Researchers have developed a transformer-based model to predict the political ideology of German texts on a continuous left-to-right spectrum. The study evaluated 13 transformer models using four distinct corpora, including parliamentary notes, a political decision-making tool, newspaper articles, and tweets from German Bundestag members. DeBERTa-large achieved the highest F1 score for in-domain performance, while Gemma2-2B excelled in newspaper out-of-domain testing, demonstrating that transformer models can identify political framing with accuracy comparable to public opinion polls. AI
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IMPACT Provides a new method for analyzing political discourse and bias in text, potentially aiding researchers and analysts.
RANK_REASON The cluster contains an academic paper detailing a new methodology and model evaluation for political text analysis.