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Kernel estimators of mode under Psi-weak dependence

机译:Psi-弱依赖下模式的核估计

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摘要

Nonparametric kernel-type estimation is discussed for modes which maximize nonparametric kernel-type density estimators. The discussion is made under a weak dependence condition which unifies weak dependence conditions such as mixing, association, Gaussian sequences and Bernoulli shifts. Consistency and asymptotic normality are established for the mode estimator as well as for kernel estimators of density derivatives. The convergence rate of the mode estimator is given in terms of the bandwidth. An optimal bandwidth selection procedure is proposed for mode estimation. A Monte-Carlo experiment shows that the proposed bandwidth yields a substantially better mode estimator than the common bandwidths optimized for density estimation. Modes of log returns of Dow Jones index and foreign exchange rates of US Dollar relative to Euro are investigated in terms of asymmetry.
机译:针对最大化非参数内核类型密度估计器的模式,讨论了非参数内核类型估计。讨论是在弱依赖条件下进行的,弱依赖条件统一了诸如混合,关联,高斯序列和伯努利位移之类的弱依赖条件。建立了模式估计量和密度导数的核估计量的一致性和渐近正态性。模式估计器的收敛速率根据带宽给出。提出了一种用于模式估计的最优带宽选择程序。蒙特卡洛实验表明,与为密度估计而优化的公共带宽相比,拟议的带宽可产生更好的模式估计器。通过非对称性研究了道琼斯指数的对数收益率模式和美元对欧元的汇率。

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