基于句子权重特征和模糊c均值的学生论文作业提取文本摘要

I. Made, Suwija Putra, Yonatan Adiwinata, Desy Purnami, Singgih Putri, Ni Putu Sutramiani
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引用次数: 3

摘要

讲师的主要任务之一是在学习过程中对学生进行学术评估。评估过程从阅读或检查学生作业的答案开始,这些作业包含很长句子的组合,如论文或报告作业。这当然需要花费大量时间来获取其中包含的主要信息。有必要对答案进行总结,这样讲师就不需要阅读整个文档,但仍然能够对任务的响应采取本质。本研究提出了基于句子权重特征的模糊c均值方法在学生作文文本文档自动汇总中的应用。使用句子加权特征,在一个聚类中选择权重最高的句子,帮助系统快速从文档中获取主要信息。本研究的结果表明,该系统成功地总结了文本,精密度、召回率、准确度和F-measure的平均评价值分别为0.52、0.54、0.70和0.52。讲师的主要任务之一是在学习过程中对学生进行学术评估。评估过程从阅读或检查学生作业的答案开始,这些作业包含很长句子的组合,如论文或报告作业。这当然需要花费大量时间来获取其中包含的主要信息。有必要对答案进行总结,这样讲师就不需要阅读整个文档,但仍然能够对任务的响应采取本质。本研究提出了基于句子权重特征的模糊c均值方法在学生作文文本文档自动汇总中的应用。使用句子加权特征,在一个聚类中选择权重最高的句子,帮助系统快速从文档中获取主要信息。本研究的结果表明,该系统成功地总结了文本,精密度、召回率、准确度和F-measure的平均评价值分别为0.52、0.54、0.70和0.52。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extractive Text Summarization of Student Essay Assignment Using Sentence Weight Features and Fuzzy C-Means
One of the main tasks of a lecturer is to give students an academic assessment in the learning process. The assessment process begins with reading or checking the answers of student assignments that contain a combination of very long sentences such as essay or report assignments. This certainly takes a lot of time to get the primary information contained therein. It is necessary to summarize the answers so that the lecturer does not need to read the whole document but is still able to take the essence of the response to the task. This study proposes the application of summarizing text documents of student essay assignments automatically using the Fuzzy C-Means method with the sentence weighting feature. The sentence weighting feature is used by selecting the sentence with the highest weight in one cluster, helping the system to get the primary information from a document quickly. The results of this study indicate that the system succeeds in summarizing text with an average evaluation of the values of precision, recall, accuracy, and F-measure of 0.52, 0.54, 0.70, and 0.52, respectively.One of the main tasks of a lecturer is to give students an academic assessment in the learning process. The assessment process begins with reading or checking the answers of student assignments that contain a combination of very long sentences such as essay or report assignments. This certainly takes a lot of time to get the primary information contained therein. It is necessary to summarize the answers so that the lecturer does not need to read the whole document but is still able to take the essence of the response to the task. This study proposes the application of summarizing text documents of student essay assignments automatically using the Fuzzy C-Means method with the sentence weighting feature. The sentence weighting feature is used by selecting the sentence with the highest weight in one cluster, helping the system to get the primary information from a document quickly. The results of this study indicate that the system succeeds in summarizing text with an average evaluation of the values of precision, recall, accuracy, and F-measure of 0.52, 0.54, 0.70, and 0.52, respectively.
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