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In
probability theory Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set o ...
and
statistics Statistics (from German language, German: ''wikt:Statistik#German, Statistik'', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of ...
, a covariance matrix (also known as auto-covariance matrix, dispersion matrix, variance matrix, or variance–covariance matrix) is a square
matrix Matrix most commonly refers to: * ''The Matrix'' (franchise), an American media franchise ** ''The Matrix'', a 1999 science-fiction action film ** "The Matrix", a fictional setting, a virtual reality environment, within ''The Matrix'' (franchis ...
giving the
covariance In probability theory and statistics, covariance is a measure of the joint variability of two random variables. If the greater values of one variable mainly correspond with the greater values of the other variable, and the same holds for the ...
between each pair of elements of a given
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 value ...
. Any
covariance In probability theory and statistics, covariance is a measure of the joint variability of two random variables. If the greater values of one variable mainly correspond with the greater values of the other variable, and the same holds for the ...
matrix is
symmetric Symmetry (from grc, συμμετρία "agreement in dimensions, due proportion, arrangement") in everyday language refers to a sense of harmonious and beautiful proportion and balance. In mathematics, "symmetry" has a more precise definiti ...
and positive semi-definite and its main diagonal contains
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 numbers ...
s (i.e., the covariance of each element with itself). Intuitively, the covariance matrix generalizes the notion of variance to multiple dimensions. As an example, the variation in a collection of random points in two-dimensional space cannot be characterized fully by a single number, nor would the variances in the x and y directions contain all of the necessary information; a 2 \times 2 matrix would be necessary to fully characterize the two-dimensional variation. The covariance matrix of a random vector \mathbf is typically denoted by \operatorname_ or \Sigma.


Definition

Throughout this article, boldfaced unsubscripted \mathbf and \mathbf are used to refer to random vectors, and unboldfaced subscripted X_i and Y_i are used to refer to scalar random variables. If the entries in the
column vector In linear algebra, a column vector with m elements is an m \times 1 matrix consisting of a single column of m entries, for example, \boldsymbol = \begin x_1 \\ x_2 \\ \vdots \\ x_m \end. Similarly, a row vector is a 1 \times n matrix for some n, c ...
:\mathbf=(X_1, X_2, ... , X_n)^ are
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
s, each with finite
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 numbers ...
and
expected value In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a l ...
, then the covariance matrix \operatorname_ is the matrix whose (i,j) entry is the
covariance In probability theory and statistics, covariance is a measure of the joint variability of two random variables. If the greater values of one variable mainly correspond with the greater values of the other variable, and the same holds for the ...
:\operatorname_ = \operatorname _i, X_j= \operatorname X_i_-_\operatorname[X_i(X_j_-_\operatorname[X_j.html" ;"title="_i.html" ;"title="X_i - \operatorname[X_i">X_i - \operatorname[X_i(X_j - \operatorname[X_j">_i.html" ;"title="X_i - \operatorname[X_i">X_i - \operatorname[X_i(X_j - \operatorname[X_j] where the operator \operatorname denotes the expected value (mean) of its argument.


Conflicting nomenclatures and notations

Nomenclatures differ. Some statisticians, following the probabilist
William Feller William "Vilim" Feller (July 7, 1906 – January 14, 1970), born Vilibald Srećko Feller, was a Croatian- American mathematician specializing in probability theory. Early life and education Feller was born in Zagreb to Ida Oemichen-Perc, a Cro ...
in his two-volume book ''An Introduction to Probability Theory and Its Applications'', call the matrix \operatorname_ the variance of the random vector \mathbf, because it is the natural generalization to higher dimensions of the 1-dimensional variance. Others call it the covariance matrix, because it is the matrix of covariances between the scalar components of the vector \mathbf. : \operatorname(\mathbf) = \operatorname(\mathbf,\mathbf) = \operatorname \left _(\mathbf_-_\operatorname_[\mathbf _(\mathbf_-_\operatorname_[\mathbf.html" ;"title="mathbf.html" ;"title=" (\mathbf - \operatorname [\mathbf"> (\mathbf - \operatorname [\mathbf (\mathbf - \operatorname [\mathbf">mathbf.html" ;"title=" (\mathbf - \operatorname [\mathbf"> (\mathbf - \operatorname [\mathbf (\mathbf - \operatorname [\mathbf^ \right]. Both forms are quite standard, and there is no ambiguity between them. The matrix \operatorname_ is also often called the ''variance-covariance matrix'', since the diagonal terms are in fact variances. By comparison, the notation for the
cross-covariance matrix In probability theory and statistics, a cross-covariance matrix is a matrix whose element in the ''i'', ''j'' position is the covariance between the ''i''-th element of a random vector and ''j''-th element of another random vector. A random vect ...
''between'' two vectors is : \operatorname(\mathbf,\mathbf) =\operatorname_= \operatorname \left _(\mathbf_-_\operatorname[\mathbf _(\mathbf_-_\operatorname[\mathbf.html" ;"title="mathbf.html" ;"title=" (\mathbf - \operatorname[\mathbf"> (\mathbf - \operatorname[\mathbf (\mathbf - \operatorname[\mathbf">mathbf.html" ;"title=" (\mathbf - \operatorname[\mathbf"> (\mathbf - \operatorname[\mathbf (\mathbf - \operatorname[\mathbf^ \right].


