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首页> 外文期刊>Journal of statistical computation and simulation >Nonparametric particle filtering and smoothing with quasi-Monte Carlo sampling
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Nonparametric particle filtering and smoothing with quasi-Monte Carlo sampling

机译:使用准蒙特卡洛采样进行非参数粒子滤波和平滑

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摘要

Sequential Monte Carlo methods (also known as particle filters and smoothers) are used for filtering and smoothing in general state-space models. These methods are based on importance sampling. In practice, it is often difficult to find a suitable proposal which allows effective importance sampling. This article develops an original particle filter and an original particle smoother which employ nonparametric importance sampling. The basic idea is to use a nonparametric estimate of the marginally optimal proposal. The proposed algorithms provide a better approximation of the filtering and smoothing distributions than standard methods. The methods' advantage is most distinct in severely nonlinear situations. In contrast to most existing methods, they allow the use of quasi-Monte Carlo (QMC) sampling. In addition, they do not suffer from weight degeneration rendering a resampling step unnecessary. For the estimation of model parameters, an efficient on-line maximum-likelihood (ML) estimation technique is proposed which is also based on nonparametric approximations. All suggested algorithms have almost linear complexity for low-dimensional state-spaces. This is an advantage over standard smoothing and ML procedures. Particularly, all existing sequential Monte Carlo methods that incorporate QMC sampling have quadratic complexity. As an application, stochastic volatility estimation for high-frequency financial data is considered, which is of great importance in practice. The computer code is partly available as supplemental material.
机译:顺序蒙特卡罗方法(也称为粒子滤波器和平滑器)用于一般状态空间模型中的滤波和平滑。这些方法基于重要性抽样。在实践中,通常很难找到合适的建议进行有效的重要性抽样。本文开发了采用非参数重要性采样的原始粒子滤波器和原始粒子平滑器。基本思想是使用边际最优建议的非参数估计。所提出的算法比标准方法提供了更好的滤波和平滑分布近似值。在严重的非线性情况下,该方法的优势最为明显。与大多数现有方法相比,它们允许使用准蒙特卡洛(QMC)采样。此外,它们不会遭受重量退化的困扰,因此无需重新采样步骤。为了估计模型参数,提出了一种基于非参数逼近的有效在线最大似然(ML)估计技术。对于低维状态空间,所有建议的算法都具有几乎线性的复杂度。与标准平滑和ML程序相比,这是一个优势。特别是,所有现有的结合QMC采样的顺序蒙特卡洛方法都具有二次复杂度。作为一种应用,考虑了高频金融数据的随机波动率估计,这在实践中非常重要。计算机代码部分可作为补充材料使用。

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