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Algorithm Selection and Model Adaptation for ESL Correction Tasks

机译:ESL校正任务的算法选择和模型适应

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We consider the problem of correcting errors made by English as a Second Language (ESL) writers and address two issues that are essential to making progress in ESL error correction - algorithm selection and model adaptation to the first language of the ESL learner. A variety of learning algorithms have been applied to correct ESL mistakes, but often comparisons were made between incomparable data sets. We conduct an extensive, fair comparison of four popular learning methods for the task, reversing conclusions from earlier evaluations. Our results hold for different training sets, genres, and feature sets. A second key issue in ESL error correction is the adaptation of a model to the first language of the writer. Errors made by non-native speakers exhibit certain regularities and, as we show, models perform much better when they use knowledge about error patterns of the non-native writers. We propose a novel way to adapt a learned algorithm to the first language of the writer that is both cheaper to implement and performs better than other adaptation methods.
机译:我们考虑纠正英语错误作为第二语言(ESL)作家的错误,并解决了在ESL误差校正算法选择和模型适应方面取得进展至ESL学习者的第一语言必不可少的问题。已经应用了各种学习算法来纠正ESL错误,但通常在无与伦比的数据集之间进行比较。我们对任务的四个流行学习方法进行了广泛的,公平的比较,从早期的评估中逆转结论。我们的结果适用于不同的培训集,流派和功能集。 ESL纠错中的第二个关键问题是将模型自适应到写入器的第一语言。非母语人员制作的错误表现出某些规则,正如我们所展示的那样,当他们使用关于非本地作家的错误模式的知识时,模型更好地表现得更好。我们提出了一种新颖的方法来使学习算法适应编写器的第一语言,其既便宜到实现和执行比其他适应方法更好。

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