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Limitations of Constrained CRB and an Alternative Bound

机译:受限CRB的局限性和替代约束

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The constrained Cramér-Rao bound (CCRB) is a mean-squared-error (MSE) lower bound for non-Bayesian constrained parameter estimation under some unbiasedness conditions. In this paper, we demonstrate limitations of this bound in the case of nonlinear parametric constraints. We consider the problem of constant modulus signal estimation. It is shown that in this problem the CCRB unbiasedness conditions are too restrictive and that the commonly-used constrained maximum likelihood (CML) estimator does not satisfy them and has lower MSE than the CCRB. An alternative lower bound, which is based on the Lehmann-unbiasedness conditions, is used as an alternative benchmark for constrained parameter estimation. As opposed to the CCRB, it is shown that this alternative bound is valid for the CML estimator in the considered problem.
机译:约束Cramér-Rao界(CCRB)是在某些无偏条件下用于非贝叶斯约束参数估计的均方误差(MSE)下界。在本文中,我们证明了在非线性参数约束的情况下该边界的局限性。我们考虑恒定模量信号估计的问题。结果表明,在该问题中,CCRB的无偏条件过于严格,并且常用的约束最大似然(CML)估计量不能满足这些要求,并且MSE低于CCRB。基于Lehmann无偏性条件的替代下限用作约束参数估计的替代基准。与CCRB相反,它表明在考虑的问题中,该替代边界对CML估计器有效。

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