Predicting Student Performance and Differences in Learning Styles Based on Textual Complexity Indices Applied on Blog and Microblog Posts: A Preliminary Study

E. Popescu, M. Dascalu, A. Becheru, S. Crossley, Stefan Trausan-Matu
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引用次数: 6

Abstract

Social media tools are increasingly popular in Computer Supported Collaborative Learning and the analysis of students' contributions on these tools is an emerging research direction. Previous studies have mainly focused on examining quantitative behavior indicators on social media tools. In contrast, the approach proposed in this paper relies on the actual content analysis of each student's contributions in a learning environment. More specifically, in this study, textual complexity analysis is applied to investigate how student's writing style on social media tools can be used to predict their academic performance and their learning style. Multiple textual complexity indices are used for analyzing the blog and microblog posts of 27 students engaged in a project-based learning activity. The preliminary results of this pilot study are encouraging, with several indexes predictive of student grades and/or learning styles.
基于博客和微博文章文本复杂度指标预测学生学习成绩和学习风格差异的初步研究
社交媒体工具在计算机支持的协作学习中越来越受欢迎,分析学生对这些工具的贡献是一个新兴的研究方向。以往的研究主要集中在考察社交媒体工具的定量行为指标。相比之下,本文提出的方法依赖于对每个学生在学习环境中的贡献进行实际内容分析。更具体地说,在本研究中,本文运用文本复杂性分析来研究学生在社交媒体工具上的写作风格如何可以用来预测他们的学习成绩和学习风格。本文采用多种文本复杂度指标对27名参与项目学习活动的学生的博客和微博进行分析。这项试点研究的初步结果是令人鼓舞的,有几个指标可以预测学生的成绩和/或学习风格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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