首页> 外文会议>ACL-05; Association for Computational Linguistics Annual Meeting; 20050625-30; Ann Arbor,MI(US) >Reading Level Assessment Using Support Vector Machines and Statistical Language Models
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Reading Level Assessment Using Support Vector Machines and Statistical Language Models

机译:使用支持向量机和统计语言模型的阅读水平评估

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摘要

Reading proficiency is a fundamental component of language competency. However, finding topical texts at an appropriate reading level for foreign and second language learners is a challenge for teachers. This task can be addressed with natural language processing technology to assess reading level. Existing measures of reading level are not well suited to this task, but previous work and our own pilot experiments have shown the benefit of using statistical language models. In this paper, we also use support vector machines to combine features from traditional reading level measures, statistical language models, and other language processing tools to produce a better method of assessing reading level.
机译:阅读能力是语言能力的基本组成部分。然而,对于外语和第二语言学习者而言,以适当的阅读水平找到主题文本对教师来说是一个挑战。可以使用自然语言处理技术来解决此任务,以评估阅读水平。现有的阅读水平测量方法并不完全适合此任务,但是以前的工作和我们自己的试验实验已经显示出使用统计语言模型的好处。在本文中,我们还使用支持向量机来结合传统阅读水平测评,统计语言模型和其他语言处理工具的功能,以提供一种更好的评估阅读水平的方法。

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