Dynamic neuron approach to deep neural networks: Decoupling neurons for renormalization group analysis
Dynamic neuron approach to deep neural networks: Decoupling neurons for renormalization group analysis
Deep neural network architectures often consist of repetitive structural elements. We introduce an approach that reveals these patterns and can be broadly applied to the study of deep learning. Similarly to how a power strip helps untangle and organize complex cable connections, this approach treats neurons as additional degrees of freedom in interactions, simplifying the structure and enhancing the intuitive understanding of interactions within deep neural networks. Furthermore, it reveals the translational symmetry of deep neural networks, which simplifies the application of the renormalization group transformation-a method that effectively analyzes the scaling behavior of the system. By utilizing translational symmetry and renormalization group transformations, we can analyze critical phenomena. This approach may open new avenues for studying deep neural networks using statistical physics.
Donghee Lee、Hye-Sung Lee、Jaeok Yi
计算技术、计算机技术物理学
Donghee Lee,Hye-Sung Lee,Jaeok Yi.Dynamic neuron approach to deep neural networks: Decoupling neurons for renormalization group analysis[EB/OL].(2025-06-18)[2025-07-09].https://arxiv.org/abs/2410.00396.点此复制
评论