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Particle approximations of the score and observed information matrix for parameter estimation in state space models with linear computational cost

机译:具有线性计算成本的状态空间模型中参数估计的分数和观测信息矩阵的粒子近似

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摘要

Poyiadjis et al. (2011) show how particle methods can be used to estimate both the score and the observed information matrix for state space models. These methods either suffer from a computational cost that is quadratic in the number of particles, or produce estimates whose variance increases quadratically with the amount of data. This paper introduces an alternative approach for estimating these terms at a computational cost that is linear in the number of particles. The method is derived using a combination of kernel density estimation, to avoid the particle degeneracy that causes the quadratically increasing variance, and Rao-Blackwellisation. Crucially, we show the method is robust to the choice of bandwidth within the kernel density estimation, as it has good asymptotic properties regardless of this choice. Our estimates of the score and observed information matrix can be used within both online and batch procedures for estimating parameters for state space models. Empirical results show improved parameter estimates compared to existing methods at a significantly reduced computational cost. Supplementary materials including code are available.
机译:Poyiadjis等。 (2011年)展示了如何使用粒子方法估计状态空间模型的得分和观察到的信息矩阵。这些方法要么遭受粒子数量二次方的计算成本,要么产生方差随数据量二次方增加的估计。本文介绍了一种替代方法,这些方法可估算这些项,且计算量在颗粒数方面呈线性关系。该方法是结合使用核密度估计(以避免引起二次方差增加的粒子简并性)和Rao-Blackwellisation组合得出的。至关重要的是,我们证明了该方法对于核密度估计中带宽的选择是鲁棒的,因为无论选择哪种方法,它都具有良好的渐近特性。我们对分数和观察到的信息矩阵的估计可用于在线和批处理过程中,以估计状态空间模型的参数。实验结果表明,与现有方法相比,参数估计值得到了改善,而计算成本却大大降低了。提供包括代码在内的补充材料。

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