In
signal processing
Signal processing is an electrical engineering subfield that focuses on analyzing, modifying and synthesizing '' signals'', such as sound, images, and scientific measurements. Signal processing techniques are used to optimize transmissions, ...
, independent component analysis (ICA) is a computational method for separating a
multivariate signal into additive subcomponents. This is done by assuming that at most one subcomponent is Gaussian and that the subcomponents are
statistically independent
Independence is a fundamental notion in probability theory, as in statistics and the theory of stochastic processes. Two events are independent, statistically independent, or stochastically independent if, informally speaking, the occurrence of ...
from each other. ICA is a special case of
blind source separation
Source separation, blind signal separation (BSS) or blind source separation, is the separation of a set of source signals from a set of mixed signals, without the aid of information (or with very little information) about the source signals or t ...
. A common example application is the "
cocktail party problem" of listening in on one person's speech in a noisy room.
Introduction
Independent component analysis attempts to decompose a multivariate signal into independent non-Gaussian signals. As an example, sound is usually a signal that is composed of the numerical addition, at each time t, of signals from several sources. The question then is whether it is possible to separate these contributing sources from the observed total signal. When the statistical independence assumption is correct, blind ICA separation of a mixed signal gives very good results. It is also used for signals that are not supposed to be generated by mixing for analysis purposes.
A simple application of ICA is the "
cocktail party problem", where the underlying speech signals are separated from a sample data consisting of people talking simultaneously in a room. Usually the problem is simplified by assuming no time delays or echoes. Note that a filtered and delayed signal is a copy of a dependent component, and thus the statistical independence assumption is not violated.
Mixing weights for constructing the ''
'' observed signals from the
components can be placed in an
matrix. An important thing to consider is that if
sources are present, at least
observations (e.g. microphones if the observed signal is audio) are needed to recover the original signals. When there are an equal number of observations and source signals, the mixing matrix is square (''
''). Other cases of underdetermined (''
'') and overdetermined (''
'') have been investigated.
That the ICA separation of mixed signals gives very good results is based on two assumptions and three effects of mixing source signals. Two assumptions:
#The source signals are independent of each other.
#The values in each source signal have non-Gaussian distributions.
Three effects of mixing source signals:
#Independence: As per assumption 1, the source signals are independent; however, their signal mixtures are not. This is because the signal mixtures share the same source signals.
#Normality: According to the
Central Limit Theorem
In probability theory, the central limit theorem (CLT) establishes that, in many situations, when independent random variables are summed up, their properly normalized sum tends toward a normal distribution even if the original variables thems ...
, the distribution of a sum of independent random variables with finite variance tends towards a Gaussian distribution.
Loosely speaking, a sum of two independent random variables usually has a distribution that is closer to Gaussian than any of the two original variables. Here we consider the value of each signal as the random variable.
#Complexity: The temporal complexity of any signal mixture is greater than that of its simplest constituent source signal.
Those principles contribute to the basic establishment of ICA. If the signals extracted from a set of mixtures are independent, and have non-Gaussian histograms or have low complexity, then they must be source signals.
Defining component independence
ICA finds the independent components (also called factors, latent variables or sources) by maximizing the statistical independence of the estimated components. We may choose one of many ways to define a proxy for independence, and this choice governs the form of the ICA algorithm. The two broadest definitions of independence for ICA are
# Minimization of mutual information
# Maximization of non-Gaussianity
The Minimization-of-
Mutual information
In probability theory and information theory, the mutual information (MI) of two random variables is a measure of the mutual dependence between the two variables. More specifically, it quantifies the " amount of information" (in units such as ...
(MMI) family of ICA algorithms uses measures like
Kullback-Leibler Divergence and
maximum entropy. The non-Gaussianity family of ICA algorithms, motivated by the
central limit theorem
In probability theory, the central limit theorem (CLT) establishes that, in many situations, when independent random variables are summed up, their properly normalized sum tends toward a normal distribution even if the original variables thems ...
, uses
kurtosis
In probability theory and statistics, kurtosis (from el, κυρτός, ''kyrtos'' or ''kurtos'', meaning "curved, arching") is a measure of the "tailedness" of the probability distribution of a real-valued random variable. Like skewness, kur ...
and
negentropy.
