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Robust classification of multivariate time series by imprecise hidden Markov models

机译:通过不精确的隐马尔可夫模型对多元时间序列进行稳健分类

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摘要

A novel technique to classify time series with imprecise hidden Markov models is presented. The learning of these models is achieved by coupling the EM algorithm with the imprecise Dirichlet model. In the stationarity limit, each model corresponds to an imprecise mixture of Gaussian densities, this reducing the problem to the classification of static, imprecise-probabilistic, information. Two classifiers, one based on the expected value of the mixture, the other on the Bhattacharyya distance between pairs of mixtures, are developed. The computation of the bounds of these descriptors with respect to the imprecise quantification of the parameters is reduced to, respectively, linear and quadratic optimization tasks, and hence efficiently solved. Classification is performed by extending the k-nearest neighbors approach to interval-valued data. The classifiers are credal, meaning that multiple class labels can be returned in the output. Experiments on benchmark datasets for computer vision show that these methods achieve the required robustness whilst outperforming other precise and imprecise methods.
机译:提出了一种用不精确的隐马尔可夫模型对时间序列进行分类的新技术。这些模型的学习是通过将EM算法与不精确的Dirichlet模型耦合来实现的。在平稳性极限中,每个模型对应于高斯密度的不精确混合,这将问题减少到静态,不精确概率信息的分类中。开发了两个分类器,一个基于混合物的期望值,另一个基于混合物对之间的Bhattacharyya距离。相对于参数的不精确量化,这些描述符的边界的计算分别减少到线性和二次优化任务,因此得到有效解决。通过将k最近邻居方法扩展到间隔值数据来执行分类。分类器是credal的,这意味着可以在输出中返回多个类标签。在用于计算机视觉的基准数据集上进行的实验表明,这些方法在达到所需的鲁棒性的同时,胜过其他精确和不精确的方法。

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