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Estimation of Conditional Probabilities With Decision Trees and an Application to Fine-Grained POS Tagging

机译:用决策树的估算与微粒POS标记的条件概率

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We present a HMM part-of-speech tagging method which is particularly suited for POS tagsets with a large number of fine-grained tags. It is based on three ideas: (1) splitting of the POS tags into attribute vectors and decomposition of the contextual POS probabilities of the HMM into a product of attribute probabilities, (2) estimation of the contextual probabilities with decision trees, and (3) use of high-order HMMs. In experiments on German and Czech data, our tagger outperformed state-of-the-art POS taggers.
机译:我们介绍了一种嗯,语音标记方法,特别适用于具有大量细粒度标签的POS标记。它基于三个想法:(1)将POS标记分成属性向量和分解HMM中的上下文POS概率,进入属性概率的乘积,(2)与决策树的上下文概率估计(3 )使用高阶HMMS。在德国和捷克数据的实验中,我们的标签优于最先进的POS标记器。

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