Properties


Relation to the autocorrelation matrix

The auto-covariance matrix \operatorname_ is related to the autocorrelation matrix \operatorname_ by :\operatorname_ = \operatorname \mathbf_-_\operatorname[\mathbf(\mathbf_-_\operatorname[\mathbf.html" ;"title="mathbf.html" ;"title="\mathbf - \operatorname[\mathbf">\mathbf - \operatorname[\mathbf(\mathbf - \operatorname[\mathbf">mathbf.html" ;"title="\mathbf - \operatorname[\mathbf">\mathbf - \operatorname[\mathbf(\mathbf - \operatorname[\mathbf^] = \operatorname_ - \operatorname[\mathbf] \operatorname[\mathbf]^ where the autocorrelation matrix is defined as \operatorname_ = \operatorname[\mathbf \mathbf^].


Relation to the correlation matrix

An entity closely related to the covariance matrix is the matrix of
Pearson product-moment correlation coefficient In statistics, the Pearson correlation coefficient (PCC, pronounced ) ― also known as Pearson's ''r'', the Pearson product-moment correlation coefficient (PPMCC), the bivariate correlation, or colloquially simply as the correlation coefficient ...
s between each of the random variables in the random vector \mathbf, which can be written as :\operatorname(\mathbf) = \big(\operatorname(\operatorname_)\big)^ \, \operatorname_ \, \big(\operatorname(\operatorname_)\big)^, where \operatorname(\operatorname_) is the matrix of the diagonal elements of \operatorname_ (i.e., a
diagonal matrix In linear algebra, a diagonal matrix is a matrix in which the entries outside the main diagonal are all zero; the term usually refers to square matrices. Elements of the main diagonal can either be zero or nonzero. An example of a 2×2 diagonal ma ...
of the variances of X_i for i = 1, \dots, n). Equivalently, the correlation matrix can be seen as the covariance matrix of the standardized random variables X_i/\sigma(X_i) for i = 1, \dots, n. : \operatorname(\mathbf) = \begin 1 & \frac & \cdots & \frac \\ \\ \frac & 1 & \cdots & \frac \\ \\ \vdots & \vdots & \ddots & \vdots \\ \\ \frac & \frac & \cdots & 1 \end. Each element on the principal diagonal of a correlation matrix is the correlation of a random variable with itself, which always equals 1. Each
off-diagonal element In geometry, a diagonal is a line segment joining two vertices of a polygon or polyhedron, when those vertices are not on the same edge. Informally, any sloping line is called diagonal. The word ''diagonal'' derives from the ancient Greek δ� ...
is between −1 and +1 inclusive.


Inverse of the covariance matrix

The inverse of this matrix, \operatorname_^, if it exists, is the inverse covariance matrix (or inverse concentration matrix), also known as the ''
precision matrix In statistics, the precision matrix or concentration matrix is the matrix inverse of the covariance matrix or dispersion matrix, P = \Sigma^. For univariate distributions, the precision matrix degenerates into a scalar precision, defined as the ...
'' (or ''concentration matrix''). Just as the covariance matrix can be written as the rescaling of a correlation matrix by the marginal variances: \operatorname(\mathbf) = \begin \sigma_ & & & 0\\ & \sigma_\\ & & \ddots\\ 0 & & & \sigma_ \end \begin 1 & \rho_ & \cdots & \rho_\\ \rho_ & 1 & \cdots & \rho_\\ \vdots & \vdots & \ddots & \vdots\\ \rho_ & \rho_ & \cdots & 1\\ \end \begin \sigma_ & & & 0\\ & \sigma_\\ & & \ddots\\ 0 & & & \sigma_ \end So, using the idea of
partial correlation In probability theory and statistics, partial correlation measures the degree of association between two random variables, with the effect of a set of controlling random variables removed. When determining the numerical relationship between two ...
, and partial variance, the inverse covariance matrix can be expressed analogously: \operatorname(\mathbf)^ = \begin \frac & & & 0\\ & \frac\\ & & \ddots\\ 0 & & & \frac \end \begin 1 & -\rho_ & \cdots & -\rho_\\ -\rho_ & 1 & \cdots & -\rho_\\ \vdots & \vdots & \ddots & \vdots\\ -\rho_ & -\rho_ & \cdots & 1\\ \end \begin \frac & & & 0\\ & \frac\\ & & \ddots\\ 0 & & & \frac \end This duality motivates a number of other dualities between marginalizing and conditioning for gaussian random variables.


