Security Related
Research in security is rapidly evolving to address vulnerabilities arising from the increasing use of AI and machine learning in various applications, from autonomous vehicles to medical devices and large language models. Current efforts focus on developing robust defenses against adversarial attacks, data poisoning, and privacy breaches, often employing techniques like differential privacy, federated learning, and advanced cryptographic methods alongside novel model architectures such as retrieval-augmented generation and mixture-of-experts models. This work is crucial for ensuring the trustworthiness and reliability of AI systems and protecting sensitive data in a wide range of critical sectors.
Papers
A Simple Architecture for Enterprise Large Language Model Applications based on Role based security and Clearance Levels using Retrieval-Augmented Generation or Mixture of Experts
Atilla Özgür, Yılmaz Uygun
Towards a Robotic Intrusion Prevention System: Combining Security and Safety in Cognitive Social Robots
Francisco Martín, Enrique Soriano-Salvador, José Miguel Guerrero, Gorka Guardiola Múzquiz, Juan Carlos Manzanares, Francisco J. Rodríguez
NoiSec: Harnessing Noise for Security against Adversarial and Backdoor Attacks
Md Hasan Shahriar, Ning Wang, Y. Thomas Hou, Wenjing Lou
Security and Privacy of 6G Federated Learning-enabled Dynamic Spectrum Sharing
Viet Vo, Thusitha Dayaratne, Blake Haydon, Xingliang Yuan, Shangqi Lai, Sharif Abuadbba, Hajime Suzuki, Carsten Rudolph