1. Deep Manifold Part 1: Anatomy of Neural Network Manifold
- Author
-
Ma, Max Y. and Shi, Gen-Hua
- Subjects
Computer Science - Machine Learning ,Computer Science - Artificial Intelligence - Abstract
Based on the numerical manifold method principle, we developed a mathematical framework of a neural network manifold: Deep Manifold and discovered that neural networks: 1) is numerical computation combining forward and inverse; 2) have near infinite degrees of freedom; 3) exponential learning capacity with depth; 4) have self-progressing boundary conditions; 5) has training hidden bottleneck. We also define two concepts: neural network learning space and deep manifold space and introduce two concepts: neural network intrinsic pathway and fixed point. We raise three fundamental questions: 1). What is the training completion definition; 2). where is the deep learning convergence point (neural network fixed point); 3). How important is token timestamp in training data given negative time is critical in inverse problem.
- Published
- 2024