Basic properties

For \operatorname_=\operatorname(\mathbf) = \operatorname \left \left(_\mathbf_-_\operatorname[\mathbf\right)_\left(_\mathbf_-_\operatorname[\mathbf.html" ;"title="mathbf.html" ;"title="\left( \mathbf - \operatorname[\mathbf">\left( \mathbf - \operatorname[\mathbf\right) \left( \mathbf - \operatorname[\mathbf">mathbf.html" ;"title="\left( \mathbf - \operatorname[\mathbf">\left( \mathbf - \operatorname[\mathbf\right) \left( \mathbf - \operatorname[\mathbf\right)^ \right] and \mathbf = \operatorname[\textbf], where \mathbf = (X_1,\ldots,X_n)^ is a n-dimensional random variable, the following basic properties apply: # \operatorname_ = \operatorname(\mathbf) - \mathbf\mathbf^ # \operatorname_ \, is positive-semidefinite, i.e. \mathbf^T \operatorname_ \mathbf \ge 0 \quad \text \mathbf \in \mathbb^n # \operatorname_ \, is
symmetric Symmetry (from grc, συμμετρία "agreement in dimensions, due proportion, arrangement") in everyday language refers to a sense of harmonious and beautiful proportion and balance. In mathematics, "symmetry" has a more precise definiti ...
, i.e. \operatorname_^ = \operatorname_ # For any constant (i.e. non-random) m \times n matrix \mathbf and constant m \times 1 vector \mathbf, one has \operatorname(\mathbf + \mathbf) = \mathbf\, \operatorname(\mathbf)\, \mathbf^ # If \mathbf is another random vector with the same dimension as \mathbf, then \operatorname(\mathbf + \mathbf) = \operatorname(\mathbf) + \operatorname(\mathbf,\mathbf) + \operatorname(\mathbf, \mathbf) + \operatorname(\mathbf) where \operatorname(\mathbf, \mathbf) is the
cross-covariance matrix In probability theory and statistics, a cross-covariance matrix is a matrix whose element in the ''i'', ''j'' position is the covariance between the ''i''-th element of a random vector and ''j''-th element of another random vector. A random vect ...
of \mathbf and \mathbf.


Block matrices

The joint mean \mathbf\mu and joint covariance matrix \mathbf\Sigma of \mathbf and \mathbf can be written in block form : \mathbf\mu = \begin \mathbf \\ \mathbf \end, \qquad \mathbf\Sigma = \begin \operatorname_\mathbf & \operatorname_\mathbf \\ \operatorname_\mathbf & \operatorname_\mathbf \end where \operatorname_\mathbf = \operatorname(\mathbf) , \operatorname_\mathbf = \operatorname(\mathbf) and \operatorname_\mathbf = \operatorname^_\mathbf = \operatorname(\mathbf, \mathbf) . \operatorname_\mathbf and \operatorname_\mathbf can be identified as the variance matrices of the
marginal distribution In probability theory and statistics, the marginal distribution of a subset of a collection of random variables is the probability distribution of the variables contained in the subset. It gives the probabilities of various values of the varia ...
s for \mathbf and \mathbf respectively. If \mathbf and \mathbf are jointly normally distributed, : \mathbf, \mathbf \sim\ \mathcal(\mathbf\mu, \operatorname), then the
conditional distribution In probability theory and statistics, given two jointly distributed random variables X and Y, the conditional probability distribution of Y given X is the probability distribution of Y when X is known to be a particular value; in some cases the ...
for \mathbf given \mathbf is given by : \mathbf \mid \mathbf \sim\ \mathcal(\mathbf, \operatorname_\mathbf), defined by
conditional mean In probability theory, the conditional expectation, conditional expected value, or conditional mean of a random variable is its expected value – the value it would take “on average” over an arbitrarily large number of occurrences – giv ...
: \mathbf = \mathbf + \operatorname_\mathbf \operatorname_\mathbf^ \left( \mathbf - \mathbf \right) and
conditional variance In probability theory and statistics, a conditional variance is the variance of a random variable given the value(s) of one or more other variables. Particularly in econometrics, the conditional variance is also known as the scedastic function or ...
: \operatorname_\mathbf = \operatorname_\mathbf - \operatorname_\mathbf \operatorname_\mathbf^ \operatorname_\mathbf. The matrix \operatorname_\mathbf \operatorname_\mathbf^ is known as the matrix of regression coefficients, while in linear algebra \operatorname_\mathbf is the
Schur complement In linear algebra and the theory of matrices, the Schur complement of a block matrix is defined as follows. Suppose ''p'', ''q'' are nonnegative integers, and suppose ''A'', ''B'', ''C'', ''D'' are respectively ''p'' × ''p'', ''p'' × ''q'', ''q'' ...
of \operatorname_\mathbf in \mathbf\Sigma . The matrix of regression coefficients may often be given in transpose form, \operatorname_\mathbf^ \operatorname_\mathbf , suitable for post-multiplying a row vector of explanatory variables \mathbf^ rather than pre-multiplying a column vector \mathbf . In this form they correspond to the coefficients obtained by inverting the matrix of the
normal equations In statistics, ordinary least squares (OLS) is a type of linear least squares method for choosing the unknown parameters in a linear regression model (with fixed level-one effects of a linear function of a set of explanatory variables) by the p ...
of
ordinary least squares In statistics, ordinary least squares (OLS) is a type of linear least squares method for choosing the unknown parameters in a linear regression model (with fixed level-one effects of a linear function of a set of explanatory variables) by the prin ...
(OLS).


