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On sequential spectral analysis of amplitude-modulated time series

机译:关于幅度调制时间序列的顺序频谱分析

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Consider a zero-mean and second-order stationary time series of interest that cannot be observed directly. Instead an amplitude-modulated time series is observed where is a stationary Bernoulli time series and is a time series of independent variables satisfying and Time series creates missing observations when A(t) = 0, and U-t modulates not missed X-t. There is bad and good news about spectral analysis of amplitude-modulated time series. The bad news is that in general consistent estimation of the spectral density is impossible. The good news is that the spectral shape (which is the spectral density minus ) multiplied by factor may be consistently estimated. This article, for the first time in the literature, explores a classical problem of sequential nonparametric estimation of the scaled shape with assigned mean integrated square error. It proposes an adaptive sequential estimator that solves the problem and whose mean stopping time matches the performance of a minimax oracle that knows an underlying spectral density and the amplitude-modulating mechanism. The asymptotic theory is complemented by numerical examples.
机译:考虑无法直接观察到的零均值和二阶固定时间序列。相反,观察到静止Bernoulli时间序列的幅度调制时间序列是静止的Bernoulli时间序列,并且是令人满意的独立变量的时间序列,并且时间序列在α(t)= 0时创建缺失的观察,并且U-T调制不会错过X-T。有关幅度调制时间序列的光谱分析,存在糟糕和好消息。坏消息是,一般来说,对光谱密度的一致估计是不可能的。好消息是可以始终如一地估计乘以因子乘以因子的光谱形状(这是光谱密度减去)。本文在文献中首次探讨了具有指定平均集成方误差的缩放形状的顺序非参数估计的经典问题。它提出了一种自适应顺序估计器,其解决问题并且其平均停止时间与了解底层光谱密度和幅度调制机制的最小甲骨文的性能。渐近理论由数值例子补充。

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