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Hidden Markov Models with Affix Based Observation in the Field of Syntactic Analysis

机译:隐马尔可夫模型与句法分析领域的基于粘贴的观察

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This paper introduces Hidden Markov Models with N-gram observation based on words bound morphemes (affixes) used in natural language text processing focusing on the field of syntactic classification. In general, presented curtailment of the consecutive gram's affixes, decreases the accuracy in observation, but reveals statistically significant dependencies. Hence, considerably smaller size of the training data set is required. Therefore, the impact of affix observation on the knowledge generalization and associated with this improved word mapping is also described. The focal point of this paper is the evaluation of the HMM in the field of syntactic analysis for English and Polish language based on Penn and Sk?adnica treebank. In total, a 10 HMM differing in the structure of observation has been compared. The experimental results show the advantages of particular configuration.
机译:本文介绍了基于单词绑定的语素(附件)的N-Gram观察隐马尔可夫模型,其用于自然语言文本处理专注于句法分类领域。 通常,随着连续克的附件的缩减,降低了观察的准确性,但揭示了统计上显着的依赖关系。 因此,需要大大尺寸的训练数据集。 因此,还描述了对知识泛化和与这种改进的单词映射相关联的粘贴观察的影响。 本文的焦点是基于Penn和Sk的英语和波兰语法句法分析领域的肝病评估?Adnica TreeBank。 总共有10升性在观察结构中的不同程度上进行了比较。 实验结果表明了特定配置的优点。

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