Partial covariance matrix

A covariance matrix with all non-zero elements tells us that all the individual random variables are interrelated. This means that the variables are not only directly correlated, but also correlated via other variables indirectly. Often such indirect, common-mode correlations are trivial and uninteresting. They can be suppressed by calculating the partial covariance matrix, that is the part of covariance matrix that shows only the interesting part of correlations. If two vectors of random variables \mathbf and \mathbf are correlated via another vector \mathbf, the latter correlations are suppressed in a matrixW J Krzanowski "Principles of Multivariate Analysis" (Oxford University Press, New York, 1988), Chap. 14.4; K V Mardia, J T Kent and J M Bibby "Multivariate Analysis (Academic Press, London, 1997), Chap. 6.5.3; T W Anderson "An Introduction to Multivariate Statistical Analysis" (Wiley, New York, 2003), 3rd ed., Chaps. 2.5.1 and 4.3.1. : \operatorname_\mathbf = \operatorname(\mathbf,\mathbf \mid \mathbf) = \operatorname(\mathbf,\mathbf) - \operatorname(\mathbf,\mathbf) \operatorname(\mathbf,\mathbf)^ \operatorname(\mathbf,\mathbf). The partial covariance matrix \operatorname_\mathbf is effectively the simple covariance matrix \operatorname_\mathbf as if the uninteresting random variables \mathbf were held constant.


Covariance matrix as a parameter of a distribution

If a column vector \mathbf of n possibly correlated random variables is jointly normally distributed, or more generally elliptically distributed, then its
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) can ...
\operatorname(\mathbf) can be expressed in terms of the covariance matrix \mathbf as follows : \operatorname(\mathbf) = (2 \pi)^ , \mathbf, ^ \exp \left ( - \tfrac \mathbf \right ), where \mathbf and , \mathbf, is the
determinant In mathematics, the determinant is a scalar value that is a function of the entries of a square matrix. It characterizes some properties of the matrix and the linear map represented by the matrix. In particular, the determinant is nonzero if and ...
of \mathbf .


Covariance matrix as a linear operator

Applied to one vector, the covariance matrix maps a linear combination c of the random variables X onto a vector of covariances with those variables: \mathbf c^ \Sigma = \operatorname(\mathbf c^ \mathbf X, \mathbf X). Treated as a
bilinear form In mathematics, a bilinear form is a bilinear map on a vector space (the elements of which are called '' vectors'') over a field ''K'' (the elements of which are called ''scalars''). In other words, a bilinear form is a function that is linear i ...
, it yields the covariance between the two linear combinations: \mathbf d^ \Sigma \mathbf c = \operatorname(\mathbf d^ \mathbf X, \mathbf c^ \mathbf X). The variance of a linear combination is then \mathbf c^ \Sigma \mathbf c, its covariance with itself. Similarly, the (pseudo-)inverse covariance matrix provides an inner product \langle c - \mu, \Sigma^+ , c - \mu\rangle, which induces the Mahalanobis distance, a measure of the "unlikelihood" of ''c''.


