Adversarial Robustness in Multi-Task Learning: Promises and Illusions

10/26/2021
by   Salah Ghamizi, et al.
0

Vulnerability to adversarial attacks is a well-known weakness of Deep Neural networks. While most of the studies focus on single-task neural networks with computer vision datasets, very little research has considered complex multi-task models that are common in real applications. In this paper, we evaluate the design choices that impact the robustness of multi-task deep learning networks. We provide evidence that blindly adding auxiliary tasks, or weighing the tasks provides a false sense of robustness. Thereby, we tone down the claim made by previous research and study the different factors which may affect robustness. In particular, we show that the choice of the task to incorporate in the loss function are important factors that can be leveraged to yield more robust models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/05/2022

Hear No Evil: Towards Adversarial Robustness of Automatic Speech Recognition via Multi-Task Learning

As automatic speech recognition (ASR) systems are now being widely deplo...
research
01/11/2020

Exploring and Improving Robustness of Multi Task Deep Neural Networks via Domain Agnostic Defenses

In this paper, we explore the robustness of the Multi-Task Deep Neural N...
research
10/27/2018

Towards Robust Deep Neural Networks

We examine the relationship between the energy landscape of neural netwo...
research
08/04/2021

Deep multi-task mining Calabi-Yau four-folds

We continue earlier efforts in computing the dimensions of tangent space...
research
07/01/2020

Multi-Task Variational Information Bottleneck

In this paper we propose a multi-task deep learning model called multi-t...
research
04/02/2022

SkeleVision: Towards Adversarial Resiliency of Person Tracking with Multi-Task Learning

Person tracking using computer vision techniques has wide ranging applic...
research
10/15/2018

Stop Illegal Comments: A Multi-Task Deep Learning Approach

Deep learning methods are often difficult to apply in the legal domain d...

Please sign up or login with your details

Forgot password? Click here to reset