Nowadays, collective adaptive systems have become crucial as modern systems increasingly adopt this vision. These systems can be leveraged as a means to facilitate cooperative adaptive learning. However, implementing such systems presents various challenges, including: scalability, failures, non-iid data and complex architectures. This paper presents a modern approach to cooperative and privacy-resilient learning by leveraging macroprogramming. Specifically, we propose a new framework based on the integration of aggregate computing and federated learning, aiming to address these challenges and enhance the effectiveness and security of cooperative learning systems.
Domini, D. (2024). Towards Self-Adaptive Cooperative Learning in Collective Systems. Institute of Electrical and Electronics Engineers Inc. [10.1109/acsos-c63493.2024.00049].
Towards Self-Adaptive Cooperative Learning in Collective Systems
Domini, Davide
Primo
2024
Abstract
Nowadays, collective adaptive systems have become crucial as modern systems increasingly adopt this vision. These systems can be leveraged as a means to facilitate cooperative adaptive learning. However, implementing such systems presents various challenges, including: scalability, failures, non-iid data and complex architectures. This paper presents a modern approach to cooperative and privacy-resilient learning by leveraging macroprogramming. Specifically, we propose a new framework based on the integration of aggregate computing and federated learning, aiming to address these challenges and enhance the effectiveness and security of cooperative learning systems.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