Which matrices are covariance matrices?

From the identity just above, let \mathbf be a (p \times 1) real-valued vector, then :\operatorname(\mathbf^\mathbf) = \mathbf^ \operatorname(\mathbf) \mathbf,\, which must always be nonnegative, since it 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 numbers ...
of a real-valued random variable, so a covariance matrix is always a
positive-semidefinite matrix In mathematics, a symmetric matrix M with real entries is positive-definite if the real number z^\textsfMz is positive for every nonzero real column vector z, where z^\textsf is the transpose of More generally, a Hermitian matrix (that is, a c ...
. The above argument can be expanded as follows: \begin & w^ \operatorname \left \mathbf_-_\operatorname[\mathbf_(\mathbf_-_\operatorname[\mathbf.html" ;"title="mathbf.html" ;"title="\mathbf - \operatorname[\mathbf">\mathbf - \operatorname[\mathbf (\mathbf - \operatorname[\mathbf">mathbf.html" ;"title="\mathbf - \operatorname[\mathbf">\mathbf - \operatorname[\mathbf (\mathbf - \operatorname[\mathbf^\right] w = \operatorname \left[w^(\mathbf - \operatorname mathbf (\mathbf - \operatorname mathbf^w\right] \\ &= \operatorname \big[\big( w^(\mathbf - \operatorname mathbf \big)^2 \big] \geq 0, \end where the last inequality follows from the observation that w^(\mathbf - \operatorname mathbf is a scalar. Conversely, every symmetric positive semi-definite matrix is a covariance matrix. To see this, suppose M is a p \times p symmetric positive-semidefinite matrix. From the finite-dimensional case of the
spectral theorem In mathematics, particularly linear algebra and functional analysis, a spectral theorem is a result about when a linear operator or matrix (mathematics), matrix can be Diagonalizable matrix, diagonalized (that is, represented as a diagonal matrix i ...
, it follows that M has a nonnegative symmetric
square root In mathematics, a square root of a number is a number such that ; in other words, a number whose ''square'' (the result of multiplying the number by itself, or  ⋅ ) is . For example, 4 and −4 are square roots of 16, because . E ...
, which can be denoted by M1/2. Let \mathbf be any p \times 1 column vector-valued random variable whose covariance matrix is the p \times p identity matrix. Then :\operatorname(\mathbf^ \mathbf) = \mathbf^ \, \operatorname(\mathbf) \, \mathbf^ = \mathbf.


Complex random vectors

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 numbers ...
of a
complex Complex commonly refers to: * Complexity, the behaviour of a system whose components interact in multiple ways so possible interactions are difficult to describe ** Complex system, a system composed of many components which may interact with each ...
''scalar-valued'' random variable with expected value \mu is conventionally defined using
complex conjugation In mathematics, the complex conjugate of a complex number is the number with an equal real part and an imaginary part equal in magnitude but opposite in sign. That is, (if a and b are real, then) the complex conjugate of a + bi is equal to a - ...
: : \operatorname(Z) = \operatorname\left (Z - \mu_Z)\overline \right where the complex conjugate of a complex number z is denoted \overline; thus the variance of a complex random variable is a real number. If \mathbf = (Z_1,\ldots,Z_n) ^ is a column vector of complex-valued random variables, then the
conjugate transpose In mathematics, the conjugate transpose, also known as the Hermitian transpose, of an m \times n complex matrix \boldsymbol is an n \times m matrix obtained by transposing \boldsymbol and applying complex conjugate on each entry (the complex con ...
\mathbf^ is formed by ''both'' transposing and conjugating. In the following expression, the product of a vector with its conjugate transpose results in a square matrix called the covariance matrix, as its expectation: : \operatorname_ = \operatorname mathbf,\mathbf= \operatorname \left (\mathbf - \mathbf)(\mathbf - \mathbf)^ \right, The matrix so obtained will be
Hermitian {{Short description, none Numerous things are named after the French mathematician Charles Hermite (1822–1901): Hermite * Cubic Hermite spline, a type of third-degree spline * Gauss–Hermite quadrature, an extension of Gaussian quadrature m ...
positive-semidefinite, with real numbers in the main diagonal and complex numbers off-diagonal. ;Properties * The covariance matrix is a
Hermitian matrix In mathematics, a Hermitian matrix (or self-adjoint matrix) is a complex square matrix that is equal to its own conjugate transpose—that is, the element in the -th row and -th column is equal to the complex conjugate of the element in the -th ...
, i.e. \operatorname_^ = \operatorname_. * The diagonal elements of the covariance matrix are real.


