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Unsupervised data classification using pairwise Markov chains with automatic copulas selection

机译:使用成对马尔可夫链和自动copulas选择进行无监督数据分类

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摘要

The Pairwise Markov Chain (PMC) model assumes the couple of observations and states processes to be a Markov chain. To extend the modeling capability of class-conditional densities involved in the PMC model, copulas are introduced and the influence of their shape on classification error rates is studied. In particular, systematic experiments show that the use of wrong copulas can degrade significantly classification performances. Then an algorithm is presented to identify automatically the right copulas from a finite set of admissible copulas, by extending the general "Iterative Conditional Estimation" (ICE) parameters estimation method to the context considered. The unsupervised segmentation of a radar image illustrates the nice behavior of the algorithm.
机译:成对马尔可夫链(PMC)模型假设一对观测值并将状态陈述为马尔可夫链。为了扩展PMC模型中涉及的分类条件密度的建模能力,引入了copulas,研究了其形状对分类错误率的影响。特别是,系统的实验表明,使用错误的系词会大大降低分类性能。然后提出一种算法,通过将通用的“迭代条件估计”(ICE)参数估计方法扩展到所考虑的上下文,来从一组有限的可容许copula中自动识别正确的copula。雷达图像的无监督分割说明了该算法的良好行为。

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