Leveraging GPT for the Generation of Multi-Platform Social Media Datasets for Research
Publication date
2024-09-10
Authors
Tari, Henry
Khan, M. Danial
Rutten, Justus
Othman, Darian
Bertaglia, Thales
Kaushal, Rishabh
Iamnitchi, Adriana
Editors
Advisors
Supervisors
Document Type
Part of book
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License
taverne
Abstract
Social media datasets are essential for research on disinformation, influence operations, social sensing, hate speech detection, cyberbullying, and other significant topics. However, access to these datasets is often restricted due to costs and platform regulations. As such, acquiring datasets that span multiple platforms which are crucial for a comprehensive understanding of the digital ecosystem is particularly challenging. This paper explores the potential of large language models to create lexically and semantically relevant social media datasets across multiple platforms, aiming to match the quality of real datasets. We employ ChatGPT to generate synthetic data from a real dataset consisting of posts from three different social media platforms. We assess the lexical and semantic properties of the synthetic data and compare them with those of the real data. Our empirical findings suggest that using large language models to generate synthetic multi-platform social media data is promising. However, further enhancements are necessary to improve the fidelity of the outputs.
Keywords
LLMs, Social Media Research, Synthetic Data, Taverne, Artificial Intelligence, Computer Graphics and Computer-Aided Design, Human-Computer Interaction, Software
Citation
Tari, H, Khan, M D, Rutten, J, Othman, D, Bertaglia, T, Kaushal, R & Iamnitchi, A 2024, Leveraging GPT for the Generation of Multi-Platform Social Media Datasets for Research. in HT 2024 : Creative Intelligence - 35th ACM Conference on Hypertext and Social Media. HT 2024: Creative Intelligence - 35th ACM Conference on Hypertext and Social Media, Association for Computing Machinery, pp. 337-343, 35th ACM Conference on Hypertext and Social Media, HT 2024, Poznan, Poland, 10/09/24. https://doi.org/10.1145/3648188.3675153, conference