Breaking Neural Reasoning Architectures With Metamorphic Relation-Based Adversarial Examples.

Journal: IEEE transactions on neural networks and learning systems
Published Date:

Abstract

The ability to read, reason, and infer lies at the heart of neural reasoning architectures. After all, the ability to perform logical reasoning over language remains a coveted goal of Artificial Intelligence. To this end, models such as the Turing-complete differentiable neural computer (DNC) boast of real logical reasoning capabilities, along with the ability to reason beyond simple surface-level matching. In this brief, we propose the first probe into DNC's logical reasoning capabilities with a focus on text-based question answering (QA). More concretely, we propose a conceptually simple but effective adversarial attack based on metamorphic relations. Our proposed adversarial attack reduces DNCs' state-of-the-art accuracy from 100% to 1.5% in the worst case, exposing weaknesses and susceptibilities in modern neural reasoning architectures. We further empirically explore possibilities to defend against such attacks and demonstrate the utility of our adversarial framework as a simple scalable method to improve model adversarial robustness.

Authors

  • Alvin Chan
    Department of Neurological Surgery, The University of California, Irvine, Orange, California, USA.
  • Lei Ma
    School of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 611731, Sichuan, China. Electronic address: leima@wit.edu.cn.
  • Felix Juefei-Xu
  • Yew-Soon Ong
    Rolls-Royce@NTU Corporate Lab c/o, School of Computer Engineering, Nanyang Technological University, Singapore. Electronic address: ASYSOng@ntu.edu.sg.
  • Xiaofei Xie
  • Minhui Xue
  • Yang Liu
    Department of Computer Science, Hong Kong Baptist University, Hong Kong, China.