This website requires JavaScript.

Tropical Decision Boundaries for Neural Networks Are Robust Against Adversarial Attacks

Kurt PasqueChristopher TeskaRuriko YoshidaKeiji MiuraJefferson Huang
Feb 2024
0被引用
0笔记
摘要原文
We introduce a simple, easy to implement, and computationally efficient tropical convolutional neural network architecture that is robust against adversarial attacks. We exploit the tropical nature of piece-wise linear neural networks by embedding the data in the tropical projective torus in a single hidden layer which can be added to any model. We study the geometry of its decision boundary theoretically and show its robustness against adversarial attacks on image datasets using computational experiments.
展开全部
机器翻译
AI理解论文&经典十问
图表提取
参考文献
发布时间 · 被引用数 · 默认排序
被引用
发布时间 · 被引用数 · 默认排序
社区问答