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Expectation maximization based parameter estimation by sigma-point and particle smoothing

机译:基于期望最大化的西格玛点和粒子平滑参数估计

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We consider parameter estimation in non-linear state space models by using expectation-maximization based numerical approximations to likelihood maximization. We present a unified view of approximative EM algorithms that use either sigma-point or particle smoothers to evaluate the integrals involved in the expectation step of the EM method, and compare these methods to direct likelihood maximization. For models that are linear in parameters and have additive noise, we show how the maximization step of the EM algorithm is available in closed form. We compare the methods using simulated data, and discuss the differences between the approximations.
机译:我们通过使用基于期望最大化的数值近似到似然最大化来考虑非线性状态空间模型中的参数估计。我们提供了一个近似的EM算法的统一视图,该算法使用sigma-point或粒子平滑器来评估EM方法的期望步骤中涉及的积分,并将这些方法进行比较以指导似然最大化。对于参数为线性且具有加性噪声的模型,我们将说明如何以封闭形式使用EM算法的最大化步骤。我们使用模拟数据比较方法,并讨论近似值之间的差异。

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