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Computerizing reading training: Evaluation of a latent semantic analysis space for science text

机译:计算机化阅读训练:评估科学文本的潜在语义分析空间

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摘要

The effectiveness of a domain-specific latent semantic analysis (LSA) in assessing reading strategies was examined. Students were given self-explanation reading training (SERT) and asked to think aloud after each sentence in a science text. Novice and expert human raters and two LSA spaces (general reading, science) rated the similarity of each think-aloud protocol to benchmarks representing three different reading strategies (minimal, local, and global). The science LSA space correlated highly with human judgments, and more highly than did the general reading space. Also, cosines from the science LSA spaces can distinguish between different levels of semantic similarity, but may have trouble in distinguishing local processing protocols. Thus, a domain-specific LSA space is advantageous regardless of the size of the space. The results are discussed in the context of applying the science LSA to a computer-based version of SERT that gives online feedback based on LSA cosines.
机译:检查了特定领域的潜在语义分析(LSA)在评估阅读策略中的有效性。对学生进行了自我解释性阅读训练(SERT),并要求他们在科学课文中的每个句子后大声思考。新手和专家级的评估者以及两个LSA空间(一般阅读,科学)将每种思考方式协议的相似性评定为代表三种不同阅读策略(最小,局部和全局)的基准。科学LSA空间与人类判断高度相关,并且比一般阅读空间高度相关。而且,来自科学LSA空间的余弦可以区分不同级别的语义相似性,但是可能难以区分本地处理协议。因此,无论空间大小如何,特定于域的LSA空间都是有利的。在将科学LSA应用于计算机版本的SERT的上下文中讨论了结果,该版本基于LSA余弦给出在线反馈。

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