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Using Decision Trees to Construct a Practical Parser

机译:使用决策树构造实用的解析器

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This paper describes novel and practical Japanese parsers that uses decision trees. First, we construct a single decision tree to estimate modification probabilities; how one phrase tends to modify another. Next, we introduce a boosting algorithm in which several decision trees are constructed and then combined for probability estimation. The two constructed parsers are evaluated by using the EDR Japanese annotated corpus. The single-tree method outperforms the conventional Japanese stochastic methods by 4percent. Moreover, the boosting version is shown to have significant advantages; 1) better parsing accuracy than its single-tree counterpart for any amount of training data and 2) no over-fitting to data for various iterations.
机译:本文介绍了使用决策树的新颖实用的日语解析器。首先,我们构造一个决策树来估计修改概率;一个短语如何修饰另一个短语。接下来,我们介绍一种增强算法,其中构造了多个决策树,然后将其组合以进行概率估计。这两个构造的解析器使用EDR日语注释语料库进行评估。单树方法比传统的日本随机方法高出4%。而且,增强版本具有显着的优势。 1)在任何数量的训练数据上,其单树解析精度都更高; 2)对于各种迭代,数据都不会过度拟合。

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