Jeffrey's prior sampling of deep sigmoidal networks

05/25/2017
by   Lorien X. Hayden, et al.
0

Neural networks have been shown to have a remarkable ability to uncover low dimensional structure in data: the space of possible reconstructed images form a reduced model manifold in image space. We explore this idea directly by analyzing the manifold learned by Deep Belief Networks and Stacked Denoising Autoencoders using Monte Carlo sampling. The model manifold forms an only slightly elongated hyperball with actual reconstructed data appearing predominantly on the boundaries of the manifold. In connection with the results we present, we discuss problems of sampling high-dimensional manifolds as well as recent work [M. Transtrum, G. Hart, and P. Qiu, Submitted (2014)] discussing the relation between high dimensional geometry and model reduction.

READ FULL TEXT

page 13

page 14

page 15

page 19

page 20

page 21

page 22

research
02/15/2016

Efficient Representation of Low-Dimensional Manifolds using Deep Networks

We consider the ability of deep neural networks to represent data that l...
research
05/20/2016

Dimensionality Reduction on SPD Manifolds: The Emergence of Geometry-Aware Methods

Representing images and videos with Symmetric Positive Definite (SPD) ma...
research
11/19/2022

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

The assumption that many forms of high-dimensional data, such as images,...
research
05/02/2023

The Training Process of Many Deep Networks Explores the Same Low-Dimensional Manifold

We develop information-geometric techniques to analyze the trajectories ...
research
10/27/2022

Implications of sparsity and high triangle density for graph representation learning

Recent work has shown that sparse graphs containing many triangles canno...
research
06/24/2022

Data-driven reduced order models using invariant foliations, manifolds and autoencoders

This paper explores the question: how to identify a reduced order model ...
research
06/23/2018

Parallel Transport Unfolding: A Connection-based Manifold Learning Approach

Manifold learning offers nonlinear dimensionality reduction of high-dime...

Please sign up or login with your details

Forgot password? Click here to reset