Neural Networks in Adversarial Setting and Ill-Conditioned Weight Space

01/03/2018
by   Mayank Singh, et al.
0

Recently, Neural networks have seen a huge surge in its adoption due to their ability to provide high accuracy on various tasks. On the other hand, the existence of adversarial examples have raised suspicions regarding the generalization capabilities of neural networks. In this work, we focus on the weight matrix learnt by the neural networks and hypothesize that ill conditioned weight matrix is one of the contributing factors in neural network's susceptibility towards adversarial examples. For ensuring that the learnt weight matrix's condition number remains sufficiently low, we suggest using orthogonal regularizer. We show that this indeed helps in increasing the adversarial accuracy on MNIST and F-MNIST datasets.

READ FULL TEXT

page 2

page 6

research
11/20/2019

Logic-inspired Deep Neural Networks

Deep neural networks have achieved impressive performance and become de-...
research
09/12/2019

Inspecting adversarial examples using the Fisher information

Adversarial examples are slight perturbations that are designed to fool ...
research
08/05/2019

Automated Detection System for Adversarial Examples with High-Frequency Noises Sieve

Deep neural networks are being applied in many tasks with encouraging re...
research
08/09/2019

On the Adversarial Robustness of Neural Networks without Weight Transport

Neural networks trained with backpropagation, the standard algorithm of ...
research
03/01/2023

Adversarial Examples Exist in Two-Layer ReLU Networks for Low Dimensional Data Manifolds

Despite a great deal of research, it is still not well-understood why tr...
research
03/12/2014

Memory Capacity of Neural Networks using a Circulant Weight Matrix

This paper presents results on the memory capacity of a generalized feed...
research
02/26/2020

Improving Robustness of Deep-Learning-Based Image Reconstruction

Deep-learning-based methods for different applications have been shown v...

Please sign up or login with your details

Forgot password? Click here to reset