Multivariate stable distribution

From testwiki
Revision as of 17:53, 9 February 2021 by imported>Jonesey95 (Fix Linter errors)
(diff) โ† Older revision | Latest revision (diff) | Newer revision โ†’ (diff)
Jump to navigation Jump to search

Template:Probability distribution

The multivariate stable distribution is a multivariate probability distribution that is a multivariate generalisation of the univariate stable distribution. The multivariate stable distribution defines linear relations between stable distribution marginals.Template:Clarify In the same way as for the univariate case, the distribution is defined in terms of its characteristic function.

The multivariate stable distribution can also be thought as an extension of the multivariate normal distribution. It has parameter, α, which is defined over the range 0 < α โ‰ค 2, and where the case α = 2 is equivalent to the multivariate normal distribution. It has an additional skew parameter that allows for non-symmetric distributions, where the multivariate normal distribution is symmetric.

Definition

Let ๐•Š be the unit sphere in โ„d:๐•Š={uโ„d:|u|=1}. A random vector, X, has a multivariate stable distribution - denoted as XS(α,Λ,δ) -, if the joint characteristic function of X is[1]

Eexp(iuTX)=exp{s๐•Š{|uTs|α+iν(uTs,α)}Λ(ds)+iuTδ}

where 0 < α < 2, and for yโ„

ν(y,α)={๐ฌ๐ข๐ ๐ง(y)tan(πα/2)|y|αα1,(2/π)yln|y|α=1.

This is essentially the result of Feldheim,[2] that any stable random vector can be characterized by a spectral measure Λ (a finite measure on ๐•Š) and a shift vector δโ„d.

Parametrization using projections

Another way to describe a stable random vector is in terms of projections. For any vector u, the projection uTX is univariate αstable with some skewness β(u), scale γ(u) and some shift δ(u). The notation XS(α,β(),γ(),δ()) is used if X is stable with uTXs(α,β(),γ(),δ()) for every uโ„d. This is called the projection parameterization.

The spectral measure determines the projection parameter functions by:

γ(u)=(s๐•Š|uTs|αΛ(ds))1/α
β(u)=s๐•Š|uTs|α๐ฌ๐ข๐ ๐ง(uTs)Λ(ds)/γ(u)α
δ(u)={uTδα1uTδs๐•Šπ2uTsln|uTs|Λ(ds)α=1

Special cases

There are special cases where the multivariate characteristic function takes a simpler form. Define the characteristic function of a stable marginal as

ω(y|α,β)={|y|α[1iβ(tanπα2)๐ฌ๐ข๐ ๐ง(y)]α1|y|[1+iβ2π๐ฌ๐ข๐ ๐ง(y)ln|y|]α=1

Isotropic multivariate stable distribution

The characteristic function is Eexp(iuTX)=exp{γ0α|u|α+iuTδ)} The spectral measure is continuous and uniform, leading to radial/isotropic symmetry.[3] For the multinormal case α=2, this corresponds to independent components, but so is not the case when α<2. Isotropy is a special case of ellipticity (see the next paragraph) – just take Σ to be a multiple of the identity matrix.

Elliptically contoured multivariate stable distribution

The elliptically contoured multivariate stable distribution is a special symmetric case of the multivariate stable distribution. If X is α-stable and elliptically contoured, then it has joint characteristic function Eexp(iuTX)=exp{(uTΣu)α/2+iuTδ)} for some shift vector δRd (equal to the mean when it exists) and some positive definite matrix Σ (akin to a correlation matrix, although the usual definition of correlation fails to be meaningful). Note the relation to characteristic function of the multivariate normal distribution: Eexp(iuTX)=exp{(uTΣu)+iuTδ)} obtained when α = 2.

Independent components

The marginals are independent with XjS(α,βj,γj,δj), then the characteristic function is

Eexp(iuTX)=exp{j=1mω(uj|α,βj)γjα+iuTδ)}

Observe that when α = 2 this reduces again to the multivariate normal; note that the iid case and the isotropic case do not coincide when α < 2. Independent components is a special case of discrete spectral measure (see next paragraph), with the spectral measure supported by the standard unit vectors.

Heatmap showing a multivariate (bivariate) independent stable distribution with α = 1
Heatmap showing a multivariate (bivariate) independent stable distribution with α = 2

Discrete

If the spectral measure is discrete with mass λj at sj๐•Š,j=1,,m the characteristic function is

Eexp(iuTX)=exp{j=1mω(uTsj|α,1)λjα+iuTδ)}

Linear properties

If XS(α,β(),γ(),δ()) is d-dimensional, A is an m x d matrix, and bโ„m, then AX + b is m-dimensional α-stable with scale function γ(AT), skewness function β(AT), and location function δ(AT)+bT.

Inference in the independent component model

Recently[4] it was shown how to compute inference in closed-form in a linear model (or equivalently a factor analysis model), involving independent component models.

More specifically, let XiS(α,βxi,γxi,δxi),i=1,,n be a set of i.i.d. unobserved univariate drawn from a stable distribution. Given a known linear relation matrix A of size n×n, the observation Yi=i=1nAijXj are assumed to be distributed as a convolution of the hidden factors Xi. Yi=S(α,βyi,γyi,δyi). The inference task is to compute the most probable Xi, given the linear relation matrix A and the observations Yi. This task can be computed in closed-form in O(n3).

An application for this construction is multiuser detection with stable, non-Gaussian noise.

See also

Resources

Notes

Template:Reflist

Template:ProbDistributions

  1. โ†‘ J. Nolan, Multivariate stable densities and distribution functions: general and elliptical case, BundesBank Conference, Eltville, Germany, 11 November 2005. See also http://academic2.american.edu/~jpnolan/stable/stable.html
  2. โ†‘ Feldheim, E. (1937). Etude de la stabilitรฉ des lois de probabilitรฉ . Ph. D. thesis, Facultรฉ des Sciences de Paris, Paris, France.
  3. โ†‘ User manual for STABLE 5.1 Matlab version, Robust Analysis Inc., http://www.RobustAnalysis.com
  4. โ†‘ D. Bickson and C. Guestrin. Inference in linear models with multivariate heavy-tails. In Neural Information Processing Systems (NIPS) 2010, Vancouver, Canada, Dec. 2010. https://www.cs.cmu.edu/~bickson/stable/