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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Embedding HMMs-based models in a Euclidean space: the topological hidden Markov models
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Embedding HMMs-based models in a Euclidean space: the topological hidden Markov models

机译:在欧氏空间中嵌入基于HMM的模型:拓扑隐式马尔可夫模型

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摘要

Current extensions of hidden Markov models such as structural, hierarchical, coupled, and others have the power to classify complex and highly organized patterns. However, one of their major limitations is the inability to cope with topology: When applied to a visible observation (VO) sequence, the traditional HMM-based techniques have difficulty predicting the n-dimensional shape formed by the symbols of the VO sequence. To fulfill this need, we propose a novel paradigm named "topological hidden Markov models" (THMMs) that classifies VO sequences by embedding the nodes of an HMM state transition graph in a Euclidean space. This is achieved by modeling the noise embedded in the shape generated by the VO sequence. We cover the first and second level topological HMMs. We describe five basic problems that are assigned to a second level topological hidden Markov model: (1) sequence probability evaluation, (2) statistical decoding, (3) structural decoding, (4) topological decoding, and (5) learning. To show the significance of this research, we have applied the concept of THMMs to: (i) predict the ASCII class assigned to a handwritten numeral, and (ii) map protein primary structures to their 3D folds. The results show that the second level THMMs outperform the SHMMs and the multi-class SVM classifiers significantly.
机译:隐藏的马尔可夫模型的当前扩展(例如结构,层次,耦合和其他模型)具有对复杂且高度组织的模式进行分类的能力。但是,它们的主要局限性之一是无法应对拓扑:当应用于可见观察(VO)序列时,传统的基于HMM的技术很难预测由VO序列的符号形成的n维形状。为了满足这一需求,我们提出了一种名为“拓扑隐式马尔可夫模型”(THMM)的新颖范例,该范例通过将HMM状态转换图的节点嵌入欧氏空间来对VO序列进行分类。这是通过对VO序列生成的形状中嵌入的噪声进行建模来实现的。我们介绍了第一级和第二级拓扑HMM。我们描述了分配给第二级拓扑隐藏Markov模型的五个基本问题:(1)序列概率评估,(2)统计解码,(3)结构解码,(4)拓扑解码和(5)学习。为了显示这项研究的重要性,我们将THMM的概念应用于:(i)预测分配给手写数字的ASCII类,以及(ii)将蛋白质一级结构映射到其3D折叠。结果表明,第二级THMM明显优于SHMM和多类SVM分类器。

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