Automated Grammatical Error Detection for Language Learners

C. Leacock, M. Chodorow, Michael Gamon, Joel R. Tetreault
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引用次数: 223

Abstract

It has been estimated that over a billion people are using or learning English as a second or foreign language, and the numbers are growing not only for English but for other languages as well. These language learners provide a burgeoning market for tools that help identify and correct learners' writing errors. Unfortunately, the errors targeted by typical commercial proofreading tools do not include those aspects of a second language that are hardest to learn. This volume describes the types of constructions English language learners find most difficult -- constructions containing prepositions, articles, and collocations. It provides an overview of the automated approaches that have been developed to identify and correct these and other classes of learner errors in a number of languages. Error annotation and system evaluation are particularly important topics in grammatical error detection because there are no commonly accepted standards. Chapters in the book describe the options available to researchers, recommend best practices for reporting results, and present annotation and evaluation schemes. The final chapters explore recent innovative work that opens new directions for research. It is the authors' hope that this volume will contribute to the growing interest in grammatical error detection by encouraging researchers to take a closer look at the field and its many challenging problems. Table of Contents: Introduction / History of Automated Grammatical Error Detection / Special Problems of Language Learners / Language Learner Data / Evaluating Error Detection Systems / Article and Preposition Errors / Collocation Errors / Different Approaches for Different Errors / Annotating Learner Errors / New Directions / Conclusion
自动语法错误检测语言学习者
据估计,有超过10亿人将英语作为第二语言或外语来使用或学习,而且这一数字不仅在增长,而且在增长。这些语言学习者为帮助识别和纠正学习者写作错误的工具提供了一个蓬勃发展的市场。不幸的是,典型的商业校对工具所针对的错误并不包括第二语言中最难学习的那些方面。本卷描述了英语学习者发现最困难的结构类型-包含介词,文章和搭配的结构。它概述了已经开发的自动化方法,用于识别和纠正许多语言中的这些和其他类型的学习者错误。错误标注和系统评价是语法错误检测中特别重要的课题,因为目前还没有公认的标准。书中的章节描述了可供研究人员选择的选项,推荐报告结果的最佳实践,并提出注释和评估方案。最后几章探讨了最近的创新工作,为研究开辟了新的方向。这是作者的希望,这卷将有助于通过鼓励研究人员采取更仔细地看看这个领域和它的许多具有挑战性的问题,语法错误检测日益增长的兴趣。目录:介绍/语法错误自动检测的历史/语言学习者的特殊问题/语言学习者数据/评估错误检测系统/冠词和介词错误/搭配错误/不同错误的不同方法/注释学习者错误/新方向/结论
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.30
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