Overview
Explore the intricacies of stochastic learning dynamics and generalization in neural networks through this comprehensive lecture. Delve into the complex interplay between learning algorithms and network architectures, examining how stochastic processes influence the training and performance of neural networks. Gain insights into the mechanisms behind generalization in deep learning models and understand the challenges associated with optimizing network performance. Analyze cutting-edge research findings and theoretical frameworks that shed light on the behavior of neural networks during training and inference. Discover practical implications for designing more efficient and robust machine learning systems.
Syllabus
Stochastic Learning Dynamics and Generalization in Neural Networks
Taught by
Santa Fe Institute