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Positioning Political Texts with Large Language Models by Asking and Averaging

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arxiv 2311.16639 v3 pith:UYWHS553 submitted 2023-11-28 cs.CL

Positioning Political Texts with Large Language Models by Asking and Averaging

classification cs.CL
keywords textsllmspoliticalpositionlargepolicydifferentideological
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We use instruction-tuned Large Language Models (LLMs) like GPT-4, Llama 3, MiXtral, or Aya to position political texts within policy and ideological spaces. We ask an LLM where a tweet or a sentence of a political text stands on the focal dimension and take the average of the LLM responses to position political actors such as US Senators, or longer texts such as UK party manifestos or EU policy speeches given in 10 different languages. The correlations between the position estimates obtained with the best LLMs and benchmarks based on text coding by experts, crowdworkers, or roll call votes exceed .90. This approach is generally more accurate than the positions obtained with supervised classifiers trained on large amounts of research data. Using instruction-tuned LLMs to position texts in policy and ideological spaces is fast, cost-efficient, reliable, and reproducible (in the case of open LLMs) even if the texts are short and written in different languages. We conclude with cautionary notes about the need for empirical validation.

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  1. The Model as One Rater Among Several: Measuring Political Positions in Data-Sparse Regions with a Language-Model Panel

    cs.CY 2026-06 unverdicted novelty 7.0

    A panel of nine LLMs achieves Krippendorff's alpha of 0.86 for political position measurement in data-sparse regions, with added axis definitions improving agreement and disagreements revealing interpretive issues.