Among the main goals in multiple change point problems are the estimation of the number and positions of the change points, as well as the regime structure in the clusters induced by those changes. The product partition model (PPM) is a widely used approach for the detection of multiple change points. The traditional PPM assumes that change points split the set of time points in random clusters that define a partition of the time axis. It is then typically assumed that sampling model parameter values within each of these blocks are identical. Because changes in different parameters of the observational model may occur at different times, the PPM thus fails to identify the parameters that experienced those changes. A similar problem may occur when detecting changes in multivariate time series. To solve this important limitation, we introduce a multipartition model to detect multiple change points occurring in several parameters at possibly different times. The proposed model assumes that the changes experienced by each parameter generate a different random partition of the time axis, which facilitates identifying which parameters have changed and when they do so. We discuss a partially collapsed Gibbs sampler scheme to implement posterior simulation under the proposed model. We apply the proposed model to identify multiple change points in Normal means and variances and evaluate the performance of the proposed model through Monte Carlo simulations and data illustrations. Its performance is compared with some previously proposed approaches for change point problems. These studies show that the proposed model is competitive and enriches the analysis of change point problems.
翻译:多变点问题的主要目标包括:估计变化点的数量和位置,以及这些变化引发的组群中的制度结构。产品分隔模型(PPM)是用来探测多变点的一种广泛使用的方法。传统的PPM假设,变化点将一组时间点分成随机组,以决定时间轴的间隔。然后通常假定,每个区块内的抽样模型参数值是相同的。由于观察模型不同参数的变化可能在不同的时间发生,PPM无法确定经历这些变化的参数。在发现多变时间序列的变化时,可能会出现类似的问题。为了解决这一重要的限制,我们引入了多变模式,以探测在可能不同的时间里发生的多变点。拟议的模型假设假定,每个参数所经历的变化产生不同的随机间隔,有助于确定哪些参数已经变化,何时变化。我们讨论一个部分崩溃的Gibs取样器计划,以在拟议模型下实施海景模拟。我们采用拟议的模型来确定常态手段中多变点和一些变异性模型,通过拟议的变现方法来评估拟议中的变异性模型。通过模拟和模拟模拟模拟,这些拟议数据是模拟,用来评估拟议中的变现方法。这些变现。