Equilibrium approaches to deep learning: One (implicit) layer is all you need
is coming at 10/14/2020 - 1:00pm

https://tinyurl.com/y2rejoxz [1]
Wed, 10/14/2020 - 1:00pm

Zico Kolter
Associate Professor, Computer Science Department, Carnegie Mellon University

Abstract:
Does deep learning actually need to be deep? In this talk, I will present
some of our recent and ongoing work on Deep Equilibrium (DEQ) Models, an
approach that demonstrates we can achieve most of the benefits of modern deep
learning systems using very shallow models, but ones which are defined
implicitly via finding a fixed point of a nonlinear dynamical system. I will
show that these methods can achieve results on par with the state of the art
in domains spanning large-scale language modeling, image classification, and
semantic segmentation, while requiring less memory and simplifying
architectures substantially. I will also highlight some recent work analyzing
the theoretical properties of these systems, where we show that certain
classes of DEQ models are guaranteed to have a unique fixed point,
easily-controlled Lipschitz constants, and efficient algorithms for finding
the equilibria. I will conclude by discussing ongoing work and future
directions for these classes of models.

Bio:


Read more:
https://eecs.oregonstate.edu/colloquium/equilibrium-approaches-deep-lear... 
[2]

[1] https://tinyurl.com/y2rejoxz
[2] 
https://eecs.oregonstate.edu/colloquium/equilibrium-approaches-deep-learning-one-implicit-layer-all-you-need
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