Expressing Social Emotions: Misalignment Between LLMs and Human Cultural Emotion Norms

arXiv cs.CL / 4/21/2026

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Key Points

  • The study examines whether LLMs can faithfully reproduce culturally specific patterns of “social emotions” that serve interpersonal goals such as asserting independence or fostering interdependence.
  • Using a human comparison between European American and Latin American participants, the researchers evaluate six frontier LLMs against culturally differentiated engaging and disengaging emotional expressions.
  • All evaluated models show systematic misalignment, expressing engaging emotions more than disengaging ones, with especially large gaps for the European American persona.
  • The authors find that model outputs are overly concentrated and deterministic, failing to reflect the diversity of human emotional expression across cultures.
  • Ablation tests suggest these behaviors are robust to sampling temperature, partially influenced by prompt wording, and dependent on the response elicitation format.

Abstract

The expression of emotions that serve social purposes, such as asserting independence or fostering interdependence, is central to human interactions and varies systematically across cultures. As LLMs are increasingly used to simulate human behavior in culturally nuanced interactions, it is important to understand whether they faithfully capture human patterns of social emotion expression. When LLM responses are not culturally aligned, their utility is compromised -- particularly when users assume they are interacting with a culturally attuned interlocutor, and may act on advice that proves inappropriate in their cultural context. We present a psychologically informed evaluation framework of cross-cultural social emotion expression in LLMs. Using a human study comparing European American and Latin American participants' expression of engaging and disengaging emotions, we evaluate six frontier LLMs on their ability to reflect culturally differentiated patterns for expressing social emotions. We find systematic misalignment between model and human behavior: all models express engaging emotions more than disengaging ones, with particularly stark differences observed for the generally well-represented European American persona. We further highlight that LLM responses are highly concentrated and deterministic, failing to capture the diversity of human responses in expressing social emotions. Our ablation analyses reveal that these patterns are robust to sampling temperatures, partially sensitive to prompt language, and dependent on the response elicitation format. Together, our findings highlight limitations in how current LLMs represent the interaction of cultural and emotional axes, particularly when expressing social emotions, with direct implications for their deployment in cross-cultural affective contexts.