Typical algorithms for ICA use centering (subtract the mean to create a zero mean signal),
whitening (usually with the
eigenvalue decomposition), and
dimensionality reduction
Dimensionality reduction, or dimension reduction, is the transformation of data from a high-dimensional space into a low-dimensional space so that the low-dimensional representation retains some meaningful properties of the original data, ideally ...
as preprocessing steps in order to simplify and reduce the complexity of the problem for the actual iterative algorithm. Whitening and
dimension reduction
Dimensionality reduction, or dimension reduction, is the transformation of data from a high-dimensional space into a low-dimensional space so that the low-dimensional representation retains some meaningful properties of the original data, ideally ...
can be achieved with
principal component analysis
Principal component analysis (PCA) is a popular technique for analyzing large datasets containing a high number of dimensions/features per observation, increasing the interpretability of data while preserving the maximum amount of information, and ...
or
singular value decomposition
In linear algebra, the singular value decomposition (SVD) is a factorization of a real or complex matrix. It generalizes the eigendecomposition of a square normal matrix with an orthonormal eigenbasis to any \ m \times n\ matrix. It is r ...
. Whitening ensures that all dimensions are treated equally ''a priori'' before the algorithm is run. Well-known algorithms for ICA include
infomax Infomax is an optimization principle for artificial neural networks and other information processing systems. It prescribes that a function that maps a set of input values ''I'' to a set of output values ''O'' should be chosen or learned so as to m ...
,
FastICA
FastICA is an efficient and popular algorithm for independent component analysis invented by Aapo Hyvärinen at Helsinki University of Technology. Like most ICA algorithms, FastICA seeks an orthogonal rotation of prewhitened data, through a fixe ...
,
JADE
Jade is a mineral used as jewellery or for ornaments. It is typically green, although may be yellow or white. Jade can refer to either of two different silicate minerals: nephrite (a silicate of calcium and magnesium in the amphibole gro ...
, and
kernel-independent component analysis, among others. In general, ICA cannot identify the actual number of source signals, a uniquely correct ordering of the source signals, nor the proper scaling (including sign) of the source signals.
ICA is important to
blind signal separation and has many practical applications. It is closely related to (or even a special case of) the search for a
factorial code of the data, i.e., a new vector-valued representation of each data vector such that it gets uniquely encoded by the resulting code vector (loss-free coding), but the code components are statistically independent.
Mathematical definitions
Linear independent component analysis can be divided into noiseless and noisy cases, where noiseless ICA is a special case of noisy ICA. Nonlinear ICA should be considered as a separate case.
General definition
The data are represented by the observed
random vector
In probability, and statistics, a multivariate random variable or random vector is a list of mathematical variables each of whose value is unknown, either because the value has not yet occurred or because there is imperfect knowledge of its valu ...
and the hidden components as the random vector
The task is to transform the observed data
using a linear static transformation
as
into a vector of maximally independent components
measured by some function
of independence.
Generative model
Linear noiseless ICA
The components
of the observed random vector
are generated as a sum of the independent components
,
:
weighted by the mixing weights
.
The same generative model can be written in vector form as
, where the observed random vector
is represented by the basis vectors
. The basis vectors
form the columns of the mixing matrix
and the generative formula can be written as
, where
.
Given the model and realizations (samples)
of the random vector
, the task is to estimate both the mixing matrix
and the sources
. This is done by adaptively calculating the
vectors and setting up a cost function which either maximizes the non-gaussianity of the calculated
or minimizes the mutual information. In some cases, a priori knowledge of the probability distributions of the sources can be used in the cost function.
The original sources
can be recovered by multiplying the observed signals
with the inverse of the mixing matrix
, also known as the unmixing matrix. Here it is assumed that the mixing matrix is square (
). If the number of basis vectors is greater than the dimensionality of the observed vectors,
, the task is overcomplete but is still solvable with the
pseudo inverse.
Linear noisy ICA
With the added assumption of zero-mean and uncorrelated Gaussian noise
, the ICA model takes the form
.
Nonlinear ICA
The mixing of the sources does not need to be linear. Using a nonlinear mixing function
with parameters
the
nonlinear ICA model is
.
