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LLMの内部表現に現れる人間の知覚構造の幾何学
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ポイント
- テキストデータのみで学習したLLMの内部表現に、人間の知覚構造と類似した幾何学的な構造が現れることを調査した。
- この研究は、直接的な知覚的教師信号なしに、LLMがどのようにして人間の知覚構造を内部に獲得するのかを解明する点で重要である。
- 人間の知覚構造は、LLMの層を深く進むにつれて一時的に現れ、中間層で最も組織化され、最終層で減衰することが発見された。
Abstract
While large language models (LLMs) are trained purely on textual data, prior work has shown that their internal representations can exhibit rich geometric structure in embedding space. Building on this line of work, we investigate whether such structure is similar to human perceptual organisation across different domains (e.g., color, pitch, emotion, and taste). Specifically, we study the layer-wise emergence of intrinsic geometrical structure corresponding to perceptual modalities within the residual streams of multiple open-weight transformer architectures. Our results reveal three key findings. First, we observe the emergence of layer-wise geometric structure across multiple perceptual domains, despite the absence of any direct perceptual supervision during training. Second, these perceptual domains exhibit distinct emergence profiles, with both geometric structure and its alignment with human baselines following domain- and model-specific trajectories across depth. Third, this emergence follows a consistent representational trajectory: geometry is weak or diffuse in early layers, becomes progressively organised in intermediate layers, and is attenuated in later layers, suggesting that perceptual geometry arises transiently as part of the model's internal transformation pipeline. This provides new insight into how and where human-like perceptual geometry arises in LLMs, offering a principled pathway for mechanistic analysis of internal representations.
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