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Intra-neuronal attention within language models Relationships between activation and semantics

Published 17 Mar 2025 in cs.AI, cs.CL, and q-bio.NC | (2503.12992v1)

Abstract: This study investigates the ability of perceptron-type neurons in LLMs to perform intra-neuronal attention; that is, to identify different homogeneous categorical segments within the synthetic thought category they encode, based on a segmentation of specific activation zones for the tokens to which they are particularly responsive. The objective of this work is therefore to determine to what extent formal neurons can establish a homomorphic relationship between activation-based and categorical segmentations. The results suggest the existence of such a relationship, albeit tenuous, only at the level of tokens with very high activation levels. This intra-neuronal attention subsequently enables categorical restructuring processes at the level of neurons in the following layer, thereby contributing to the progressive formation of high-level categorical abstractions.

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