HyperAIHyperAI

Command Palette

Search for a command to run...

3 months ago

Global-Local Regularization Via Distributional Robustness

Hoang Phan Trung Le Trung Phung Tuan Anh Bui Nhat Ho Dinh Phung

Global-Local Regularization Via Distributional Robustness

Abstract

Despite superior performance in many situations, deep neural networks are often vulnerable to adversarial examples and distribution shifts, limiting model generalization ability in real-world applications. To alleviate these problems, recent approaches leverage distributional robustness optimization (DRO) to find the most challenging distribution, and then minimize loss function over this most challenging distribution. Regardless of achieving some improvements, these DRO approaches have some obvious limitations. First, they purely focus on local regularization to strengthen model robustness, missing a global regularization effect which is useful in many real-world applications (e.g., domain adaptation, domain generalization, and adversarial machine learning). Second, the loss functions in the existing DRO approaches operate in only the most challenging distribution, hence decouple with the original distribution, leading to a restrictive modeling capability. In this paper, we propose a novel regularization technique, following the veins of Wasserstein-based DRO framework. Specifically, we define a particular joint distribution and Wasserstein-based uncertainty, allowing us to couple the original and most challenging distributions for enhancing modeling capability and applying both local and global regularizations. Empirical studies on different learning problems demonstrate that our proposed approach significantly outperforms the existing regularization approaches in various domains: semi-supervised learning, domain adaptation, domain generalization, and adversarial machine learning.

Code Repositories

viethoang1512/glot
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
adversarial-robustness-on-cifar-10GLOT-DR
Accuracy: 84.13
Attack: AutoAttack: 49.94
domain-adaptation-on-imageclef-daGLOT-DR
Accuracy: 90.4
domain-adaptation-on-office-31GLOT-DR
Average Accuracy: 87.8
domain-generalization-on-cifar-100cGLOT-DR
Accuracy: 58.4
domain-generalization-on-cifar-10cGLOT-DR
Accuracy: 84.5
domain-generalization-on-pacs-2GLOT-DR
Average Accuracy: 73.5
semi-supervised-image-classification-on-cifarGLOT-DR
Percentage error: 10.6

Build AI with AI

From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.

AI Co-coding
Ready-to-use GPUs
Best Pricing
Get Started

Hyper Newsletters

Subscribe to our latest updates
We will deliver the latest updates of the week to your inbox at nine o'clock every Monday morning
Powered by MailChimp