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A survey on metaverse: Fundamentals, security, and privacy
Metaverse, as an evolving paradigm of the next-generation Internet, aims to build a fully
immersive, hyper spatiotemporal, and self-sustaining virtual shared space for humans to …
immersive, hyper spatiotemporal, and self-sustaining virtual shared space for humans to …
Deep reinforcement learning for cyber security
The scale of Internet-connected systems has increased considerably, and these systems are
being exposed to cyberattacks more than ever. The complexity and dynamics of …
being exposed to cyberattacks more than ever. The complexity and dynamics of …
Adversarial attacks against network intrusion detection in IoT systems
Deep learning (DL) has gained popularity in network intrusion detection, due to its strong
capability of recognizing subtle differences between normal and malicious network activities …
capability of recognizing subtle differences between normal and malicious network activities …
Resilient machine learning for networked cyber physical systems: A survey for machine learning security to securing machine learning for CPS
Cyber Physical Systems (CPS) are characterized by their ability to integrate the physical and
information or cyber worlds. Their deployment in critical infrastructure have demonstrated a …
information or cyber worlds. Their deployment in critical infrastructure have demonstrated a …
Challenges and countermeasures for adversarial attacks on deep reinforcement learning
Deep reinforcement learning (DRL) has numerous applications in the real world, thanks to
its ability to achieve high performance in a range of environments with little manual …
its ability to achieve high performance in a range of environments with little manual …
Trusted ai in multiagent systems: An overview of privacy and security for distributed learning
Motivated by the advancing computational capacity of distributed end-user equipment (UE),
as well as the increasing concerns about sharing private data, there has been considerable …
as well as the increasing concerns about sharing private data, there has been considerable …
Attacking deep reinforcement learning with decoupled adversarial policy
While Deep Reinforcement Learning (DRL) has achieved outstanding performance in
extensive applications, exploiting its vulnerability with adversarial attacks is essential …
extensive applications, exploiting its vulnerability with adversarial attacks is essential …
Cats are not fish: Deep learning testing calls for out-of-distribution awareness
As Deep Learning (DL) is continuously adopted in many industrial applications, its quality
and reliability start to raise concerns. Similar to the traditional software development …
and reliability start to raise concerns. Similar to the traditional software development …
Adversarial robust deep reinforcement learning requires redefining robustness
E Korkmaz - Proceedings of the AAAI Conference on Artificial …, 2023 - ojs.aaai.org
Learning from raw high dimensional data via interaction with a given environment has been
effectively achieved through the utilization of deep neural networks. Yet the observed …
effectively achieved through the utilization of deep neural networks. Yet the observed …
Spark: Spatial-aware online incremental attack against visual tracking
Adversarial attacks of deep neural networks have been intensively studied on image, audio,
and natural language classification tasks. Nevertheless, as a typical while important real …
and natural language classification tasks. Nevertheless, as a typical while important real …