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arxiv: 1401.3987 · v4 · pith:DZFYMIBBnew · submitted 2014-01-16 · 🧮 math.ST · stat.TH

Distribution of the largest root of a matrix for Roy's test in multivariate analysis of variance

classification 🧮 math.ST stat.TH
keywords mathsflargestanalysisdistributionexpressionindependentmatricesmultivariate
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Let ${\bf X, Y} $ denote two independent real Gaussian $\mathsf{p} \times \mathsf{m}$ and $\mathsf{p} \times \mathsf{n}$ matrices with $\mathsf{m}, \mathsf{n} \geq \mathsf{p}$, each constituted by zero mean i.i.d. columns with common covariance. The Roy's largest root criterion, used in multivariate analysis of variance (MANOVA), is based on the statistic of the largest eigenvalue, $\Theta_1$, of ${\bf{(A+B)}}^{-1} \bf{B}$, where ${\bf A =X X}^T$ and ${\bf B =Y Y}^T$ are independent central Wishart matrices. We derive a new expression and efficient recursive formulas for the exact distribution of $\Theta_1$. The expression can be easily calculated even for large parameters, eliminating the need of pre-calculated tables for the application of the Roy's test.

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