Voting Booklet Bias: Stance Detection in Swiss Federal Communication
This work addresses potential bias in official voter information, which could impact editorial processes and automated political discourse analysis, though it is incremental as it uses existing methods on new data.
The study applied stance detection methods to analyze the neutrality of statements in Swiss federal voting booklets, finding that some issues were heavily favored while others were more balanced, with results consistent across German, French, and Italian languages.
In this study, we use recent stance detection methods to study the stance (for, against or neutral) of statements in official information booklets for voters. Our main goal is to answer the fundamental question: are topics to be voted on presented in a neutral way? To this end, we first train and compare several models for stance detection on a large dataset about Swiss politics. We find that fine-tuning an M-BERT model leads to the best accuracy. We then use our best model to analyze the stance of utterances extracted from the Swiss federal voting booklet concerning the Swiss popular votes of September 2022, which is the main goal of this project. We evaluated the models in both a multilingual as well as a monolingual context for German, French, and Italian. Our analysis shows that some issues are heavily favored while others are more balanced, and that the results are largely consistent across languages. Our findings have implications for the editorial process of future voting booklets and the design of better automated systems for analyzing political discourse. The data and code accompanying this paper are available at https://github.com/ZurichNLP/voting-booklet-bias.