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Joint semi-supervised learning of Hidden Conditional Random Fields and Hidden Markov Models

机译:隐条件随机场和隐马尔可夫模型的联合半监督学习

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摘要

Although semi-supervised learning has generated great interest tor designing classifiers on static patterns, there has been comparatively fewer works on semi-supervised learning for structured outputs and in particular for sequences. We investigate semi-supervised approaches for learning hidden state conditional random fields for sequence classification. We propose a new approach that iteratively learns a pair of discriminative-generative models, namely Hidden Markov Models (HMMs) and Hidden Conditional Random Fields (HCRFs), Our method builds on simple strategies for semi-supervised learning of HMMs and on strategies for initializing HCRFs from HMMs. We investigate the behavior of the method on artificial data and provide experimental results for two real problems, handwritten character recognition and financial chart pattern recognition. We compare our approach with state of the art semi-supervised methods.
机译:尽管半监督学习引起了人们对静态模式设计分类器的极大兴趣,但针对结构化输出(尤其是序列)的半监督学习工作却相对较少。我们研究用于学习隐藏状态条件随机字段进行序列分类的半监督方法。我们提出了一种迭代学习一对判别式生成模型的新方法,即隐马尔可夫模型(HMM)和隐式条件随机字段(HCRF)。我们的方法基于简单的HMM半监督学习策略和初始化策略HMM的HCRF。我们调查该方法在人工数据上的行为,并为两个实际问题(手写字符识别和财务图表模式识别)提供实验结果。我们将我们的方法与最新的半监督方法进行比较。

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