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Disentangled Sticky Hierarchical Dirichlet Process Hidden Markov Model

机译:Disentangled Sticky分层Dirichlet Process隐马尔可夫模型

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The Hierarchical Dirichlet Process Hidden Markov Model (HDP-HMM) has been used widely as a natural Bayesian nonparamet-ric extension of the classical Hidden Markov Model for learning from sequential and time-series data. A sticky extension of the HDP-HMM has been proposed to strengthen the self-persistence probability in the HDP-HMM. However, the sticky HDP-HMM entangles the strength of the self-persistence prior and transition prior together, limiting its expressiveness. Here, we propose a more general model: the disentangled sticky HDP-HMM (DS-HDP-HMM). We develop novel Gibbs sampling algorithms for efficient inference in this model. We show that the disentangled sticky HDP-HMM outperforms the sticky HDP-HMM and HDP-HMM on both synthetic and real data, and apply the new approach to analyze neural data and segment behavioral video data.
机译:分层Dirichlet Process隐马尔可夫模型(HDP-HMM)已被广泛使用,作为自然贝叶斯非参数-RIC扩展,用于从顺序和时间序列数据学习。 已经提出了HDP-HMM的粘性延伸,以增强HDP-HMM中的自持续概率。 然而,粘性HDP-HMM在先前和过渡之前纠缠于自我持久性的强度,限制了其表现力。 在这里,我们提出了一种更一般的模型:解毒粘性HDP-HMM(DS-HDP-HMM)。 我们开发新型GIBBS采样算法,以便在该模型中有效推断。 我们表明,解开了粘性HDP-HMM在合成和实际数据上表现出粘性HDP-HMM和HDP-HMM,并应用新方法来分析神经数据和分段行为视频数据。

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