针对对抗鲁棒性的capnet稀疏性研究

Lei Zhao, Lei Huang
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引用次数: 2

摘要

利用胶囊网络中的协议路由机制(routing-by-agreement mechanism, CapsNets)来构建具有局部对整体分配特征的可视化层次关系。不同层的胶囊之间的连接随着路由迭代的增加而变得稀疏。本文提出了测量、控制和可视化capnet稀疏性的技术。本文的一个重要观察是,稀疏的capnet可能对对抗性攻击更健壮。我们相信这一观察结果将为设计更健壮的模型提供见解。
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An Investigation on Sparsity of CapsNets for Adversarial Robustness
The routing-by-agreement mechanism in capsule networks (CapsNets) is used to build visual hierarchical relationships with a characteristic of assigning parts to wholes. The connections between capsules of different layers become sparser with more iterations of routing. This paper proposes techniques in measuring, controlling, and visualizing the sparsity of CapsNets. One essential observation in this paper is that the sparser CapsNets are possibly more robust to the adversarial attacks. We believe this observation will provide insights into designing more robust models.
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