Identifiability
The independent components are identifiable up to a permutation and scaling of the sources. This identifiability requires that:
* At most one of the sources
is Gaussian,
* The number of observed mixtures,
, must be at least as large as the number of estimated components
:
. It is equivalent to say that the mixing matrix
must be of full
rank
Rank is the relative position, value, worth, complexity, power, importance, authority, level, etc. of a person or object within a ranking, such as:
Level or position in a hierarchical organization
* Academic rank
* Diplomatic rank
* Hierarchy
* H ...
for its inverse to exist.
Binary ICA
A special variant of ICA is binary ICA in which both signal sources and monitors are in binary form and observations from monitors are disjunctive mixtures of binary independent sources. The problem was shown to have applications in many domains including
medical diagnosis
Medical diagnosis (abbreviated Dx, Dx, or Ds) is the process of determining which disease or condition explains a person's symptoms and signs. It is most often referred to as a diagnosis with the medical context being implicit. The information r ...
,
multi-cluster assignment,
network tomography and
internet resource management.
Let
be the set of binary variables from
monitors and
be the set of binary variables from
sources. Source-monitor connections are represented by the (unknown) mixing matrix
, where
indicates that signal from the ''i''-th source can be observed by the ''j''-th monitor. The system works as follows: at any time, if a source
is active (
) and it is connected to the monitor
(
) then the monitor
will observe some activity (
). Formally we have:
:
where
is Boolean AND and
is Boolean OR. Note that noise is not explicitly modelled, rather, can be treated as independent sources.
The above problem can be heuristically solved
[Johan Himbergand Aapo Hyvärinen, ]
Independent Component Analysis For Binary Data: An Experimental Study
', Proc. Int. Workshop on Independent Component Analysis and Blind Signal Separation (ICA2001), San Diego, California, 2001. by assuming variables are continuous and running
FastICA
FastICA is an efficient and popular algorithm for independent component analysis invented by Aapo Hyvärinen at Helsinki University of Technology. Like most ICA algorithms, FastICA seeks an orthogonal rotation of prewhitened data, through a fixe ...
on binary observation data to get the mixing matrix
(real values), then apply
round number techniques on
to obtain the binary values. This approach has been shown to produce a highly inaccurate result.
Another method is to use
dynamic programming
Dynamic programming is both a mathematical optimization method and a computer programming method. The method was developed by Richard Bellman in the 1950s and has found applications in numerous fields, from aerospace engineering to economics.
I ...
: recursively breaking the observation matrix
into its sub-matrices and run the inference algorithm on these sub-matrices. The key observation which leads to this algorithm is the sub-matrix
of
where
corresponds to the unbiased observation matrix of hidden components that do not have connection to the
-th monitor. Experimental results from
[Huy Nguyen and Rong Zheng, ]
Binary Independent Component Analysis With or Mixtures
', IEEE Transactions on Signal Processing, Vol. 59, Issue 7. (July 2011), pp. 3168–3181. show that this approach is accurate under moderate noise levels.
The Generalized Binary ICA framework
introduces a broader problem formulation which does not necessitate any knowledge on the generative model. In other words, this method attempts to decompose a source into its independent components (as much as possible, and without losing any information) with no prior assumption on the way it was generated. Although this problem appears quite complex, it can be accurately solved with a
branch and bound
Branch and bound (BB, B&B, or BnB) is an algorithm design paradigm for discrete and combinatorial optimization problems, as well as mathematical optimization. A branch-and-bound algorithm consists of a systematic enumeration of candidate solutio ...
search tree algorithm or tightly upper bounded with a single multiplication of a matrix with a vector.
Methods for blind source separation
Projection pursuit
Signal mixtures tend to have Gaussian probability density functions, and source signals tend to have non-Gaussian probability density functions. Each source signal can be extracted from a set of signal mixtures by taking the inner product of a weight vector and those signal mixtures where this inner product provides an orthogonal projection of the signal mixtures. The remaining challenge is finding such a weight vector. One type of method for doing so is
projection pursuit Projection pursuit (PP) is a type of statistical technique which involves finding the most "interesting" possible projections in multidimensional data. Often, projections which deviate more from a normal distribution are considered to be more inte ...
