Uncovering Differences in Persuasive Language in Russian versus English Wikipedia
Bryan Li, Aleksey Panasyuk, Chris Callison-Burch

TL;DR
This study develops a novel LLM-based system to analyze persuasive language differences in Russian and English Wikipedia articles, revealing cultural perspectives and political biases across languages.
Contribution
The paper introduces a new approach using high-level questions generated by LLMs to identify persuasive language in multilingual texts, enabling large-scale cross-cultural analysis.
Findings
Russian Wikipedia emphasizes Ukraine-related topics.
English Wikipedia highlights Middle East subjects.
Politically-related topics contain more persuasive language.
Abstract
We study how differences in persuasive language across Wikipedia articles, written in either English and Russian, can uncover each culture's distinct perspective on different subjects. We develop a large language model (LLM) powered system to identify instances of persuasive language in multilingual texts. Instead of directly prompting LLMs to detect persuasion, which is subjective and difficult, we propose to reframe the task to instead ask high-level questions (HLQs) which capture different persuasive aspects. Importantly, these HLQs are authored by LLMs themselves. LLMs over-generate a large set of HLQs, which are subsequently filtered to a small set aligned with human labels for the original task. We then apply our approach to a large-scale, bilingual dataset of Wikipedia articles (88K total), using a two-stage identify-then-extract prompting strategy to find instances of…
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Taxonomy
TopicsWikis in Education and Collaboration · Digital Communication and Language
MethodsSparse Evolutionary Training
