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首页> 外文期刊>International journal of systems science >Robust maximum likelihood estimation for stochastic state space model with observation outliers
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Robust maximum likelihood estimation for stochastic state space model with observation outliers

机译:带有观测值异常值的随机状态空间模型的鲁棒最大似然估计

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The objective of this paper is to develop a robust maximum likelihood estimation (MLE) for the stochastic state space model via the expectation maximisation algorithm to cope with observation outliers. Two types of outliers and their influence are studied in this paper: namely,the additive outlier (AO) and innovative outlier (IO). Due to the sensitivity of the MLE to AO and IO, we propose two techniques for robustifying the MLE: the weighted maximum likelihood estimation (WMLE) and the trimmed maximum likelihood estimation (TMLE). The WMLE is easy to implement with weights estimated from the data; however, it is still sensitive to IO and a patch of AO outliers. On the other hand, the TMLE is reduced to a combinatorial optimisation problem and hard to implement but it is efficient to both types of outliers presented here. To overcome the difficulty, we apply the parallel randomised algorithm that has a low computational cost. A Monte Carlo simulation result shows the efficiency of the proposed algorithms.
机译:本文的目的是通过期望最大化算法来为随机状态空间模型开发鲁棒的最大似然估计(MLE),以应对观测值异常。本文研究了两种离群值及其影响:即加性离群值(AO)和创新离群值(IO)。由于MLE对AO和IO的敏感性,我们提出了两种用于增强MLE的技术:加权最大似然估计(WMLE)和修剪后的最大似然估计(TMLE)。 WMLE易于实现,并且可以根据数据估算权重。但是,它仍然对IO和AO离群值敏感。另一方面,TMLE简化为组合优化问题,难以实施,但对于此处介绍的两种异常值均有效。为了克服这一困难,我们采用了计算成本低的并行随机算法。蒙特卡罗仿真结果表明了所提算法的有效性。

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