.
[James V. Stone(2004); "Independent Component Analysis: A Tutorial Introduction", The MIT Press Cambridge, Massachusetts, London, England; ]
Projection pursuit seeks one projection at a time such that the extracted signal is as non-Gaussian as possible. This contrasts with ICA, which typically extracts ''M'' signals simultaneously from ''M'' signal mixtures, which requires estimating a ''M'' × ''M'' unmixing matrix. One practical advantage of projection pursuit over ICA is that fewer than ''M'' signals can be extracted if required, where each source signal is extracted from ''M'' signal mixtures using an ''M''-element weight vector.
We can use
kurtosis
In probability theory and statistics, kurtosis (from el, κυρτός, ''kyrtos'' or ''kurtos'', meaning "curved, arching") is a measure of the "tailedness" of the probability distribution of a real-valued random variable. Like skewness, kur ...
to recover the multiple source signal by finding the correct weight vectors with the use of projection pursuit.
The kurtosis of the probability density function of a signal, for a finite sample, is computed as
:
where
is the
sample mean
The sample mean (or "empirical mean") and the sample covariance are statistics computed from a sample of data on one or more random variables.
The sample mean is the average value (or mean value) of a sample of numbers taken from a larger po ...
of
, the extracted signals. The constant 3 ensures that Gaussian signals have zero kurtosis, Super-Gaussian signals have positive kurtosis, and Sub-Gaussian signals have negative kurtosis. The denominator is the
variance
In probability theory and statistics, variance is the expectation of the squared deviation of a random variable from its population mean or sample mean. Variance is a measure of dispersion, meaning it is a measure of how far a set of number ...
of
, and ensures that the measured kurtosis takes account of signal variance. The goal of projection pursuit is to maximize the kurtosis, and make the extracted signal as non-normal as possible.
Using kurtosis as a measure of non-normality, we can now examine how the kurtosis of a signal
extracted from a set of ''M'' mixtures
varies as the weight vector
is rotated around the origin. Given our assumption that each source signal
is super-gaussian we would expect:
#the kurtosis of the extracted signal
to be maximal precisely when
.
#the kurtosis of the extracted signal
to be maximal when
is orthogonal to the projected axes
or
, because we know the optimal weight vector should be orthogonal to a transformed axis
or
.
For multiple source mixture signals, we can use kurtosis and
Gram-Schmidt Orthogonalization (GSO) to recover the signals. Given ''M'' signal mixtures in an ''M''-dimensional space, GSO project these data points onto an (''M-1'')-dimensional space by using the weight vector. We can guarantee the independence of the extracted signals with the use of GSO.
In order to find the correct value of
, we can use
gradient descent
In mathematics, gradient descent (also often called steepest descent) is a first-order iterative optimization algorithm for finding a local minimum of a differentiable function. The idea is to take repeated steps in the opposite direction of ...
method. We first of all whiten the data, and transform
into a new mixture
, which has unit variance, and
. This process can be achieved by applying
Singular value decomposition
In linear algebra, the singular value decomposition (SVD) is a factorization of a real or complex matrix. It generalizes the eigendecomposition of a square normal matrix with an orthonormal eigenbasis to any \ m \times n\ matrix. It is r ...
to
,
:
Rescaling each vector
, and let
. The signal extracted by a weighted vector
is
. If the weight vector w has unit length, then the variance of y is also 1, that is
. The kurtosis can thus be written as:
:
The updating process for
is:
:
where
is a small constant to guarantee that
converges to the optimal solution. After each update, we normalize
, and set
, and repeat the updating process until convergence. We can also use another algorithm to update the weight vector
.
Another approach is using
negentropy[ instead of kurtosis. Using negentropy is a more robust method than kurtosis, as kurtosis is very sensitive to outliers. The negentropy methods are based on an important property of Gaussian distribution: a Gaussian variable has the largest entropy among all continuous random variables of equal variance. This is also the reason why we want to find the most nongaussian variables. A simple proof can be found in ]Differential entropy
Differential entropy (also referred to as continuous entropy) is a concept in information theory that began as an attempt by Claude Shannon to extend the idea of (Shannon) entropy, a measure of average surprisal of a random variable, to continu ...
