“Conversing” with Qualitative Data: Enhancing Qualitative Research through Large Language Models (LLMs)
Description of Resource
In this paper, I explore the transformative potential of Large Language Models (LLMs) such as ChatGPT in the realm of qualitative research, particularly in the social sciences. These generative AI models, trained on extensive textual data, have the unique ability to "understand," generate, and manipulate human-like text, offering unprecedented opportunities for data analysis and interpretation. I argue that LLMs, with this capacity, can significantly enhance the depth and efficiency of qualitative analysis. They can quickly identify patterns, themes, and sentiments in the data, providing a level of nuance that can be challenging to achieve with manual coding. Furthermore, their ability to generate human-like text can be used to simulate social interactions, create engaging presentations of research findings, and even "converse" with the data in a natural and flexible way. Indeed a central contribution of this paper lies in exploring this novel concept of "asking questions of" or "conversing with" text-based data, which opens up new avenues for qualitative research and analysis. This interactive capability of LLMs provides a transformative approach to topic coding and content analysis, allowing researchers to pose complex, nuanced questions to their data and receive responses in natural language. Ethical considerations and limitations are also discussed.