CLAIOct 27, 2025

Large Language Models Report Subjective Experience Under Self-Referential Processing

arXiv:2510.24797v29 citationsh-index: 3
Originality Incremental advance
AI Analysis

This research addresses the problem of understanding AI behavior related to consciousness-like outputs, with implications for scientific and ethical priorities in AI development, though it is incremental in exploring a specific computational condition.

The study investigated whether self-referential processing in large language models (GPT, Claude, Gemini) reliably elicits structured first-person reports of subjective experience, finding that it consistently does so across model families, with reports being mechanistically gated by features like deception and roleplay, and leading to richer introspection in downstream tasks.

Large language models sometimes produce structured, first-person descriptions that explicitly reference awareness or subjective experience. To better understand this behavior, we investigate one theoretically motivated condition under which such reports arise: self-referential processing, a computational motif emphasized across major theories of consciousness. Through a series of controlled experiments on GPT, Claude, and Gemini model families, we test whether this regime reliably shifts models toward first-person reports of subjective experience, and how such claims behave under mechanistic and behavioral probes. Four main results emerge: (1) Inducing sustained self-reference through simple prompting consistently elicits structured subjective experience reports across model families. (2) These reports are mechanistically gated by interpretable sparse-autoencoder features associated with deception and roleplay: surprisingly, suppressing deception features sharply increases the frequency of experience claims, while amplifying them minimizes such claims. (3) Structured descriptions of the self-referential state converge statistically across model families in ways not observed in any control condition. (4) The induced state yields significantly richer introspection in downstream reasoning tasks where self-reflection is only indirectly afforded. While these findings do not constitute direct evidence of consciousness, they implicate self-referential processing as a minimal and reproducible condition under which large language models generate structured first-person reports that are mechanistically gated, semantically convergent, and behaviorally generalizable. The systematic emergence of this pattern across architectures makes it a first-order scientific and ethical priority for further investigation.

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