Fine-Grained Detection of Solidarity for Women and Migrants in 155 Years of German Parliamentary Debates
Solidarity is a crucial concept to understand social relations in societies. In this paper, we explore fine-grained solidarity frames to study solidarity towards women and migrants in German parliamentary debates between 1867 and 2022. Using 2,864 manually annotated text snippets (with a cost exceed...
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Zusammenfassung: | Solidarity is a crucial concept to understand social relations in societies.
In this paper, we explore fine-grained solidarity frames to study solidarity
towards women and migrants in German parliamentary debates between 1867 and
2022. Using 2,864 manually annotated text snippets (with a cost exceeding 18k
Euro), we evaluate large language models (LLMs) like Llama 3, GPT-3.5, and
GPT-4. We find that GPT-4 outperforms other LLMs, approaching human annotation
quality. Using GPT-4, we automatically annotate more than 18k further instances
(with a cost of around 500 Euro) across 155 years and find that solidarity with
migrants outweighs anti-solidarity but that frequencies and solidarity types
shift over time. Most importantly, group-based notions of (anti-)solidarity
fade in favor of compassionate solidarity, focusing on the vulnerability of
migrant groups, and exchange-based anti-solidarity, focusing on the lack of
(economic) contribution. Our study highlights the interplay of historical
events, socio-economic needs, and political ideologies in shaping migration
discourse and social cohesion. We also show that powerful LLMs, if carefully
prompted, can be cost-effective alternatives to human annotation for hard
social scientific tasks. |
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DOI: | 10.48550/arxiv.2210.04359 |