阶乘变更点模型的顺序推理

A. Cemgil
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引用次数: 4

摘要

条件高斯变点模型是跳跃-马尔可夫动态线性系统的一个有趣的子类,与大多数此类棘手的混合模型不同,它可以在多项式时间内实现精确的推理。然而,许多感兴趣的应用涉及几个同时展开的过程,偶尔会有状态切换和共享观察结果。在这种情况下,阶乘模型更自然,其中每个流程都由变更点模型建模。在本文中,我们推导了一种顺序蒙特卡罗算法,类似于混合卡尔曼滤波器(MKF)[1]。然而,与MKF不同的是,我们模型的阶乘结构禁止计算后验滤波密度(最优建议分布)。即使评估基于几个交换机配置的可能性也很耗时。因此,我们推导了一种传播算法(向上向下),该算法利用模型的阶乘结构,便于在不需要反转大矩阵的情况下以信息形式计算卡尔曼滤波递归。为了激发模型的效用,我们在一个大型的复音音高跟踪模型上说明了我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Inference for Factorial Changepoint Models
Conditional Gaussian changepoint models are an interesting subclass of jump-Markov dynamic linear systems, in which, unlike the majority of such intractable hybrid models, exact inference is achievable in polynomial time. However, many applications of interest involve several simultaneously unfolding processes with occasional regime switches and shared observations. In such scenarios, a factorial model, where each process is modelled by a changepoint model is more natural. In this paper, we derive a sequential Monte Carlo algorithm, reminiscent to the Mixture Kalman filter (MKF) [1]. However, unlike MKF, the factorial structure of our model prohibits the computation of the posterior filtering density (the optimal proposal distribution). Even evaluating the likelihood conditioned on a few switch configurations can be time consuming. Therefore, we derive a propagation algorithm (upward-downward) that exploits the factorial structure of the model and facilitates computing Kalman filtering recursions in information form without the need for inverting large matrices. To motivate the utility of the model, we illustrate our approach on a large model for polyphonic pitch tracking.
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