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Grammatical Error Detection and Correction using a Single Maximum Entropy Model

机译:使用单个最大熵模型的语法错误检测和校正

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This paper describes the system of Shanghai Jiao Tong Unvierity team in the CoNLL-2014 shared task. Error correction operations are encoded as a group of predefined labels and therefore the task is formulized as a multi-label classification task. For training, labels are obtained through a strict rule-based approach. For decoding, errors are detected and corrected according to the classification results. A single maximum entropy model is used for the classification implementation incorporated with an improved feature selection algorithm. Our system achieved precision of 29.83, recall of 5.16 and F_0.5 of 15.24 in the official evaluation.
机译:本文介绍了上海娇彤的系统在2014年同盟共同任务中的上海娇彤不经历。 纠错操作被编码为一组预定义标签,因此任务被制定为多标签分类任务。 对于培训,通过严格的基于规则的方法获得标签。 为了解码,根据分类结果检测和校正错误。 单个最大熵模型用于包含改进的特征选择算法的分类实现。 我们的系统在官方评估中实现了29.83的精度,召回5.16和F_0.5的15.24。

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