Do LLMs Use Cultural Knowledge Without Being Told? A Multilingual Evaluation of Implicit Pragmatic Adaptation
Mehwish Nasim, Sanjeevan Selvaganapathy, Neel Ganapathi Sabhahit, Marie Griesbach, Pranav Bhandari, Janina L\"utke Stockdiek, Lennart Sch\"apermeier, Usman Naseem, Christian Grimme

TL;DR
This study evaluates whether large language models implicitly adapt their pragmatic language use to cultural cues across multiple languages, revealing limited transfer from explicit instructions to implicit situational contexts.
Contribution
It introduces a multilingual evaluation framework for pragmatic adaptation in LLMs, highlighting the gap between explicit cultural instructions and implicit situational responses.
Findings
Models recover about 20% of explicit pragmatic shifts when responding implicitly.
Authority-related cues show stronger transfer than individual-versus-group framing.
Alignment training suppresses uncertainty-related behaviors like hedging.
Abstract
Many benchmarks show that large language models can answer direct questions about culture. We study a different question: do they also change how they speak when culture is only implied by the situation? We evaluate 60 culturally grounded conversational scenarios across five languages in three conditions: a neutral baseline (Prompt A), an explicit cultural instruction (Prompt B), and implicit situational cueing (Prompt C). We score responses on 12 pragmatic features covering deference to authority, individual-versus-group framing, and uncertainty management. We define Pragmatic Context Sensitivity (PCS) as the fraction of the Prompt A->B shift that reappears under Prompt A->C. Across four deployed LLMs and five languages (English, German, Hindi, Nepali, Urdu), the primary stable-only PCS mean is 0.196 (SD = 0.113), indicating that the models recover only about one-fifth of the pragmatic…
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