Alberto
Huertas Celdran
University of Zurich
Zúrich, SuizaPublicacions en col·laboració amb investigadors/es de University of Zurich (77)
2024
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A Systematic Literature Review of XR Interventions to Improve Motor Skills Development Among Autistic Children
IEEE Access, Vol. 12, pp. 108953-108974
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Adversarial attacks and defenses on ML- and hardware-based IoT device fingerprinting and identification
Future Generation Computer Systems, Vol. 152, pp. 30-42
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Analyzing the robustness of decentralized horizontal and vertical federated learning architectures in a non-IID scenario
Applied Intelligence, Vol. 54, Núm. 8, pp. 6637-6653
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Corrigendum to “Fedstellar: A platform for decentralized federated learning” [Expert Syst. Appl. 242 (2024) 122861] (S0957417423033638), (10.1016/j.eswa.2023.122861)
Expert Systems with Applications
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CyberSpec: Behavioral Fingerprinting for Intelligent Attacks Detection on Crowdsensing Spectrum Sensors
IEEE Transactions on Dependable and Secure Computing, Vol. 21, Núm. 1, pp. 284-297
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DART: A Solution for decentralized federated learning model robustness analysis
Array, Vol. 23
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Data fusion in neuromarketing: Multimodal analysis of biosignals, lifecycle stages, current advances, datasets, trends, and challenges
Information Fusion, Vol. 105
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Evaluating the impact of contextual information on the performance of intelligent continuous authentication systems
ACM International Conference Proceeding Series
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FederatedTrust: A solution for trustworthy federated learning
Future Generation Computer Systems, Vol. 152, pp. 83-98
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Fedstellar: A Platform for Decentralized Federated Learning
Expert Systems with Applications, Vol. 242
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Impact of neural cyberattacks on a realistic neuronal topology from the primary visual cortex of mice
Wireless Networks
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Mitigating communications threats in decentralized federated learning through moving target defense
Wireless Networks
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NeuronLab: BCI framework for the study of biosignals
Neurocomputing, Vol. 598
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Privacy-preserving hierarchical federated learning with biosignals to detect drowsiness while driving
Neural Computing and Applications, Vol. 36, Núm. 32, pp. 20425-20437
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RL and Fingerprinting to Select Moving Target Defense Mechanisms for Zero-Day Attacks in IoT
IEEE Transactions on Information Forensics and Security, Vol. 19, pp. 5520-5529
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Robust Federated Learning for execution time-based device model identification under label-flipping attack
Cluster Computing, Vol. 27, Núm. 1, pp. 313-324
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Single-board device individual authentication based on hardware performance and autoencoder transformer models
Computers and Security, Vol. 137
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Studying Drowsiness Detection Performance While Driving Through Scalable Machine Learning Models Using Electroencephalography
Cognitive Computation, Vol. 16, Núm. 3, pp. 1253-1267
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Studying the Robustness of Anti-Adversarial Federated Learning Models Detecting Cyberattacks in IoT Spectrum Sensors
IEEE Transactions on Dependable and Secure Computing, Vol. 21, Núm. 2, pp. 573-584
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Voyager: MTD-Based Aggregation Protocol for Mitigating Poisoning Attacks on DFL
Proceedings of IEEE/IFIP Network Operations and Management Symposium 2024, NOMS 2024