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Optimal estimation under nonstandard conditions

机译:非标准条件下的最佳估计

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We analyze optimality properties of maximum likelihood (ML) and other estimators when the problem does not necessarily fall within the locally asymptotically normal (LAN) class, therefore covering cases that are excluded from conventional LAN theory such as unit root nonstationary time series. The classical Hajek-Le Cam optimality theory is adapted to cover this situation. We show that the expectation of certain monotone "bowl-shaped" functions of the squared estimation error are minimized by the ML estimator in locally asymptotically quadratic situations, which often occur in nonstationary time series analysis when the LAN property fails. Moreover, we demonstrate a direct connection between the (Bayesian property of) asymptotic normality of the posterior and the classical optimality properties of ML estimators.
机译:当问题不一定属于局部渐近正态(LAN)类时,我们分析最大似然(ML)和其他估计量的最优属性,因此涵盖了常规LAN理论中未包括的情况,例如单位根非平稳时间序列。经典的Hajek-Le Cam最优性理论适用于这种情况。我们显示平方估计误差的某些单调“碗形”函数的期望在局部渐近二次情况下由ML估计器最小化,这通常在LAN属性失效时的非平稳时间序列分析中发生。此外,我们证明了后验的渐近正态性的(贝叶斯性质)与ML估计量的经典最优性之间的直接联系。

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