LGAICVDec 4, 2025

The Universal Weight Subspace Hypothesis

arXiv:2512.05117v219 citationsh-index: 12
Originality Incremental advance
AI Analysis

This finding has implications for model reusability, multi-task learning, and efficiency in large-scale neural models, though it appears incremental as an empirical demonstration of an existing hypothesis.

The paper demonstrates that deep neural networks trained on diverse tasks converge to remarkably similar low-dimensional parametric subspaces, with empirical evidence from over 1100 models showing that these universal subspaces capture majority variance in just a few principal directions.

We show that deep neural networks trained across diverse tasks exhibit remarkably similar low-dimensional parametric subspaces. We provide the first large-scale empirical evidence that demonstrates that neural networks systematically converge to shared spectral subspaces regardless of initialization, task, or domain. Through mode-wise spectral analysis of over 1100 models - including 500 Mistral-7B LoRAs, 500 Vision Transformers, and 50 LLaMA-8B models - we identify universal subspaces capturing majority variance in just a few principal directions. By applying spectral decomposition techniques to the weight matrices of various architectures trained on a wide range of tasks and datasets, we identify sparse, joint subspaces that are consistently exploited, within shared architectures across diverse tasks and datasets. Our findings offer new insights into the intrinsic organization of information within deep networks and raise important questions about the possibility of discovering these universal subspaces without the need for extensive data and computational resources. Furthermore, this inherent structure has significant implications for model reusability, multi-task learning, model merging, and the development of training and inference-efficient algorithms, potentially reducing the carbon footprint of large-scale neural models.

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