AIMar 5, 2024

Leveraging Federated Learning and Edge Computing for Recommendation Systems within Cloud Computing Networks

arXiv:2403.03165v235 citationsh-index: 5Other Conferences
Originality Incremental advance
AI Analysis

This work addresses scalability and reliability issues in federated learning for edge-based recommendation systems, representing an incremental improvement over existing methods.

The paper tackles communication inefficiency and node failures in federated learning networks for recommendation systems by proposing a hierarchical federated learning framework and a decentralized caching algorithm with federated deep reinforcement learning, resulting in improved edge server resource utilization and mitigation of soft click impacts on user experience.

To enable large-scale and efficient deployment of artificial intelligence (AI), the combination of AI and edge computing has spawned Edge Intelligence, which leverages the computing and communication capabilities of end devices and edge servers to process data closer to where it is generated. A key technology for edge intelligence is the privacy-protecting machine learning paradigm known as Federated Learning (FL), which enables data owners to train models without having to transfer raw data to third-party servers. However, FL networks are expected to involve thousands of heterogeneous distributed devices. As a result, communication efficiency remains a key bottleneck. To reduce node failures and device exits, a Hierarchical Federated Learning (HFL) framework is proposed, where a designated cluster leader supports the data owner through intermediate model aggregation. Therefore, based on the improvement of edge server resource utilization, this paper can effectively make up for the limitation of cache capacity. In order to mitigate the impact of soft clicks on the quality of user experience (QoE), the authors model the user QoE as a comprehensive system cost. To solve the formulaic problem, the authors propose a decentralized caching algorithm with federated deep reinforcement learning (DRL) and federated learning (FL), where multiple agents learn and make decisions independently

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