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Minimax Optimal Rate for Parameter Estimation in Multivariate Deviated Models

27 January 2023
Dat Do
Huy Nguyen
Khai Nguyen
Nhat Ho
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Abstract

We study the maximum likelihood estimation (MLE) in the multivariate deviated model where the data are generated from the density function (1−λ∗)h0(x)+λ∗f(x∣μ∗,Σ∗)(1-\lambda^{\ast})h_{0}(x)+\lambda^{\ast}f(x|\mu^{\ast}, \Sigma^{\ast})(1−λ∗)h0​(x)+λ∗f(x∣μ∗,Σ∗) in which h0h_{0}h0​ is a known function, λ∗∈[0,1]\lambda^{\ast} \in [0,1]λ∗∈[0,1] and (μ∗,Σ∗)(\mu^{\ast}, \Sigma^{\ast})(μ∗,Σ∗) are unknown parameters to estimate. The main challenges in deriving the convergence rate of the MLE mainly come from two issues: (1) The interaction between the function h0h_{0}h0​ and the density function fff; (2) The deviated proportion λ∗\lambda^{\ast}λ∗ can go to the extreme points of [0,1][0,1][0,1] as the sample size tends to infinity. To address these challenges, we develop the \emph{distinguishability condition} to capture the linear independent relation between the function h0h_{0}h0​ and the density function fff. We then provide comprehensive convergence rates of the MLE via the vanishing rate of λ∗\lambda^{\ast}λ∗ to zero as well as the distinguishability of two functions h0h_{0}h0​ and fff.

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