Evaluating the Coverage and Depth of Latent Dirichlet Allocation Topic Model in Comparison with Human Coding of Qualitative Data: The Case of Education Research

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Gaurav Nanda, A. Jaiswal, Hugo Castellanos, Yuzhe Zhou, Alex Choi, Alejandra J. Magana
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引用次数: 1

Abstract

Fields in the social sciences, such as education research, have started to expand the use of computer-based research methods to supplement traditional research approaches. Natural language processing techniques, such as topic modeling, may support qualitative data analysis by providing early categories that researchers may interpret and refine. This study contributes to this body of research and answers the following research questions: (RQ1) What is the relative coverage of the latent Dirichlet allocation (LDA) topic model and human coding in terms of the breadth of the topics/themes extracted from the text collection? (RQ2) What is the relative depth or level of detail among identified topics using LDA topic models and human coding approaches? A dataset of student reflections was qualitatively analyzed using LDA topic modeling and human coding approaches, and the results were compared. The findings suggest that topic models can provide reliable coverage and depth of themes present in a textual collection comparable to human coding but require manual interpretation of topics. The breadth and depth of human coding output is heavily dependent on the expertise of coders and the size of the collection; these factors are better handled in the topic modeling approach.
评价潜在狄利克雷分配主题模型与人类定性数据编码的覆盖范围和深度——以教育研究为例
社会科学领域,如教育研究,已经开始扩大使用基于计算机的研究方法来补充传统的研究方法。自然语言处理技术,如主题建模,可以通过提供研究人员可以解释和改进的早期类别来支持定性数据分析。本研究为这一研究体系做出了贡献,并回答了以下研究问题:(RQ1)就从文本集合中提取的主题/主题的广度而言,潜在狄利克雷分配(LDA)主题模型和人类编码的相对覆盖范围是什么?(RQ2)使用LDA主题模型和人工编码方法确定的主题之间的相对深度或详细程度是什么?采用LDA主题建模和人工编码方法对学生反思数据集进行定性分析,并对结果进行比较。研究结果表明,主题模型可以提供与人类编码相当的文本集合中主题的可靠覆盖和深度,但需要人工解释主题。人类编码输出的广度和深度在很大程度上取决于编码员的专业知识和集合的大小;这些因素在主题建模方法中得到了更好的处理。
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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来源期刊
CiteScore
6.30
自引率
0.00%
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审稿时长
7 weeks
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