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Learning interaction dynamics with coupled hidden Markov models

机译:使用耦合的隐马尔可夫模型学习交互动力学

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摘要

An analysis of interactions between different physiological control systems may only be possible with correlation functions if the signals have similar spectral distributions. Interactions between such signals can be modelled in state space rather than observation space, i.e. interactions are modelled after first translating the observations into a common domain. Coupled hidden Markov models (CHMM) are such state-space models. They form a natural extension to standard hidden Markov models. The authors perform CHMM parameter estimation under a Bayesian paradigm, using Gibbs sampling, and in a maximum likelihood framework, using the expectation maximisation algorithm. The Performance differences between the estimators are demonstrated on simulated data as well as biomedical data. It is shown that the proposed method gives meaningful results when comparing two different signals, such as respiration and EEG.
机译:如果信号具有相似的频谱分布,则只有通过相关函数才能对不同生理控制系统之间的相互作用进行分析。可以在状态空间而不是观察空间中对此类信号之间的交互进行建模,即在首先将观察结果转换为公共域之后对交互进行建模。耦合隐马尔可夫模型(CHMM)就是这样的状态空间模型。它们是对标准隐马尔可夫模型的自然扩展。作者使用Gibbs采样在贝叶斯范例下执行CHMM参数估计,并使用期望最大化算法在最大似然框架下执行CHMM参数估计。估算器之间的性能差异在模拟数据和生物医学数据上得到了证明。结果表明,该方法在比较呼吸和脑电信号两个不同信号时给出有意义的结果。

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