Positive-definite function

In mathematics, a positive-definite function is, depending on the context, either of two types of function.

be the set of real numbers and

be the set of complex numbers.

is called positive semi-definite if for all real numbers x1, …, xn the n × n matrix is a positive semi-definite matrix.

[citation needed] By definition, a positive semi-definite matrix, such as

, is Hermitian; therefore f(−x) is the complex conjugate of f(x)).

In particular, it is necessary (but not sufficient) that (these inequalities follow from the condition for n = 1, 2.)

A function is negative semi-definite if the inequality is reversed.

A function is definite if the weak inequality is replaced with a strong (<, > 0).

is a real inner product space, then

we have As nonnegative linear combinations of positive definite functions are again positive definite, the cosine function is positive definite as a nonnegative linear combination of the above functions: One can create a positive definite function

easily from positive definite function

: choose a linear function

[1] Positive-definiteness arises naturally in the theory of the Fourier transform; it can be seen directly that to be positive-definite it is sufficient for f to be the Fourier transform of a function g on the real line with g(y) ≥ 0.

The converse result is Bochner's theorem, stating that any continuous positive-definite function on the real line is the Fourier transform of a (positive) measure.

[2] In statistics, and especially Bayesian statistics, the theorem is usually applied to real functions.

Typically, n scalar measurements of some scalar value at points in

are taken and points that are mutually close are required to have measurements that are highly correlated.

In practice, one must be careful to ensure that the resulting covariance matrix (an n × n matrix) is always positive-definite.

One strategy is to define a correlation matrix A which is then multiplied by a scalar to give a covariance matrix: this must be positive-definite.

Bochner's theorem states that if the correlation between two points is dependent only upon the distance between them (via function f), then function f must be positive-definite to ensure the covariance matrix A is positive-definite.

In this context, Fourier terminology is not normally used and instead it is stated that f(x) is the characteristic function of a symmetric probability density function (PDF).

One can define positive-definite functions on any locally compact abelian topological group; Bochner's theorem extends to this context.

Positive-definite functions on groups occur naturally in the representation theory of groups on Hilbert spaces (i.e. the theory of unitary representations).

is called positive-definite on a neighborhood D of the origin if

is sometimes dropped (see, e.g., Corney and Olsen[5]).