Revisiting the Exit from Nuclear Energy in Germany with NLP
Haunss, Sebastian, Blessing, André
–arXiv.org Artificial Intelligence
Annotation of political discourse is resource-intensive, but recent developments in NLP promise to automate complex annotation tasks. Fine-tuned transformer-based models outperform human annotators in some annotation tasks, but they require large manually annotated training datasets. In our contribution, we explore to which degree a manually annotated dataset can be automatically replicated with today's NLP methods, using unsupervised machine learning and zero- and few-shot learning.
arXiv.org Artificial Intelligence
Aug-25-2024
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