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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A Markov random field-regulated Pitman-Yor process prior for spatially constrained data clustering
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A Markov random field-regulated Pitman-Yor process prior for spatially constrained data clustering

机译:用于空间受限数据聚类的Markov随机场调节Pitman-Yor过程

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摘要

In this work, we propose a Markov random field-regulated Pitman-Yor process (MRF-PYP) prior for nonparametric clustering of data with spatial interdependencies. The MRF-PYP is constructed by imposing a Pitman-Yor process over the distribution of the latent variables that allocate data points to clusters (model states), the discount hyperparameter of which is regulated by an additionally postulated simplified (pointwise) Markov random field (Gibbsian) distribution with a countably infinite number of states. Further, based on the stick-breaking construction of the Pitman-Yor process, we derive an efficient truncated variational Bayesian algorithm for model inference. We examine the efficacy of our approach by considering an unsupervised image segmentation application using a real-world dataset. We show that our approach completely outperforms related methods from the field of Bayesian nonparametrics, including the recently proposed infinite hidden Markov random field model and the Dirichlet process prior.
机译:在这项工作中,我们提出了具有空间相互依赖关系的数据非参数聚类之前的马尔可夫随机场调节Pitman-Yor过程(MRF-PYP)。 MRF-PYP是通过在将数据点分配给聚类(模型状态)的潜在变量的分布上施加Pitman-Yor过程而构造的,其潜在折扣超参数由另外假定的简化(逐点)马尔可夫随机字段( Gibbsian)分布,其中包含无限多个状态。此外,基于Pitman-Yor过程的突破性构造,我们推导了一种有效的截断变分贝叶斯算法,用于模型推断。我们通过考虑使用真实数据集的无监督图像分割应用程序来检验我们方法的有效性。我们表明,我们的方法完全优于贝叶斯非参数领域的相关方法,包括最近提出的无限隐马尔可夫随机场模型和先前的Dirichlet过程。

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