Pseudo-covariance matrix

For complex random vectors, another kind of second central moment, the pseudo-covariance matrix (also called relation matrix) is defined as follows: : \operatorname_ = \operatorname mathbf,\overline= \operatorname \left (\mathbf - \mathbf)(\mathbf - \mathbf)^ \right In contrast to the covariance matrix defined above, Hermitian transposition gets replaced by transposition in the definition. Its diagonal elements may be complex valued; it is a
complex symmetric matrix In linear algebra, a symmetric matrix is a square matrix that is equal to its transpose. Formally, Because equal matrices have equal dimensions, only square matrices can be symmetric. The entries of a symmetric matrix are symmetric with re ...
.


Estimation

If \mathbf_ and \mathbf_ are centred data matrices of dimension p \times n and q \times n respectively, i.e. with ''n'' columns of observations of ''p'' and ''q'' rows of variables, from which the row means have been subtracted, then, if the row means were estimated from the data, sample covariance matrices \mathbf_ and \mathbf_ can be defined to be : \mathbf_ = \frac \mathbf_ \mathbf_^, \qquad \mathbf_ = \frac \mathbf_ \mathbf_^ or, if the row means were known a priori, : \mathbf_ = \frac \mathbf_ \mathbf_^, \qquad \mathbf_ = \frac \mathbf_ \mathbf_^. These empirical sample covariance matrices are the most straightforward and most often used estimators for the covariance matrices, but other estimators also exist, including regularised or shrinkage estimators, which may have better properties.


Applications

The covariance matrix is a useful tool in many different areas. From it a
transformation matrix In linear algebra, linear transformations can be represented by matrices. If T is a linear transformation mapping \mathbb^n to \mathbb^m and \mathbf x is a column vector with n entries, then T( \mathbf x ) = A \mathbf x for some m \times n matrix ...
can be derived, called a
whitening transformation A whitening transformation or sphering transformation is a linear transformation that transforms a vector of random variables with a known covariance matrix into a set of new variables whose covariance is the identity matrix, meaning that they ar ...
, that allows one to completely decorrelate the data or, from a different point of view, to find an optimal basis for representing the data in a compact way (see
Rayleigh quotient In mathematics, the Rayleigh quotient () for a given complex Hermitian matrix ''M'' and nonzero vector ''x'' is defined as: R(M,x) = . For real matrices and vectors, the condition of being Hermitian reduces to that of being symmetric, and the co ...
for a formal proof and additional properties of covariance matrices). This is called
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 ...
(PCA) and the Karhunen–Loève transform (KL-transform). The covariance matrix plays a key role in
financial economics Financial economics, also known as finance, is the branch of economics characterized by a "concentration on monetary activities", in which "money of one type or another is likely to appear on ''both sides'' of a trade".William F. Sharpe"Financial ...
, especially in
portfolio theory Modern portfolio theory (MPT), or mean-variance analysis, is a mathematical framework for assembling a portfolio of assets such that the expected return is maximized for a given level of risk. It is a formalization and extension of diversificatio ...
and its
mutual fund separation theorem In portfolio theory, a mutual fund separation theorem, mutual fund theorem, or separation theorem is a theorem stating that, under certain conditions, any investor's optimal portfolio can be constructed by holding each of certain mutual funds in ap ...
and in the capital asset pricing model. The matrix of covariances among various assets' returns is used to determine, under certain assumptions, the relative amounts of different assets that investors should (in a normative analysis) or are predicted to (in a positive analysis) choose to hold in a context of
diversification Diversification may refer to: Biology and agriculture * Genetic divergence, emergence of subpopulations that have accumulated independent genetic changes * Agricultural diversification involves the re-allocation of some of a farm's resources to ...
.


Use in optimization

The
evolution strategy In computer science, an evolution strategy (ES) is an optimization technique based on ideas of evolution. It belongs to the general class of evolutionary computation or artificial evolution methodologies. History The 'evolution strategy' optimizat ...
, a particular family of Randomized Search Heuristics, fundamentally relies on a covariance matrix in its mechanism. The characteristic mutation operator draws the update step from a multivariate normal distribution using an evolving covariance matrix. There is a formal proof that the
evolution strategy In computer science, an evolution strategy (ES) is an optimization technique based on ideas of evolution. It belongs to the general class of evolutionary computation or artificial evolution methodologies. History The 'evolution strategy' optimizat ...
's covariance matrix adapts to the inverse of the
Hessian matrix In mathematics, the Hessian matrix or Hessian is a square matrix of second-order partial derivatives of a scalar-valued function, or scalar field. It describes the local curvature of a function of many variables. The Hessian matrix was developed ...
of the search landscape,
up to Two Mathematical object, mathematical objects ''a'' and ''b'' are called equal up to an equivalence relation ''R'' * if ''a'' and ''b'' are related by ''R'', that is, * if ''aRb'' holds, that is, * if the equivalence classes of ''a'' and ''b'' wi ...
a scalar factor and small random fluctuations (proven for a single-parent strategy and a static model, as the population size increases, relying on the quadratic approximation). Intuitively, this result is supported by the rationale that the optimal covariance distribution can offer mutation steps whose equidensity probability contours match the level sets of the landscape, and so they maximize the progress rate.


