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Bandwidth selection in pre-smoothed particle filters

机译:预平滑粒子滤波器中的带宽选择

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For the purpose of maximum likelihood estimation of static parameters, we apply a kernel smoother to the particles in the standard SIR filter for non-linear state space models with additive Gaussian observation noise. This reduces the Monte Carlo error in the estimates of both the posterior density of the states and the marginal density of the observation at each time point. We correct for variance inflation in the smoother, which together with the use of Gaussian kernels, results in a Gaussian (Kalman) update when the amount of smoothing turns to infinity. We propose and study of a criterion for choosing the optimal bandwidth h in the kernel smoother. Finally, we illustrate our approach using examples from econometrics. Our filter is shown to be highly suited for dynamic models with high signal-to-noise ratio, for which the SIR filter has problems.
机译:为了最大程度地估计静态参数,我们对具有加性高斯观测噪声的非线性状态空间模型的标准SIR滤波器中的粒子应用内核平滑器。这减少了状态的后验密度和每个时间点观测值的边际密度的估计中的蒙特卡洛误差。我们对平滑器中的方差膨胀进行校正,并与高斯核一起使用,当平滑量变为无穷大时会导致高斯(Kalman)更新。我们提出并研究了在内核平滑器中选择最佳带宽h的准则。最后,我们使用计量经济学的例子来说明我们的方法。我们的滤波器非常适合信噪比高,SIR滤波器存在问题的动态模型。

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