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Correcting Grammatical Verb Errors

机译:纠正语法动词错误

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摘要

Verb errors are some of the most common mistakes made by non-native writers of English but some of the least studied. The reason is that dealing with verb errors requires a new paradigm; essentially all research done on correcting grammatical errors assumes a closed set of triggers - e.g., correcting the use of prepositions or articles - but identifying mistakes in verbs necessitates identifying potentially ambiguous triggers first, and then determining the type of mistake made and correcting it. Moreover, once the verb is identified, modeling verb errors is challenging because verbs fulfill many grammatical functions, resulting in a variety of mistakes. Consequently, the little earlier work done on verb errors assumed that the error type is known in advance. We propose a linguistically-motivated approach to verb error correction that makes use of the notion of verb finiteness to identify triggers and types of mistakes, before using a statistical machine learning approach to correct these mistakes. We show that the linguistically-informed model significantly improves the accuracy of the verb correction approach.
机译:动词错误是非英语母语人士最常犯的错误,但研究最少。原因是处理动词错误需要新的范式。基本上,所有有关纠正语法错误的研究都假设一组封闭的触发器-例如,纠正介词或冠词的使用-但要识别动词中的错误,必须先识别潜在的模棱两可的触发器,然后确定所犯错误的类型并对其进行纠正。而且,一旦确定了动词,对动词错误进行建模就具有挑战性,因为动词具有许多语法功能,从而导致各种错误。因此,对动词错误所做的较早的工作假设错误类型是预先已知的。在使用统计机器学习方法纠正这些错误之前,我们提出了一种语言动机的动词错误纠正方法,该方法利用动词有限性的概念来识别错误的触发因素和类型。我们表明,语言告知模型可以显着提高动词校正方法的准确性。

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