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arxiv: 1612.01210 · v2 · pith:GFWEOZVJnew · submitted 2016-12-05 · 🧮 math.ST · stat.TH

On the regular conditional distribution of a multivariate Normal given a linear transformation

classification 🧮 math.ST stat.TH
keywords multivariatenormaldistributionlineartransformationconditionalgivenoperator
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We show that the orthogonal projection operator onto the range of the adjoint of a linear operator T can be represented as UT, where U is an invertible linear operator. Using this representation we obtain a decomposition of a multivariate Normal random variable Y as the sum of a linear transformation of Y that is independent of TY and an affine transformation of TY. We then use this decomposition to prove that the regular conditional distribution of a multivariate Normal random variable Y given a linear transformation TY is again a multivariate Normal distribution. This result is equivalent to the well-known result that given a k-dimensional component of a n-dimensional multivariate Normal random variable, where k < n, the regular conditional distribution of the remaining (n - k)-dimensional component is a (n - k)-dimensional multivariate Normal distribution.

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