Authors
Xu Yang, Cheng Deng, Kun Wei, Junchi Yan, Wei Liu
Publication date
2020
Journal
Advances in Neural Information Processing Systems
Volume
33
Pages
9098-9108
Description
Deep clustering integrates embedding and clustering together to obtain the optimal nonlinear embedding space, which is more effective in real-world scenarios compared with conventional clustering methods. However, the robustness of the clustering network is prone to being attenuated especially when it encounters an adversarial attack. A small perturbation in the embedding space will lead to diverse clustering results since the labels are absent. In this paper, we propose a robust deep clustering method based on adversarial learning. Specifically, we first attempt to define adversarial samples in the embedding space for the clustering network. Meanwhile, we devise an adversarial attack strategy to explore samples that easily fool the clustering layers but do not impact the performance of the deep embedding. We then provide a simple yet efficient defense algorithm to improve the robustness of the clustering network. Experimental results on two popular datasets show that the proposed adversarial learning method can significantly enhance the robustness and further improve the overall clustering performance. Particularly, the proposed method is generally applicable to multiple existing clustering frameworks to boost their robustness. The source code is available at https://github. com/xdxuyang/ALRDC.
Total citations
20202021202220232024119212315
Scholar articles
X Yang, C Deng, K Wei, J Yan, W Liu - Advances in Neural Information Processing Systems, 2020