Understanding Deep Convolutional Networks

01/19/2016
by   Stéphane Mallat, et al.
0

Deep convolutional networks provide state of the art classifications and regressions results over many high-dimensional problems. We review their architecture, which scatters data with a cascade of linear filter weights and non-linearities. A mathematical framework is introduced to analyze their properties. Computations of invariants involve multiscale contractions, the linearization of hierarchical symmetries, and sparse separations. Applications are discussed.

READ FULL TEXT
research
03/12/2017

Multiscale Hierarchical Convolutional Networks

Deep neural network algorithms are difficult to analyze because they lac...
research
02/14/2018

On the Blindspots of Convolutional Networks

Deep convolutional network has been the state-of-the-art approach for a ...
research
10/19/2018

Understanding Deep Convolutional Networks through Gestalt Theory

The superior performance of deep convolutional networks over high-dimens...
research
05/21/2019

Geometry of Deep Convolutional Networks

We give a formal procedure for computing preimages of convolutional netw...
research
08/07/2021

Impact of Aliasing on Generalization in Deep Convolutional Networks

We investigate the impact of aliasing on generalization in Deep Convolut...
research
03/23/2018

What Do We Understand About Convolutional Networks?

This document will review the most prominent proposals using multilayer ...
research
05/29/2019

Size-free generalization bounds for convolutional neural networks

We prove bounds on the generalization error of convolutional networks. T...

Please sign up or login with your details

Forgot password? Click here to reset