Publication: Open-source LLMs for text annotation: a practical guide for model setting and fine-tuning
Open-source LLMs for text annotation: a practical guide for model setting and fine-tuning
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Alizadeh, M., Kubli, M., Samei, Z., Dehghani, S., Zahedivafa, M., Bermeo, J. D., Korobeynikova, M., & Gilardi, F. (2024). Open-source LLMs for text annotation: a practical guide for model setting and fine-tuning. Journal of Computational Social Science, 8, 17. https://doi.org/10.1007/s42001-024-00345-9
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This paper studies the performance of open-source Large Language Models (LLMs) in text classification tasks typical for political science research. By examining tasks like stance, topic, and relevance classification, we aim to guide scholars in making informed decisions about their use of LLMs for text analysis and to establish a baseline performance benchmark that demonstrates the models’ effectiveness. Specifically, we conduct an assessment of both zero-shot and fine-tuned LLMs across a range of text annotation tasks using news arti
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Alizadeh, M., Kubli, M., Samei, Z., Dehghani, S., Zahedivafa, M., Bermeo, J. D., Korobeynikova, M., & Gilardi, F. (2024). Open-source LLMs for text annotation: a practical guide for model setting and fine-tuning. Journal of Computational Social Science, 8, 17. https://doi.org/10.1007/s42001-024-00345-9