Social Scientists on the Role of AI in Research
Tatiana Chakravorti, Xinyu Wang, Pranav Narayanan Venkit, Sai Koneru, Kevin Munger, Sarah Rajtmajer

TL;DR
This study explores social scientists' perceptions and ethical concerns regarding AI and ML in research, highlighting increased adoption of AI tools, varied trust levels, and the need for transparency and ethical safeguards.
Contribution
It introduces a novel survey design comparing perceptions of AI and ML among social scientists and provides insights into their usage, trust, and ethical concerns about AI in research.
Findings
AI use in social science research has increased significantly.
Participants trust ML more than genAI due to transparency.
Ethical concerns include bias, deskilling, and misconduct.
Abstract
The integration of artificial intelligence (AI) into social science research practices raises significant technological, methodological, and ethical issues. We present a community-centric study drawing on 284 survey responses and 15 semi-structured interviews with social scientists, describing their familiarity with, perceptions of the usefulness of, and ethical concerns about the use of AI in their field. A crucial innovation in study design is to split our survey sample in half, providing the same questions to each -- but randomizing whether participants were asked about "AI" or "Machine Learning" (ML). We find that the use of AI in research settings has increased significantly among social scientists in step with the widespread popularity of generative AI (genAI). These tools have been used for a range of tasks, from summarizing literature reviews to drafting research papers. Some…
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Taxonomy
TopicsComputational and Text Analysis Methods
