Title
A Black-Box Attack on Neural Networks Based on Swarm Evolutionary Algorithm.
Abstract
Neural networks play an increasingly important role in the field of machine learning and are included in many applications in society. Unfortunately, neural networks suffer from adversarial examples generated to attack them. However, most of the generation approaches either assume that the attacker has full knowledge of the neural network model or are limited by the type of attacked model. In this paper, we propose a new approach that generates a black-box attack to neural networks based on the swarm evolutionary algorithm. Benefiting from the improvements in the technology and theoretical characteristics of evolutionary algorithms, our approach has the advantages of effectiveness, black-box attack, generality, and randomness. Our experimental results show that both the MNIST images and the CIFAR-10 images can be perturbed to successful generate a black-box attack with 100% probability on average. In addition, the proposed attack, which is successful on distilled neural networks with almost 100% probability, is resistant to defensive distillation. The experimental results also indicate that the robustness of the artificial intelligence algorithm is related to the complexity of the model and the data set. In addition, we find that the adversarial examples to some extent reproduce the characteristics of the sample data learned by the neural network model.
Year
DOI
Venue
2020
10.1007/978-3-030-55304-3_14
ACISP
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Xiaolei Liu1118.70
Teng Hu272.85
Kangyi Ding312.05
Yang Bai46824.51
Weina Niu552.09
Jiazhong Lu652.12