a stationary set.* In physics: a time-invariant quantity, such as a constant position or temperature....

 and non-stationary components.

Introduction

In many settings, the measured time series contains contributions from various underlying sources that cannot be measured directly. For instance, in EEG
EEG
EEG commonly refers to electroencephalography, a measurement of the electrical activity of the brain.EEG may also refer to:* Emperor Entertainment Group, a Hong Kong-based entertainment company...

 analysis, the electrodes on the scalp record the activity of a large number of sources located inside the brain. These sources can be stationary or non-stationary, but they are not discernible in the electrode signals, which are a mixture of these sources. SSA allows the separation of the stationary from the non-stationary sources in an observed time series.

According to the SSA model, the observed multivariate time series is assumed to be generated as a linear superposition of stationary sources and non-stationary sources ,
where is an unknown but time-constant mixing matrix; and are the basis of the stationary and non-stationary subspace respectively.

Given samples from the time series , the aim of Stationary Subspace Analysis is to estimate the inverse mixing matrix separating the stationary from non-stationary sources in the mixture .

Identifiability of the solution

The true stationary sources are identifiable (up to a linear transformation) and the true non-stationary subspace is identifiable. The true non-stationary sources and the true stationary subspace cannot be identified, because arbitrary contributions from the stationary sources do not change the non-stationary nature of a non-stationary source

Applications and Extensions

Stationary Subspace Analysis has been successfully applied to Brain Computer Interfacing
Brain-computer interface
A brain–computer interface , sometimes called a direct neural interface or a brain–machine interface , is a direct communication pathway between the brain and an external device...

, Computer Vision
Computer vision
Computer vision is a field that includes methods for acquiring, processing, analysing, and understanding images and, in general, high-dimensional data from the real world in order to produce numerical or symbolic information, e.g., in the forms of decisions...

 and Temporal Segmentation. There are variants of the SSA problem that can be solved analytically in closed form, without numerical optimization.

See also

  • Blind signal separation (BSS)
    Blind signal separation
    Blind signal separation, also known as blind source separation, is the separation of a set of signals from a set of mixed signals, without the aid of information about the source signals or the mixing process....

  • Factor analysis
    Factor analysis
    Factor analysis is a statistical method used to describe variability among observed, correlated variables in terms of a potentially lower number of unobserved, uncorrelated variables called factors. In other words, it is possible, for example, that variations in three or four observed variables...

  • Independent component analysis
    Independent component analysis
    Independent component analysis is a computational method for separating a multivariate signal into additive subcomponents supposing the mutual statistical independence of the non-Gaussian source signals...

  • Cointegration
    Cointegration
    Cointegration is a statistical property of time series variables. Two or more time series are cointegrated if they share a common stochastic drift.-Introduction:...

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