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Sequential Bayesian inference for implicit hidden Markov models and current limitations

机译:隐式隐马尔可夫模型的顺序贝叶斯推断和当前局限性

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Hidden Markov models can describe time series arising in various fields of science, by treating the data as noisy measurements of an arbitrarily complex Markov process. Sequential Monte Carlo (SMC) methods have become standard tools to estimate the hidden Markov process given the observations and a fixed parameter value. We review some of the recent developments allowing the inclusion of parameter uncertainty as well as model uncertainty. The shortcomings of the currently available methodology are emphasised from an algorithmic complexity perspective. The statistical objects of interest for time series analysis are illustrated on a toy “Lotka-Volterra” model used in population ecology. Some open challenges are discussed regarding the scalability of the reviewed methodology to longer time series, higher-dimensional state spaces and more flexible models.
机译:通过将数据视为任意复杂的马尔可夫过程的噪声测量值,隐式马尔可夫模型可以描述在各个科学领域中出现的时间序列。顺序蒙特卡洛(SMC)方法已成为标准工具,可在给定观测值和固定参数值的情况下估算隐马尔可夫过程。我们回顾了一些最近的发展,允许包括参数不确定性和模型不确定性。从算法复杂性的角度强调了当前可用方法的缺点。时间序列分析中感兴趣的统计对象在人口生态学中使用的玩具“ Lotka-Volterra”模型中进行了说明。讨论了一些未解决的挑战,涉及所审查方法可扩展到更长的时间序列,更高维的状态空间和更灵活的模型。

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