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Efficient prediction for linear and nonlinear autoregressive models

机译:线性和非线性自回归模型的有效预测

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Conditional expectations given past observations in stationary time series are usually estimated directly by kernel estimators, or by plugging in kernel estimators for transition densities. We show that, for linear and nonlinear autoregressive models driven by independent innovations, appropriate smoothed and weighted von Mises statistics of residuals estimate conditional expectations at better parametric rates and are asymptotically efficient. The proof is based on a uniform stochastic expansion for smoothed and weighted von Mises processes of residuals. We consider, in particular, estimation of conditional distribution functions and of conditional quantile functions.
机译:通常通过核估计器或通过插入核估计器来获得过渡密度,来直接估计过去在固定时间序列中观察到的条件期望。我们表明,对于由独立创新驱动的线性和非线性自回归模型,适当的残差平滑和加权冯·米塞斯统计量可以更好的参数速率估计条件期望,并且渐近有效。该证明基于对残差的平滑和加权冯·米塞斯过程的均匀随机扩展。我们特别考虑条件分布函数和条件分位数函数的估计。

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