Energy-Based Approaches to Representation Learning - Yann LeCun
Offered By: Institute for Advanced Study via YouTube
Course Description
Overview
Explore energy-based approaches to representation learning in this 40-minute lecture by Yann LeCun from NYU and Facebook AI. Delve into topics such as self-supervised learning, video prediction, energy functions, latent variable models, autoencoders, and sparse modeling. Gain insights on how humans and animals learn, the right framework for building predictors, and the applications of energy-based models in high-dimensional continuous spaces. Discover the connections between sparse coding, sparse autoencoders, and linear decoders in convolutional models. Learn about the implications of these approaches for model predictive control and advanced AI systems.
Syllabus
Intro
How do humans and animals learn
Selfsupervised running
Video prediction
Building a predictor
The right framework
Thin plates
Energy functions
Energybased model
Latent variable model
Autoencoders
probabilistic modeling
highdimensional continuous spaces
sparse coding
sparse modeling
sparse autoencoder
linear decoder
convolutional
model predictive control
Taught by
Institute for Advanced Study
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