Geometric instability of out of distribution data across autoencoder architecture

01/28/2022
by   Susama Agarwala, et al.
0

We study the map learned by a family of autoencoders trained on MNIST, and evaluated on ten different data sets created by the random selection of pixel values according to ten different distributions. Specifically, we study the eigenvalues of the Jacobians defined by the weight matrices of the autoencoder at each training and evaluation point. For high enough latent dimension, we find that each autoencoder reconstructs all the evaluation data sets as similar generalized characters, but that this reconstructed generalized character changes across autoencoder. Eigenvalue analysis shows that even when the reconstructed image appears to be an MNIST character for all out of distribution data sets, not all have latent representations that are close to the latent representation of MNIST characters. All told, the eigenvalue analysis demonstrated a great deal of geometric instability of the autoencoder both as a function on out of distribution inputs, and across architectures on the same set of inputs.

READ FULL TEXT

page 12

page 13

research
01/27/2022

Eigenvalues of Autoencoders in Training and at Initialization

In this paper, we investigate the evolution of autoencoders near their i...
research
04/05/2022

LatentGAN Autoencoder: Learning Disentangled Latent Distribution

In autoencoder, the encoder generally approximates the latent distributi...
research
11/21/2017

Autoencoder Node Saliency: Selecting Relevant Latent Representations

The autoencoder is an artificial neural network model that learns hidden...
research
11/21/2020

Use of Student's t-Distribution for the Latent Layer in a Coupled Variational Autoencoder

A Coupled Variational Autoencoder, which incorporates both a generalized...
research
12/23/2022

Eigenvalue initialisation and regularisation for Koopman autoencoders

Regularising the parameter matrices of neural networks is ubiquitous in ...
research
07/09/2018

Using Swarm Optimization To Enhance Autoencoders Images

Autoencoders learn data representations through reconstruction. Robust t...

Please sign up or login with your details

Forgot password? Click here to reset