
Statistical Mechanics of Neural Networks
Sobre o livro
Chapter 2: Spin Glass Models and Cavity Method
Chapter 3: Variational Mean-Field Theory and Belief Propagation
Chapter 4: Monte-Carlo Simulation Methods
Chapter 5: High-Temperature Expansion Techniques
Chapter 6: Nishimori Model
Chapter 7: Random Energy Model
Chapter 8: Statistical Mechanics of Hopfield Model
Chapter 9: Replica Symmetry and Symmetry Breaking
Chapter 10: Statistical Mechanics of Restricted Boltzmann Machine
Chapter 11: Simplest Model of Unsupervised Learning with Binary Synapses
Chapter 12: Inherent-Symmetry Breaking in Unsupervised Learning
Chapter 13: Mean-Field Theory of Ising Perceptron
Chapter 14: Mean-Field Model of Multi-Layered Perceptron
Chapter 15: Mean-Field Theory of Dimension Reduction in Neural Networks
Chapter 16: Chaos Theory of Random Recurrent Networks
Chapter 17: Statistical Mechanics of Random Matrices
Chapter 18: Perspectives
Ficha técnica
- Autor
- Huang, Haiping, Haiping Huang, Huang, Haiping
- Editora
- UmLivro, Springer Nature BV (Print-On-Demand)
- Formato
- BOOK
- Encadernação
- Capa comum
- ISBN
- 9789811675713
- EAN
- 9789811675713
- Ano de Publicação
- 2022
- Número de Páginas
- 316
- Dimensões
- 23.4 x 15.6 x 3 cm
- Peso
- 0.45 kg
- Idioma
- pt-BR
- Edição
- 1
- SKU
- 9789811675713





