JSAI2025

Presentation information

General Session

General Session » GS-2 Machine learning

[3S1-GS-2] Machine learning:

Thu. May 29, 2025 9:00 AM - 10:40 AM Room S (Room 701-2)

座長:北岡 旦(NEC)

10:20 AM - 10:40 AM

[3S1-GS-2-05] Analyzing the Complexity and Hierarchy of Latent Representations in LLM

〇Masato Sekiguchi1, Ryoma Ishigaki1, Eisaku Maeda1 (1. Tokyo Denki University)

Keywords:LLM, Representation Learning, Interpretability, Intrinsic Dimension, δ-hyperbolicity

Large Language Models (LLMs) have been rapidly evolving and are being utilized in various practical applications. However, many aspects of their operational principles remain unclear. In this study, we analyze the distribution of latent representations in LLMs to gain a deeper understanding of their reasoning process. As analytical methods, we employ intrinsic dimension, which captures the essential dimensionality of a distribution, and δ-hyperbolicity, which measures the hierarchical structure of the distribution. Our experimental results provide insights into the complexity and hierarchy within the reasoning process of LLMs, shedding light on how they internally handle the semantics of natural language. This study contributes not only to improving the interpretability of LLMs but also to enhancing their architectural design.

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