Covariance mapping

In covariance mapping the values of the \operatorname(\mathbf, \mathbf) or \operatorname(\mathbf, \mathbf \mid \mathbf) matrix are plotted as a 2-dimensional map. When vectors \mathbf and \mathbf are discrete
random function In probability theory and related fields, a stochastic () or random process is a mathematical object usually defined as a Indexed family, family of random variables. Stochastic processes are widely used as mathematical models of systems and phen ...
s, the map shows statistical relations between different regions of the random functions. Statistically independent regions of the functions show up on the map as zero-level flatland, while positive or negative correlations show up, respectively, as hills or valleys. In practice the column vectors \mathbf, \mathbf , and \mathbf are acquired experimentally as rows of n samples, e.g. : mathbf_1, \mathbf_2, ... \mathbf_n= \begin X_1(t_1) & X_2(t_1) & \cdots & X_n(t_1) \\ \\ X_1(t_2) & X_2(t_2) & \cdots & X_n(t_2) \\ \\ \vdots & \vdots & \ddots & \vdots \\ \\ X_1(t_m) & X_2(t_m) & \cdots & X_n(t_m) \end , where X_j(t_i) is the ''i''-th discrete value in sample ''j'' of the random function X(t) . The expected values needed in the covariance formula are estimated using the
sample mean The sample mean (or "empirical mean") and the sample covariance are statistics computed from a Sample (statistics), sample of data on one or more random variables. The sample mean is the average value (or mean, mean value) of a sample (statistic ...
, e.g. : \langle \mathbf \rangle = \frac \sum^_ \mathbf_j and the covariance matrix is estimated by the sample covariance matrix : \operatorname(\mathbf,\mathbf) \approx \langle \mathbf \rangle - \langle \mathbf \rangle \langle \mathbf^ \rangle , where the angular brackets denote sample averaging as before except that the
Bessel's correction In statistics, Bessel's correction is the use of ''n'' − 1 instead of ''n'' in the formula for the sample variance and sample standard deviation, where ''n'' is the number of observations in a sample. This method corrects the bias in ...
should be made to avoid
bias Bias is a disproportionate weight ''in favor of'' or ''against'' an idea or thing, usually in a way that is closed-minded, prejudicial, or unfair. Biases can be innate or learned. People may develop biases for or against an individual, a group, ...
. Using this estimation the partial covariance matrix can be calculated as : \operatorname(\mathbf,\mathbf \mid \mathbf) = \operatorname(\mathbf,\mathbf) - \operatorname(\mathbf,\mathbf) \left ( \operatorname(\mathbf,\mathbf) \backslash \operatorname(\mathbf,\mathbf) \right ), where the backslash denotes the left matrix division operator, which bypasses the requirement to invert a matrix and is available in some computational packages such as
Matlab MATLAB (an abbreviation of "MATrix LABoratory") is a proprietary multi-paradigm programming language and numeric computing environment developed by MathWorks. MATLAB allows matrix manipulations, plotting of functions and data, implementation ...
.L J Frasinski "Covariance mapping techniques" ''J. Phys. B: At. Mol. Opt. Phys.'' 49 152004 (2016)
open access
/ref> Fig. 1 illustrates how a partial covariance map is constructed on an example of an experiment performed at the
FLASH Flash, flashes, or FLASH may refer to: Arts, entertainment, and media Fictional aliases * Flash (DC Comics character), several DC Comics superheroes with super speed: ** Flash (Barry Allen) ** Flash (Jay Garrick) ** Wally West, the first Kid ...
free-electron laser A free-electron laser (FEL) is a (fourth generation) light source producing extremely brilliant and short pulses of radiation. An FEL functions and behaves in many ways like a laser, but instead of using stimulated emission from atomic or molecula ...
in Hamburg.O Kornilov, M Eckstein, M Rosenblatt, C P Schulz, K Motomura, A Rouzée, J Klei, L Foucar, M Siano, A Lübcke, F. Schapper, P Johnsson, D M P Holland, T Schlatholter, T Marchenko, S Düsterer, K Ueda, M J J Vrakking and L J Frasinski "Coulomb explosion of diatomic molecules in intense XUV fields mapped by partial covariance" ''J. Phys. B: At. Mol. Opt. Phys.'' 46 164028 (2013)
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/ref> The random function X(t) is the
time-of-flight Time of flight (ToF) is the measurement of the time taken by an object, particle or wave (be it acoustic, electromagnetic, etc.) to travel a distance through a medium. This information can then be used to measure velocity or path length, or as a w ...
spectrum of ions from a
Coulomb explosion In condensed-matter physics, Coulombic explosions are a mechanism for transforming energy in intense electromagnetic fields into atomic motion and are thus useful for controlled destruction of relatively robust molecules. The explosions are a pr ...
of nitrogen molecules multiply ionised by a laser pulse. Since only a few hundreds of molecules are ionised at each laser pulse, the single-shot spectra are highly fluctuating. However, collecting typically m=10^4 such spectra, \mathbf_j(t) , and averaging them over j produces a smooth spectrum \langle \mathbf(t) \rangle , which is shown in red at the bottom of Fig. 1. The average spectrum \langle \mathbf \rangle reveals several nitrogen ions in a form of peaks broadened by their kinetic energy, but to find the correlations between the ionisation stages and the ion momenta requires calculating a covariance map. In the example of Fig. 1 spectra \mathbf_j(t) and \mathbf_j(t) are the same, except that the range of the time-of-flight t differs. Panel a shows \langle \mathbf \rangle , panel b shows \langle \mathbf \rangle \langle \mathbf \rangle and panel c shows their difference, which is \operatorname(\mathbf,\mathbf) (note a change in the colour scale). Unfortunately, this map is overwhelmed by uninteresting, common-mode correlations induced by laser intensity fluctuating from shot to shot. To suppress such correlations the laser intensity I_j is recorded at every shot, put into \mathbf and \operatorname(\mathbf,\mathbf \mid \mathbf) is calculated as panels d and e show. The suppression of the uninteresting correlations is, however, imperfect because there are other sources of common-mode fluctuations than the laser intensity and in principle all these sources should be monitored in vector \mathbf . Yet in practice it is often sufficient to overcompensate the partial covariance correction as panel f shows, where interesting correlations of ion momenta are now clearly visible as straight lines centred on ionisation stages of atomic nitrogen.


