A discrete regularization method for hidden Markov models embedded into reproducing kernel Hilbert space

G. Kriukova
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Abstract

Hidden Markov models are a well-known probabilistic graphical model for time series of discrete, partially observable stochastic processes. We consider the method to extend the application of hidden Markov models to non-Gaussian continuous distributions by embedding a priori probability distribution of the state space into reproducing kernel Hilbert space. Corresponding regularization techniques are proposed to reduce the tendency to overfitting and computational complexity of the algorithm, i.e. Nystr¨om subsampling and the general regularization family for inversion of feature and kernel matrices. This method may be applied to various statistical inference and learning problems, including classification, prediction, identification, segmentation, and as an online algorithm it may be used for dynamic data mining and data stream mining. We investigate, both theoretically and empirically, the regularization and approximation bounds of the discrete regularization method. Furthermore, we discuss applications of the method to real-world problems, comparing the approach to several state-of-the-art algorithms.
嵌入到再现核希尔伯特空间的隐马尔可夫模型的离散正则化方法
隐马尔可夫模型是一个众所周知的概率图形模型,用于离散的,部分可观察的随机过程的时间序列。通过将状态空间的先验概率分布嵌入到再现核Hilbert空间中,将隐马尔可夫模型的应用扩展到非高斯连续分布。为了减少算法的过拟合倾向和计算复杂度,提出了相应的正则化技术,即nysterom子采样和用于特征和核矩阵反演的通用正则化族。该方法可应用于各种统计推理和学习问题,包括分类、预测、识别、分割,并作为一种在线算法可用于动态数据挖掘和数据流挖掘。我们从理论上和经验上研究了离散正则化方法的正则化界和近似界。此外,我们讨论了该方法在现实问题中的应用,并将该方法与几种最先进的算法进行了比较。
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