Title
Manifold Regularized Deep Neural Networks using Adversarial Examples
Abstract
Learning meaningful representations using deep neural networks involves designing efficient training schemes and well-structured networks. Currently, the method of stochastic gradient descent that has a momentum with dropout is one of the most popular training protocols. Based on that, more advanced methods (i.e., Maxout and Batch Normalization) have been proposed in recent years, but most still suffer from performance degradation caused by small perturbations, also known as adversarial examples. To address this issue, we propose manifold regularized networks (MRnet) that utilize a novel training objective function that minimizes the difference between multi-layer embedding results of samples and those adversarial. Our experimental results demonstrated that MRnet is more resilient to adversarial examples and helps us to generalize representations on manifolds. Furthermore, combining MRnet and dropout allowed us to achieve competitive classification performances for three well-known benchmarks: MNIST, CIFAR-10, and SVHN.
Year
Venue
Field
2015
CoRR
Stochastic gradient descent,MNIST database,Embedding,Normalization (statistics),Artificial intelligence,Machine learning,Manifold,Deep neural networks,Mathematics,Adversarial system
DocType
Volume
Citations 
Journal
abs/1511.06381
2
PageRank 
References 
Authors
0.37
9
3
Name
Order
Citations
PageRank
Taehoon Lee1256.55
minsuk choi292.51
Sungroh Yoon356678.80