Overview
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore the fundamentals and applications of generative models in this lecture by Elchanan Mossel from the Massachusetts Institute of Technology, presented at the Deep Learning Boot Camp. Delve into the rationale behind deep networks, data models, and the theoretical perspectives of deep learning. Examine various models, including the Pure Theorist Model and Hacker models, and investigate the Scattering Transform. Analyze information flow on trees, natural processes, and optimal classifiers. Learn about provable algorithms for learning classifiers, depth lower bounds, and phylogenetic reconstruction. Gain insights into semi-supervised settings and deep algorithms in this comprehensive exploration of generative models and their implications in deep learning.
Syllabus
Intro
Why Deep Networks?
Data Models and Deep Networks
The Dream
The Pure Theorist Model
': A DL Theorist Perspective
Hacker models
Candidate 3: Scattering Transform
The Question Remains
Information Flow on Trees
Is this process natural?
What is the best classifier
Provable Algorithms for learning classifier
Depth Lower bounds
Phylogenetic Reconstruction
A semi supervised setting
Deep Algorithms
Taught by
Simons Institute