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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A conditional random field-based model for joint sequence segmentation and classification
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A conditional random field-based model for joint sequence segmentation and classification

机译:基于条件随机场的联合序列分割与分类模型

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摘要

In this paper, we consider the problem of joint segmentation and classification of sequences in the framework of conditional random field (CRF) models. To effect this goal, we introduce a novel dual-functionality CRF model: on the first level, the proposed model conducts sequence segmentation, whereas, on the second level, the whole observed sequences are classified into one of the available learned classes. These two procedures are conducted in a joint, synergetic fashion, thus optimally exploiting the information contained in the used model training sequences. Model training is conducted by means of an efficient likelihood maximization algorithm, and inference is based on the familiar Viterbi algorithm. We evaluate the efficacy of our approach considering a real-world application, and we compare its performance to popular alternatives.
机译:在本文中,我们考虑在条件随机场(CRF)模型的框架中对序列进行联合分割和分类的问题。为实现此目标,我们引入了一种新颖的双重功能CRF模型:在第一层,提出的模型进行序列分割,而在第二层,将整个观察到的序列分类为可用的学习类中的一个。这两个过程以联合,协同的方式进行,因此可以最佳地利用所使用的模型训练序列中包含的信息。通过有效的似然最大化算法进行模型训练,并且推论基于熟悉的Viterbi算法。我们在考虑实际应用的情况下评估该方法的有效性,并将其性能与流行的替代方法进行比较。

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