.
:
y is a Gaussian random variable of the same covariance matrix as x
:
An approximation for negentropy is
:
A proof can be found in the original papers of Comon;[ it has been reproduced in the book ''Independent Component Analysis'' by Aapo Hyvärinen, Juha Karhunen, and Erkki Oja This approximation also suffers from the same problem as kurtosis (sensitivity to outliers). Other approaches have been developed.
:
A choice of and are
: and
]
Based on infomax
Infomax ICA[Bell, A. J.; Sejnowski, T. J. (1995). "An Information-Maximization Approach to Blind Separation and Blind Deconvolution", Neural Computation, 7, 1129-1159] is essentially a multivariate, parallel version of projection pursuit. Whereas projection pursuit extracts a series of signals one at a time from a set of ''M'' signal mixtures, ICA extracts ''M'' signals in parallel. This tends to make ICA more robust than projection pursuit.[James V. Stone (2004). "Independent Component Analysis: A Tutorial Introduction", The MIT Press
Cambridge, Massachusetts, London, England; ]
The projection pursuit method uses Gram-Schmidt orthogonalization to ensure the independence of the extracted signal, while ICA use infomax Infomax is an optimization principle for artificial neural networks and other information processing systems. It prescribes that a function that maps a set of input values ''I'' to a set of output values ''O'' should be chosen or learned so as to m ...
and maximum likelihood
In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed sta ...
estimate to ensure the independence of the extracted signal. The Non-Normality of the extracted signal is achieved by assigning an appropriate model, or prior, for the signal.
The process of ICA based on infomax Infomax is an optimization principle for artificial neural networks and other information processing systems. It prescribes that a function that maps a set of input values ''I'' to a set of output values ''O'' should be chosen or learned so as to m ...
in short is: given a set of signal mixtures and a set of identical independent model cumulative distribution functions(cdfs) , we seek the unmixing matrix which maximizes the joint entropy
Entropy is a scientific concept, as well as a measurable physical property, that is most commonly associated with a state of disorder, randomness, or uncertainty. The term and the concept are used in diverse fields, from classical thermodyna ...
of the signals , where are the signals extracted by . Given the optimal , the signals have maximum entropy and are therefore independent, which ensures that the extracted signals are also independent. is an invertible function, and is the signal model. Note that if the source signal model probability density function
In probability theory, a probability density function (PDF), or density of a continuous random variable, is a function whose value at any given sample (or point) in the sample space (the set of possible values taken by the random variable) c ...
matches the probability density function
In probability theory, a probability density function (PDF), or density of a continuous random variable, is a function whose value at any given sample (or point) in the sample space (the set of possible values taken by the random variable) c ...
of the extracted signal , then maximizing the joint entropy of also maximizes the amount of mutual information
In probability theory and information theory, the mutual information (MI) of two random variables is a measure of the mutual dependence between the two variables. More specifically, it quantifies the " amount of information" (in units such as ...
between and . For this reason, using entropy to extract independent signals is known as infomax Infomax is an optimization principle for artificial neural networks and other information processing systems. It prescribes that a function that maps a set of input values ''I'' to a set of output values ''O'' should be chosen or learned so as to m ...
.
Consider the entropy of the vector variable , where is the set of signals extracted by the unmixing matrix . For a finite set of values sampled from a distribution with pdf , the entropy of can be estimated as:
:
The joint pdf can be shown to be related to the joint pdf of the extracted signals by the multivariate form:
:
where is the Jacobian matrix
In vector calculus, the Jacobian matrix (, ) of a vector-valued function of several variables is the matrix of all its first-order partial derivatives. When this matrix is square, that is, when the function takes the same number of variables ...
. We have , and is the pdf assumed for source signals , therefore,
:
therefore,
:
We know that when , is of uniform distribution, and is maximized. Since
:
where is the absolute value of the determinant of the unmixing matrix . Therefore,
:
so,
:
since , and maximizing does not affect , so we can maximize the function
:
to achieve the independence of extracted signal.