Two-dimensional infrared spectroscopy

Two-dimensional infrared spectroscopy employs correlation analysis to obtain 2D spectra of the condensed phase. There are two versions of this analysis:
synchronous Synchronization is the coordination of events to operate a system in unison. For example, the conductor of an orchestra keeps the orchestra synchronized or ''in time''. Systems that operate with all parts in synchrony are said to be synchronou ...
and asynchronous. Mathematically, the former is expressed in terms of the sample covariance matrix and the technique is equivalent to covariance mapping.I Noda "Generalized two-dimensional correlation method applicable to infrared, Raman, and other types of spectroscopy" ''Appl. Spectrosc.'' 47 1329–36 (1993)


See also

*
Covariance function In probability theory and statistics, the covariance function describes how much two random variables change together (their ''covariance'') with varying spatial or temporal separation. For a random field or stochastic process ''Z''(''x'') on a ...
*
Multivariate statistics Multivariate statistics is a subdivision of statistics encompassing the simultaneous observation and analysis of more than one outcome variable. Multivariate statistics concerns understanding the different aims and background of each of the dif ...
* Lewandowski-Kurowicka-Joe distribution *
Gramian matrix In linear algebra, the Gram matrix (or Gramian matrix, Gramian) of a set of vectors v_1,\dots, v_n in an inner product space is the Hermitian matrix of inner products, whose entries are given by the inner product G_ = \left\langle v_i, v_j \right\r ...
*
Eigenvalue decomposition In linear algebra, eigendecomposition is the factorization of a matrix into a canonical form, whereby the matrix is represented in terms of its eigenvalues and eigenvectors. Only diagonalizable matrices can be factorized in this way. When the matr ...
*
Quadratic form (statistics) In multivariate statistics, if \varepsilon is a vector of n random variables, and \Lambda is an n-dimensional symmetric matrix, then the scalar quantity \varepsilon^T\Lambda\varepsilon is known as a quadratic form in \varepsilon. Expectation It ...
* Principal components


References


Further reading

* *
Covariance Matrix Explained With Pictures
, an easy way to visualize covariance matrices! * * {{DEFAULTSORT:Covariance Matrix Covariance and correlation Matrices Summary statistics