基于节点感知的区块链联邦学习动态加权方法以提高性能

Ankit Punia
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引用次数: 0

摘要

与传统的集中式学习方法相比,联邦学习(FL)是一种分散的学习策略。当FL与中央服务器交互时,每个设备的本地学习进度,逐步改进学习模型。但由于传输能力有限,用户数量多,可能造成网络拥塞。该模型快速、稳定的收敛能力和目标学习的准确性是减少网络负载的一种方法。在本研究中,我们提出了一个使用区块链进行联合学习的场景。通过区块链,每个参与学习的用户都可以被区分为一个“节点”,有效地鼓励了用户的参与。诚信、稳定和其他目标也可以被追求。在这两种权重之间进行选择时,应该咨询负责刷新全局表示的消费者。在确定每个客户的重要性时,我们首先考虑的是他们对当地的了解程度。其次,我们在确定权重时考虑了每个客户的参与频率。为了比较我们建议的系统与其他方案的有效性,我们选择了两个关键性能指标:学习率和标准差。仿真结果表明,与现有方案相比,我们提出的系统具有更高的稳定性和更快的收敛时间,以达到期望的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Node-Aware Dynamic Weighting Methods for Federated Learning on the Blockchain to Improve Performance
In contrast to the traditional centralized learning approach, federated learning (FL) is a decentralized learning strategy. Every device’s local learning progress when the FL interacts with the central server, progressively improving the learning model. Nonetheless, it may cause network congestion because of limited transmission capacity and the participation of a large number of users. The model’s ability to converge quickly, steadily, and with target learning accuracy is one method for reducing the network load. We suggest a scenario for federated learning using blockchain in this study. Every user who participates in learning may be distinguished as a “node” via blockchain, which effectively encourages user participation. Integrity, stability, and other goals can also be pursued. When choosing between the two sorts of weights, the consumer in charge of refreshing the global representation should be consulted. When determining how much each customer matters, we first factor on how well they've learned locally.. Second, we take each client’s involvement frequency into consideration when determining the weight. To compare the effectiveness of our suggested system with that of other schemes, we select two critical performance indicators: learning rate and standard deviation. The simulation results demonstrate that, in comparison to existing schemes, our suggested system delivers greater stability and quick convergence time for the desired accuracy.
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