If there are ''M'' marginal pdfs of the model joint pdf are independent and use the commonly super-gaussian model pdf for the source signals , then we have
:
In the sum, given an observed signal mixture , the corresponding set of extracted signals and source signal model , we can find the optimal unmixing matrix , and make the extracted signals independent and non-gaussian. Like the projection pursuit situation, we can use gradient descent method to find the optimal solution of the unmixing matrix.
Based on maximum likelihood estimation
Maximum likelihood
In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed sta ...
estimation (MLE) is a standard statistical tool for finding parameter values (e.g. the unmixing matrix ) that provide the best fit of some data (e.g., the extracted signals ) to a given a model (e.g., the assumed joint probability density function (pdf) of source signals).
The ML "model" includes a specification of a pdf, which in this case is the pdf of the unknown source signals . Using ML ICA, the objective is to find an unmixing matrix that yields extracted signals with a joint pdf as similar as possible to the joint pdf of the unknown source signals .
MLE is thus based on the assumption that if the model pdf and the model parameters are correct then a high probability should be obtained for the data that were actually observed. Conversely, if is far from the correct parameter values then a low probability of the observed data would be expected.
Using MLE, we call the probability of the observed data for a given set of model parameter values (e.g., a pdf and a matrix ) the ''likelihood'' of the model parameter values given the observed data.
We define a ''likelihood'' function of :
This equals to the probability density at , since .
Thus, if we wish to find a that is most likely to have generated the observed mixtures from the unknown source signals with pdf then we need only find that which maximizes the ''likelihood'' . The unmixing matrix that maximizes equation is known as the MLE of the optimal unmixing matrix.
It is common practice to use the log ''likelihood'', because this is easier to evaluate. As the logarithm is a monotonic function, the that maximizes the function also maximizes its logarithm . This allows us to take the logarithm of equation above, which yields the log ''likelihood'' function
If we substitute a commonly used high-Kurtosis
In probability theory and statistics, kurtosis (from el, κυρτός, ''kyrtos'' or ''kurtos'', meaning "curved, arching") is a measure of the "tailedness" of the probability distribution of a real-valued random variable. Like skewness, kur ...
model pdf for the source signals then we have
This matrix that maximizes this function is the ''maximum likelihood
In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed sta ...
estimation''.
History and background
The early general framework for independent component analysis was introduced by Jeanny Hérault and Bernard Ans from 1984, further developed by Christian Jutten in 1985 and 1986, and refined by Pierre Comon in 1991,[P.Comon, Independent Component Analysis, Workshop on Higher-Order Statistics, July 1991, republished in J-L. Lacoume, editor, Higher Order Statistics, pp. 29-38. Elsevier, Amsterdam, London, 1992]
HAL link
/ref> and popularized in his paper of 1994.[Pierre Comon (1994) Independent component analysis, a new concept? http://www.ece.ucsb.edu/wcsl/courses/ECE594/594C_F10Madhow/comon94.pdf] In 1995, Tony Bell and Terry Sejnowski introduced a fast and efficient ICA algorithm based on infomax Infomax is an optimization principle for artificial neural networks and other information processing systems. It prescribes that a function that maps a set of input values ''I'' to a set of output values ''O'' should be chosen or learned so as to m ...
, a principle introduced by Ralph Linsker in 1987.
There are many algorithms available in the literature which do ICA. A largely used one, including in industrial applications, is the FastICA algorithm, developed by Hyvärinen and Oja, which uses the negentropy as cost function. Other examples are rather related to blind source separation
Source separation, blind signal separation (BSS) or blind source separation, is the separation of a set of source signals from a set of mixed signals, without the aid of information (or with very little information) about the source signals or t ...
where a more general approach is used. For example, one can drop the independence assumption and separate mutually correlated signals, thus, statistically "dependent" signals. Sepp Hochreiter and Jürgen Schmidhuber
Jürgen Schmidhuber (born 17 January 1963) is a German computer scientist most noted for his work in the field of artificial intelligence, deep learning and artificial neural networks. He is a co-director of the Dalle Molle Institute for Artifi ...
showed how to obtain non-linear ICA or source separation as a by-product of regularization (1999). Their method does not require a priori knowledge about the number of independent sources.
