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The Multivariate Normal Distribution, Part 2 BMTRY 726 1/14/2014
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Multivariate Normal PDF Recall the pdf for the MVN distribution Where – x is a p -length vector of observed variables – is also a p -length vector and E(x)= – is a p x p matrix, and Var(x)= Note, must also be positive definite
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Univariate and Bivariate Normal
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Contours of Constant Density Recall projections of f(x) onto the hyperplane created by x are called contours of constant density Properties include: – P-dimensional ellipsoid defined by: – Centered at – Axes lengths:
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Bivariate Examples
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Why Multivariate Normal Recall, statisticians like the MVN distribution because… – Mathematically simple – Multivariate central limit theorem applies – Natural phenomena are often well approximated by a MVN distribution So what are some “fun” mathematical properties that make is so nice?
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Properties of MVN Result 4.2: If then has a univariate normal distribution with mean and variance
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Example
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Properties of MVN Result 4. 3: Any linear transformation of a multivatiate normal random vector has a normal distribution So if and and B is a k x p matrix of constants then
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Spectral Decomposition Given is a non-negative definite, symmetric, real matrix, then can be decomposed according to: Where the eigenvalues are The eigenvectors of are e 1, e 2,...,e p And these satisfy the expression
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Where Recall that Then And
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Definition: The square root of is And Also
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From this it follows that the inverse square root of is Note This leads us to the transformation to the canonical form: If
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Marginal Distributions Result 4.4: Consider subsets of X i ’s in X. These subsets are also distributed (multivariate) normal. If Then the marginal distributions of X 1 and X 2 is
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Example Consider, find the marginal distribution of the 1 st and 3 rd components
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Example Consider, find the marginal distribution of the 1 st and 3 rd components
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Marginal Distributions cont’d The converse of result 4.4 is not always true, an additional assumption is needed. Result 4.5(c): If… and X 1 is independent of X 2 then
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Result 4. 5(a): If X 1(q x 1) and X 2(p-q x 1) are independent then Cov(X 1,X 2 ) = 0 (b) If Then X 1(q x 1) and X 2(p-q x 1) are independent iff
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Example Consider Are x 1 and x 2 independent of x 3 ?
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Conditional Distributions Result 4.6: Suppose Then the conditional distribution of X 1 given that X 2 = x 2 is a normal distribution Note the covariance matrix does not depend on the value of x 2
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Proof of Result 4.6
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Multiple Regression Consider The conditional distribution of Y|X=x is univariate normal with
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Example Consider find the conditional distribution of the 1 st and 3 rd components
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Example
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Result 4.7: If and is positive definite, then Proof:
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Result 4.7: If and is positive definite, then Proof cont’d:
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Result 4.8: If are mutually independent with Then Where vector of constants And are n constants. Additionally if we have and which are r x p matrices of constants we can also say
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Sample Data Let’s say that X 1, X 2, …, X n are i.i.d. random vectors If the data vectors are sampled from a MVN distribution then
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Multivariate Normal Likelihood We can also look at the joint likelihood of our random sample
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Some needed Results (1) Given A > 0 and are eigenvalues of A (a) (b) (c) (2) From (c) we can show that:
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Some needed Results (2) Proof that:
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Some needed Results (2) Proof that:
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Some needed Results (1) Given A > 0 and are eigenvalues of A (a) (b) (c) (2) From (c) we can show that: (3) Given pxp > 0, B pxp > 0 and scalar b > 0
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MLE’s for.
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Next Time Sample means and covariance The Wishart distribution Introduction of some basic statistical tests
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