arXiv Open Access 2025

Identifying Features that Shape Perceived Consciousness in Large Language Model-based AI: A Quantitative Study of Human Responses

Bongsu Kang Jundong Kim Tae-Rim Yun Hyojin Bae Chang-Eop Kim
Lihat Sumber

Abstrak

This study quantitively examines which features of AI-generated text lead humans to perceive subjective consciousness in large language model (LLM)-based AI systems. Drawing on 99 passages from conversations with Claude 3 Opus and focusing on eight features -- metacognitive self-reflection, logical reasoning, empathy, emotionality, knowledge, fluency, unexpectedness, and subjective expressiveness -- we conducted a survey with 123 participants. Using regression and clustering analyses, we investigated how these features influence participants' perceptions of AI consciousness. The results reveal that metacognitive self-reflection and the AI's expression of its own emotions significantly increased perceived consciousness, while a heavy emphasis on knowledge reduced it. Participants clustered into seven subgroups, each showing distinct feature-weighting patterns. Additionally, higher prior knowledge of LLMs and more frequent usage of LLM-based chatbots were associated with greater overall likelihood assessments of AI consciousness. This study underscores the multidimensional and individualized nature of perceived AI consciousness and provides a foundation for better understanding the psychosocial implications of human-AI interaction.

Penulis (5)

B

Bongsu Kang

J

Jundong Kim

T

Tae-Rim Yun

H

Hyojin Bae

C

Chang-Eop Kim

Format Sitasi

Kang, B., Kim, J., Yun, T., Bae, H., Kim, C. (2025). Identifying Features that Shape Perceived Consciousness in Large Language Model-based AI: A Quantitative Study of Human Responses. https://arxiv.org/abs/2502.15365

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Tahun Terbit
2025
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en
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arXiv
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