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Improving Automatic English Writing Assessment Using Regression Trees and Error-Weighting

机译:使用回归树和错误加权改进自动英语写作评估

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摘要

The proposed automated scoring system for English writing tests provides an assessment result including a score and diagnostic feedback to test-takers without human's efforts. The system analyzes an input sentence and detects errors related to spelling, syntax and content similarity. The scoring model has adopted one of the statistical approaches, a regression tree. A scoring model in general calculates a score based on the count and the types of automatically detected errors. Accordingly, a system with higher accuracy in detecting errors raises the accuracy in scoring a test. The accuracy of the system, however, cannot be fully guaranteed for several reasons, such as parsing failure, incompleteness of knowledge bases, and ambiguous nature of natural language. In this paper, we introduce an error-weighting technique, which is similar to term-weighting widely used in information retrieval. The error-weighting technique is applied to judge reliability of the errors detected by the system. The score calculated with the technique is proven to be more accurate than the score without it.
机译:拟议的用于英语写作测试的自动评分系统可提供评估结果,包括分数和诊断反馈给考生,无需人工。该系统分析输入句子并检测与拼写,语法和内容相似性有关的错误。计分模型采用了一种统计方法,即回归树。评分模型通常根据计数和自动检测到的错误的类型来计算分数。因此,检测错误的精度更高的系统提高了对测试进行评分的精度。但是,由于多种原因,例如解析失败,知识库的不完整以及自然语言的模棱两可,无法完全保证系统的准确性。在本文中,我们介绍了一种错误加权技术,该技术与信息检索中广泛使用的术语加权相似。误差加权技术用于判断系统检测到的误差的可靠性。事实证明,使用该技术计算出的分数比没有该分数的分数更准确。

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