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ITERATED FILTERING

机译:迭代过滤

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摘要

Inference for partially observed Markov process models has been a longstanding methodological challenge with many scientific and engineering applications. Iterated filtering algorithms maximize the likelihood function for partially observed Markov process models by solving a recursive sequence of filtering problems. We present new theoretical results pertaining to the convergence of iterated filtering algorithms implemented via sequential Monte Carlo filters. This theory complements the. growing body of empirical evidence that iterated filtering algorithms provide an effective inference strategy for scientific models of nonlinear dynamic systems. The first step in our theory involves studying a new recursive approach for maximizing the likelihood function of a latent variable model, when this likelihood is evaluated via importance sampling. This leads to the consideration of an iterated importance sampling algorithm which serves as a simple special case of iterated filtering, and may have applicability in its own right.
机译:在许多科学和工程应用中,对部分观测到的马尔可夫过程模型的推论一直是方法学上的长期挑战。迭代滤波算法通过解决滤波问题的递归序列,使局部观察到的马尔可夫过程模型的似然函数最大化。我们提出了与通过顺序蒙特卡洛滤波器实现的迭代滤波算法的收敛性有关的新理论结果。这个理论是对它的补充。越来越多的经验证据表明,迭代滤波算法为非线性动力系统的科学模型提供了有效的推理策略。我们的理论的第一步涉及研究一种新的递归方法,当通过重要性抽样评估这种可能性时,该方法可以最大化潜在变量模型的可能性函数。这导致考虑了迭代重要性采样算法,该算法用作迭代过滤的简单特殊情况,并且可能具有自身的适用性。

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