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JUMP-Means: Small-Variance Asymptotics for Markov Jump Processes

机译:Jump-measl:Markov跳跃过程的小方差渐近学

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Markov jump processes (MJPs) are used to model a wide range of phenomena from disease progression to RNA path folding. However, maximum likelihood estimation of parametric models leads to degenerate trajectories and inferential performance is poor in nonparametric models. We take a small-variance asymptotics (SVA) approach to overcome these limitations. We derive the small-variance asymptotics for parametric and nonparametric MJPs for both directly observed and hidden state models. In the parametric case we obtain a novel objective function which leads to non-degenerate trajectories. To derive the nonparametric version we introduce the gamma-gamma process, a novel extension to the gamma-exponential process. We propose algorithms for each of these formulations, which we call JUMP-means. Our experiments demonstrate that JUMP-means is competitive with or outperforms widely used MJP inference approaches in terms of both speed and reconstruction accuracy.
机译:马尔可夫跳跃过程(MJPS)用于模拟从疾病进展到RNA路径折叠的各种现象。然而,参数模型的最大似然估计导致退化的轨迹,并且在非参数模型中的推动性能差。我们采取了一个小方差渐近学(SVA)方法来克服这些限制。我们为直接观察和隐藏状态模型导出参数和非参数MJP的小方差渐变。在参数案例中,我们获得了一种新颖的客观函数,导致非退化的轨迹。为了派生非参数版本,我们介绍了Gamma-Gamma进程,是伽玛指数过程的新扩展。我们为每个配方提出算法,我们称之为跳转装置。我们的实验表明,在速度和重建精度方面,跳跃装置与广泛使用的MJP推理方法具有竞争力或优于竞争性。

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