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首页> 外文期刊>Journal of biomedical informatics. >The potential of latent semantic analysis for machine grading of clinical case summaries.
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The potential of latent semantic analysis for machine grading of clinical case summaries.

机译:潜在语义分析对临床病例摘要的机器评分的潜力。

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OBJECTIVE: This paper introduces latent semantic analysis (LSA), a machine learning method for representing the meaning of words, sentences, and texts. LSA induces a high-dimensional semantic space from reading a very large amount of texts. The meaning of words and texts can be represented as vectors in this space and hence can be compared automatically and objectively. PSYCHOLOGICAL THEORY: A generative theory of the mental lexicon based on LSA is described. The word vectors LSA constructs are context free, and each word, irrespective of how many meanings or senses it has, is represented by a single vector. However, when a word is used in different contexts, context appropriate word senses emerge. CURRENT APPLICATIONS: Several applications of LSA to educational software are described, involving the ability of LSA to quickly compare the content of texts, such as an essay written by a student and a target essay. POTENTIAL MEDICAL APPLICATIONS: An LSA-based software tool is sketched for machine grading of clinical case summaries written by medical students.
机译:目的:本文介绍了潜在语义分析(LSA),这是一种表示单词,句子和文本含义的机器学习方法。 LSA通过阅读大量文本来产生高维语义空间。单词和文本的含义可以在此空间中表示为向量,因此可以自动和客观地进行比较。心理理论:描述了基于LSA的心理词典生成理论。 LSA构造的单词向量是无上下文关系的,每个单词,无论其具有多少含义或感觉,都由单个向量表示。但是,当在不同的上下文中使用单词时,会出现适合上下文的单词含义。当前的应用:描述了LSA在教育软件上的几种应用,包括LSA快速比较文本内容的能力,例如学生撰写的论文和目标论文。潜在的医学应用:基于LSA的软件工具已被草绘,用于对医学生编写的临床病例摘要进行机器评分。

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