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arxiv: 2502.18725 · v1 · pith:MKBHQWEOnew · submitted 2025-02-26 · 💻 cs.AI · cs.CL· q-bio.NC

Talking to the brain: Using Large Language Models as Proxies to Model Brain Semantic Representation

classification 💻 cs.AI cs.CLq-bio.NC
keywords semanticbrainnaturalisticannotationhumanlanguagelargellm-derived
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Traditional psychological experiments utilizing naturalistic stimuli face challenges in manual annotation and ecological validity. To address this, we introduce a novel paradigm leveraging multimodal large language models (LLMs) as proxies to extract rich semantic information from naturalistic images through a Visual Question Answering (VQA) strategy for analyzing human visual semantic representation. LLM-derived representations successfully predict established neural activity patterns measured by fMRI (e.g., faces, buildings), validating its feasibility and revealing hierarchical semantic organization across cortical regions. A brain semantic network constructed from LLM-derived representations identifies meaningful clusters reflecting functional and contextual associations. This innovative methodology offers a powerful solution for investigating brain semantic organization with naturalistic stimuli, overcoming limitations of traditional annotation methods and paving the way for more ecologically valid explorations of human cognition.

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