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A New Method for Inferring Hidden Markov Models from Noisy Time Sequences

机译:从噪声时间序列推断隐马尔可夫模型的新方法

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摘要

We present a new method for inferring hidden Markov models from noisy time sequences without the necessity of assuming a model architecture, thus allowing for the detection of degenerate states. This is based on the statistical prediction techniques developed by Crutchfield et al. and generates so called causal state models, equivalent in structure to hidden Markov models. The new method is applicable to any continuous data which clusters around discrete values and exhibits multiple transitions between these values such as tethered particle motion data or Fluorescence Resonance Energy Transfer (FRET) spectra. The algorithms developed have been shown to perform well on simulated data, demonstrating the ability to recover the model used to generate the data under high noise, sparse data conditions and the ability to infer the existence of degenerate states. They have also been applied to new experimental FRET data of Holliday Junction dynamics, extracting the expected two state model and providing values for the transition rates in good agreement with previous results and with results obtained using existing maximum likelihood based methods. The method differs markedly from previous Markov-model reconstructions in being able to uncover truly hidden states.
机译:我们提出了一种从嘈杂的时间序列中推断隐马尔可夫模型的新方法,而无需假设模型架构,从而可以检测退化状态。这是基于Crutchfield等人开发的统计预测技术。并生成所谓的因果状态模型,其结构等效于隐马尔可夫模型。新方法适用于以离散值为簇,并在这些值之间表现出多次转换的任何连续数据,例如束缚粒子运动数据或荧光共振能量转移(FRET)光谱。已显示开发的算法在模拟数据上表现良好,证明了在高噪声下恢复用于生成数据的模型的能力,稀疏数据条件以及推断退化状态的能力。它们还已应用于霍利迪交界动力学的新实验FRET数据,提取了预期的两种状态模型,并提供了与先前结果以及使用现有基于最大似然方法获得的结果高度吻合的跃迁速率值。该方法与以前的马尔可夫模型重建显着不同,在于它能够发现真正的隐藏状态。

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