Cognitive MRI of AI Conversations: Analyzing AI Interactions through Semantic Embedding Networks

Published on December 9, 2025

Authors:
Alex Towell (lex@metafunctor.com)
John Matta (jmatta@siue.edu)

Abstract

Through a single-user case study of 449 ChatGPT conversations, we introduce a cognitive MRI applying network analysis to reveal thought topology hidden in linear conversation logs. We construct semantic similarity networks with user-weighted embeddings to identify knowledge communities and bridge conversations that enable cross-domain flow. Our analysis reveals heterogeneous topology: theoretical domains exhibit hub-and-spoke structures while practical domains show tree-like hierarchies. We identify three distinct bridge types that facilitate knowledge integration across communities.

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#complex networks #AI conversation #semantic embedding #knowledge graphs #ChatGPT #network analysis #community detection #cognitive science