首页> 外文会议>Annual meeting of the Association for Computational Linguistics;ACL 2012 >Incremental Joint Approach to Word Segmentation, POS Tagging, and Dependency Parsing in Chinese
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Incremental Joint Approach to Word Segmentation, POS Tagging, and Dependency Parsing in Chinese

机译:中文的分词,POS标记和依存分析的增量联合方法

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We propose the first joint model for word segmentation, POS tagging, and dependency parsing for Chinese. Based on an extension of the incremental joint model for POS tagging and dependency parsing (Hatori et al., 2011), we propose an efficient character-based decoding method that can combine features from state-of-the-art segmentation, POS tagging, and dependency parsing models. We also describe our method to align comparable states in the beam, and how we can combine features of different characteristics in our incremental framework. In experiments using the Chinese Treebank (CTB), we show that the accuracies of the three tasks can be improved significantly over the baseline models, particularly by 0.6% for POS tagging and 2.4% for dependency parsing. We also perform comparison experiments with the partially joint models.
机译:我们提出了第一个联合模型,用于中文的分词,POS标记和依赖项解析。基于POS标记和依存关系解析的增量联合模型的扩展(Hatori等,2011),我们提出了一种有效的基于字符的解码方法,该方法可以结合最新细分,POS标记,和依赖项解析模型。我们还将描述对齐光束中可比状态的方法,以及如何在增量框架中组合不同特征的特征。在使用中文树库(CTB)进行的实验中,我们显示,与基线模型相比,这三个任务的准确性可以得到显着提高,特别是POS标记提高了0.6%,依赖性分析提高了2.4%。我们还使用部分联合模型执行比较实验。

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