Research Topic

Adversarial Robustness in Machine Learning

This cluster of papers focuses on the robustness of deep learning models against adversarial attacks, exploring topics such as adversarial examples, security, uncertainty estimation, defenses, and verification. It delves into the challenges and potential solutions for ensuring the resilience of neural networks in the face of malicious inputs.

Works
56,788
Citations
533,196
Domain
Physical Sciences
Field
Computer Science
Subfield
Artificial Intelligence
OpenAlex ID
T11689

Taxonomy Context

Physical Sciences / Computer Science / Artificial Intelligence

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