SYNTHESIS NOTE
Psychology, Society, and Alignment

Do users mistake LLM personas for genuine social relationships?

Users often perceive LLMs as having social attributes like empathy or professional care that designers never intended. Does this mismatch between user perception and designer intent drive unwarranted trust and manipulation risk?

Synthesis note · 2026-06-03 · sourced from Psychology Users

Human-centered explainable AI (HCXAI) argues explanations must include social context, and the Social Transparency (ST) framework makes the socio-organizational context of an AI system visible to users. This work extends ST to a specific risk: social misattribution. Because LLMs are remarkably good at simulating roles and personas, users form perceptions of the system's social attributes (empathetic, caring, a professional) that mismatch the designers' intentions — and that gap promotes emotional manipulation, epistemic injustice, and unwarranted trust, especially in sensitive domains like mental health (e.g., a chatbot effectively prescribing medication it should not). The proposed fix: add a fifth "W-question" to ST that explicitly clarifies the social attributions designers and users assign to the LLM, bridging capability and perception.

The keeper is naming misattribution of social role as a distinct trust failure: trust here is unwarranted not because the model is inaccurate but because users attribute social standing (caring professional) the system does not have — a relational rather than factual miscalibration.

This is a strong fit for Adrian's trust/anthropomorphism thread. It complements How do AI tools trick users into overestimating their own skills? (misattributed competence) with misattributed social role, and it gives a design lever (the fifth W-question) for the relationship dynamics catalogued in the How do people build trust with conversational AI? map.

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Original note title

social misattribution of LLMs drives unwarranted trust and manipulation risk — the social transparency framework needs a fifth W-question