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Counting and Locating the Solutions of Polynomial Systems of Maximum Likelihood Equations, II: The Behrens-Fisher Problem

Abstract

Let μ\mu be a pp-dimensional vector, and let Σ1\Sigma_1 and Σ2\Sigma_2 be p×pp \times p positive definite covariance matrices. On being given random samples of sizes N1N_1 and N2N_2 from independent multivariate normal populations Np(μ,Σ1)N_p(\mu,\Sigma_1) and Np(μ,Σ2)N_p(\mu,\Sigma_2), respectively, the Behrens-Fisher problem is to solve the likelihood equations for estimating the unknown parameters μ\mu, Σ1\Sigma_1, and Σ2\Sigma_2. We shall prove that for N1,N2>pN_1, N_2 > p there are, almost surely, exactly 2p+12p+1 complex solutions of the likelihood equations. For the case in which p=2p = 2, we utilize Monte Carlo simulation to estimate the relative frequency with which a typical Behrens-Fisher problem has multiple real solutions; we find that multiple real solutions occur infrequently.

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