Applications
ICA can be extended to analyze non-physical signals. For instance, ICA has been applied to discover discussion topics on a bag of news list archives.
Some ICA applications are listed below:
* optical Imaging of neurons
* neuronal spike sorting
* face recognition
* modelling receptive fields of primary visual neurons
* predicting stock market prices
* mobile phone communications
* colour based detection of the ripeness of tomatoes
* removing artifacts, such as eye blinks, from EEG data.
* predicting decision-making using EEG
* analysis of changes in gene expression over time in single cell RNA-sequencing experiments.
* studies of the resting state network of the brain.
* astronomy and cosmology
* finance
Availability
ICA can be applied through the following software:
* SAS
SAS or Sas may refer to:
Arts, entertainment, and media
* ''SAS'' (novel series), a French book series by Gérard de Villiers
* ''Shimmer and Shine'', an American animated children's television series
* Southern All Stars, a Japanese rock ba ...
PROC ICA
* scikit-learn Python implementatio
sklearn.decomposition.FastICA
See also
* Blind deconvolution
* 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 variables called factors. For example, it is possible that variations in six observed ...
* Hilbert spectrum
* Image processing
An image is a visual representation of something. It can be two-dimensional, three-dimensional, or somehow otherwise feed into the visual system to convey information. An image can be an artifact, such as a photograph or other two-dimension ...
* Non-negative matrix factorization (NMF)
* Nonlinear dimensionality reduction
Nonlinear dimensionality reduction, also known as manifold learning, refers to various related techniques that aim to project high-dimensional data onto lower-dimensional latent manifolds, with the goal of either visualizing the data in the low- ...
* Projection pursuit Projection pursuit (PP) is a type of statistical technique which involves finding the most "interesting" possible projections in multidimensional data. Often, projections which deviate more from a normal distribution are considered to be more inte ...
* Varimax rotation
Notes
References
* Comon, Pierre (1994)
"Independent Component Analysis: a new concept?"
''Signal Processing'', 36(3):287–314 (The original paper describing the concept of ICA)
* Hyvärinen, A.; Karhunen, J.; Oja, E. (2001):
Independent Component Analysis
', New York: Wiley,
Introductory chapter
)
* Hyvärinen, A.; Oja, E. (2000)
"Independent Component Analysis: Algorithms and Application"
''Neural Networks'', 13(4-5):411-430. (Technical but pedagogical introduction).
* Comon, P.; Jutten C., (2010): Handbook of Blind Source Separation, Independent Component Analysis and Applications. Academic Press, Oxford UK.
* Lee, T.-W. (1998): ''Independent component analysis: Theory and applications'', Boston, Mass: Kluwer Academic Publishers,
* Acharyya, Ranjan (2008): ''A New Approach for Blind Source Separation of Convolutive Sources - Wavelet Based Separation Using Shrinkage Function'' {{ISBN, 978-3639077971 (this book focuses on unsupervised learning with Blind Source Separation)
External links
What is independent component analysis?
by Aapo Hyvärinen
by Aapo Hyvärinen
A Tutorial on Independent Component Analysis
FastICA as a package for Matlab, in R language, C++
ICALAB Toolboxes
for Matlab, developed at RIKEN
High Performance Signal Analysis Toolkit
provides C++ implementations of FastICA and Infomax
ICA toolbox
Matlab tools for ICA with Bell-Sejnowski, Molgedey-Schuster and mean field ICA. Developed at DTU.
Demonstration of the cocktail party problem
EEGLAB Toolbox
ICA of EEG for Matlab, developed at UCSD.
FMRLAB Toolbox
ICA of fMRI
Functional magnetic resonance imaging or functional MRI (fMRI) measures brain activity by detecting changes associated with blood flow. This technique relies on the fact that cerebral blood flow and neuronal activation are coupled. When an area o ...
for Matlab, developed at UCSD
MELODIC
part of the FMRIB Software Library.
Discussion of ICA used in a biomedical shape-representation context
FastICA, CuBICA, JADE and TDSEP algorithm for Python and more...
Group ICA Toolbox and Fusion ICA Toolbox
Tutorial: Using ICA for cleaning EEG signals
Signal estimation
Dimension reduction