多变更点问题的高效在线推理

P. Fearnhead, Z. Liu
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引用次数: 9

摘要

我们回顾了如何对一类多变化点模型执行精确的在线推理的工作。这些模型具有条件独立的结构,并且要求您能够将每个段内相关的参数(通过分析或数值方式)集成出来。每次观测的计算成本随着观测的数量线性增加。该算法与粒子滤波算法密切相关,我们描述了如何使用有效的重采样算法为这类模型生成精确的粒子滤波。
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Efficient Online Inference for Multiple Changepoint Problems
We review work on how to perform exact online inference for a class of multiple changepoint models. These models have a conditional independence structure, and require you to be able to integrate out (either analytically or numerically) the parameters associated within each segment. The computational cost per observation increases linearly with the number of observations. This algorithm is closely related to a particle filter algorithm, and we describe how efficient resampling algorithms can be used to produce an accurate particle filter for this class of models.
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