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A Part-of-Speech-Based Exploratory Text Mining of Students' Looking-Back Evaluation

机译:基于讲话的兼职探索文本挖掘学生的回教评估

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In our lectures at universities, we observe that the students' attitudes affects a lot to their achievements. In order to prove this observation based on data, we have been investigating to find effective methods that extract students' attitudes from lecture data; such as examination score as an index to student's achievement, attendance and homework data for his/her effort, and answer texts of the term-end questionnaire as information source of attitude. In this chapter, we take another approach to investigate the influences of words used in the answer texts of students on their achievements. We use a machine learning method called Support Vector Machine (SVM), which is a tool to create a model for classifying the given data into two groups by positive and negative training sample data. We apply SVM to the answer texts for analyzing the influences of parts of speech of words to the student's achievement. Even though adjectives and adverbs are the same in the sense that they modify nouns and verbs, we found that adverbs affects much more than adjectives, as a result. From our experiences so far, we believe that analysis of answers to the evaluations of students toward themselves and lectures are very useful source of finding the students' attitudes to learning.
机译:在我们在大学的讲座中,我们观察到学生的态度对他们的成就影响很大。为了基于数据证明这一观察,我们一直在调查找到从讲座数据中提取学生态度的有效方法;如考试评分作为学生成就,出席和家庭作业数据的指数,以及他/她的努力,并回答最终问卷的文本作为态度的信息来源。在本章中,我们采取另一种方法来调查学生答复文本中使用的词语对其成就的影响。我们使用称为支持向量机(SVM)的机器学习方法,这是一种工具,用于通过正和负训练样本数据将给定数据分为两组的模型。我们将SVM应用于答案文本,以分析词语言论的影响到学生的成就。尽管它们的形容词和副词在它们修改名词和动词的意义上,但我们发现副词的影响远远超过形容词。从我们到目前为止的经验,我们认为,分析学生对自己和讲座的评估的答案是找到学生对学习态度的非常有用的来源。

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