2.1 The Wishart distribution
The Wishart distribution is a family of distributions for symmetric positive definite matrices. Let X1,...,Xn be independent Np(0,Σ) and form a p×n data matrix X = [X1,...,Xn]. The distribution of a p × p random matrix is said to have the Wishart distribution.
Definition 1. The random matrix has the Wishart distribution with n degrees of freedom and covariance matrix Σ and is denoted by M ∼ Wp(n,Σ). For n ≥ p, the probability density function of M is
with respect to Lebesque measure on the cone of symmetric positive definite matrices. Here, Γp(α) is the multivariate gamma function
The precise form of the density is rarely used. Two exceptions are that i) in Bayesian computation, the Wishart distribution is often used as a conjugate prior for the inverse of normal covariance matrix and that ii) when symmetric positive definite matrices are the random elements of interest in diffusion tensor study.
The Wishart distribution is a multivariate extension of χ2 distribution. In particular, if is called the standard Wishart distribution.
The law of large numbers and the Cramer-Wold device leads to Mn/n → Σ in probabilityas n →∞.
Corollary 2. If M ∼ Wp(n,Σ) and a ∈Rp is such that , then
Theorem 3. If M ∼ Wp(n,Σ) and a ∈Rp and n > p−1, then
The previous theorem holds for any deterministic a ∈ Rp, thus holds for any randoma provided that the distribution of a is independent of M. This is important in the next subsection.
The following lemma is useful in a proof of Theorem 3
2.2 Hotelling’s T2 statistic
Definition 2. Suppose X and S are independent and such that
Then
is known as Hotelling’s T2 statistic.
Hotelling’s T2 statistic plays a similar role in multivariate analysis to that of the student’s t-statistic in univariate statistical analysis. That is, the application of Hotelling’s T2 statistic is of great practical importance in testing hypotheses about the mean of a multivariate normal distribution when the covariance matrix is unknown.
Theorem 5. If m > p−1,
A special case is when p = 1, where Theorem 5 indicates that Where isthe connection of the Hotelling’s T2 statistic to the student’s t-distribution? Note that we are indeed abusing the definition of ‘statistic’ here.
2.3 Samples from a multivariate normal distribution
Suppose X1,...,Xn are i.i.d. Np(µ,Σ). Denote the sample mean and sample variance by
Theorem 6. and S are independent, with
Corollary 7. The Hotelling’s T2 statistic for MVN sample is defined as
and we hav
(Incomplete) proof of Theorem 6. First note the following decomposition:
and recall the definition of the Wishart distribution.
It is easy to check the result on . The following argument is for the indepen-dence and the distribution of S.
Consider a new set of random vectors Yi (i = 1,...,n) from a linear combination of Xis by an orthogonal matrix D satisfying
Let
where is the p×n matrix of de-meaned random vectors. We claim thefollowing:
1. Yj are normally distributed.
The facts 1 and 2 show the independence, while facts 3 and 4 give the distribution of S.
Next lecture is on the inference about the multivariate normal distribution.
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1. What is the definition of a Wishart distribution? |
2. What are the properties of the Wishart distribution? |
3. How is the Wishart distribution related to multivariate normal distribution? |
4. What are the applications of the Wishart distribution? |
5. How can the Wishart distribution be simulated or sampled? |
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