An Examination of the Use of Large Language Models to Aid Analysis of Textual Data

February 13th, 2024 | RESEARCH

Abstract
The increasing use of machine learning and Large Language Models (LLMs) opens up opportunities to use these artificially intelligent algorithms in novel ways. This article proposes a methodology using LLMs to support traditional deductive coding in qualitative research. We began our analysis with three different sample texts taken from existing interviews. Next, we created a codebook and inputted the sample text and codebook into an LLM. We asked the LLM to determine if the codes were present in a sample text provided and requested evidence to support the coding. The sample texts were inputted 160 times to record changes between iterations of the LLM response. Each iteration was analogous to a new coder deductively analyzing the text with the codebook information. In our results, we present the outputs for these recursive analyses, along with a comparison of the LLM coding to evaluations made by human coders using traditional coding methods. We argue that LLM analysis can aid qualitative researchers by deductively coding transcripts, providing a systematic and reliable platform for code identification, and offering a means of avoiding analysis misalignment. Implications of using LLM in research praxis are discussed, along with current limitations.

Document

10544479.pdf

Team Members

Robert H Tai, Author, University of Virginia
Lillian R. Bentley, Author, University of Virginia
Xin Xia, Author, University of Virginia
Jason M. Sitt, Author, University of Virginia
Sarah C. Fankhauser, Author, Oxford College of Emory University
Ana M. Chicas-Mosier, Author, University of Kansas
Barnas G. Monteith, Author, THInc, USA

Citation

Identifier Type: DOI
Identifier: DOI: 10.1177/1609406924123116

Publication: International Journal of Qualitative Methods
Volume: 23
Page(s): 1-14

Funders

Funding Source: NSF
Funding Program: EDU Core Research
Award Number: 1811265

Related URLs

Impacts of STEM Experiences on Informal STEM Learning

Tags

Audience: Educators | Teachers | Evaluators | Learning Researchers | Scientists
Discipline: Education and learning science | Social science and psychology
Resource Type: Book | Peer-reviewed article | Research | Research Products
Environment Type: Higher Education Programs | Informal | Formal Connections | Professional Development | Conferences | Networks | Professional Development and Workshops