Neural frames: A Tool for Studying the Tangent Bundles Underlying Image Datasets and How Deep Learning Models Process Them

11/19/2022
by   Henry Kvinge, et al.
0

The assumption that many forms of high-dimensional data, such as images, actually live on low-dimensional manifolds, sometimes known as the manifold hypothesis, underlies much of our intuition for how and why deep learning works. Despite the central role that they play in our intuition, data manifolds are surprisingly hard to measure in the case of high-dimensional, sparsely sampled image datasets. This is particularly frustrating since the capability to measure data manifolds would provide a revealing window into the inner workings and dynamics of deep learning models. Motivated by this, we introduce neural frames, a novel and easy to use tool inspired by the notion of a frame from differential geometry. Neural frames can be used to explore the local neighborhoods of data manifolds as they pass through the hidden layers of neural networks even when one only has a single datapoint available. We present a mathematical framework for neural frames and explore some of their properties. We then use them to make a range of observations about how modern model architectures and training routines, such as heavy augmentation and adversarial training, affect the local behavior of a model.

READ FULL TEXT

page 13

page 14

research
11/01/2018

On the Geometry of Adversarial Examples

Adversarial examples are a pervasive phenomenon of machine learning mode...
research
05/25/2017

Jeffrey's prior sampling of deep sigmoidal networks

Neural networks have been shown to have a remarkable ability to uncover ...
research
05/02/2019

Adversarial Training with Voronoi Constraints

Adversarial examples are a pervasive phenomenon of machine learning mode...
research
09/03/2020

Computational Analysis of Deformable Manifolds: from Geometric Modelling to Deep Learning

Leo Tolstoy opened his monumental novel Anna Karenina with the now famou...
research
01/07/2009

A Theoretical Analysis of Joint Manifolds

The emergence of low-cost sensor architectures for diverse modalities ha...
research
12/20/2021

Manifold learning via quantum dynamics

We introduce an algorithm for computing geodesics on sampled manifolds t...
research
11/27/2022

Linear Classification of Neural Manifolds with Correlated Variability

Understanding how the statistical and geometric properties of neural act...

Please sign up or login with your details

Forgot password? Click here to reset