Applied Federated Model Personalisation in the Industrial Domain: A Comparative Study

Ilias Siniosoglou, Vasileios Argyriou, George Fragulis, Panagiotis Fouliras, Georgios Th. Papadopoulos, Anastasios Lytos, Panagiotis Sarigiannidis
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Abstract

The time-consuming nature of training and deploying complicated Machine and Deep Learning (DL) models for a variety of applications continues to pose significant challenges in the field of Machine Learning (ML). These challenges are particularly pronounced in the federated domain, where optimizing models for individual nodes poses significant difficulty. Many methods have been developed to tackle this problem, aiming to reduce training expenses and time while maintaining efficient optimisation. Three suggested strategies to tackle this challenge include Active Learning, Knowledge Distillation, and Local Memorization. These methods enable the adoption of smaller models that require fewer computational resources and allow for model personalization with local insights, thereby improving the effectiveness of current models. The present study delves into the fundamental principles of these three approaches and proposes an advanced Federated Learning System that utilises different Personalisation methods towards improving the accuracy of AI models and enhancing user experience in real-time NG-IoT applications, investigating the efficacy of these techniques in the local and federated domain. The results of the original and optimised models are then compared in both local and federated contexts using a comparison analysis. The post-analysis shows encouraging outcomes when it comes to optimising and personalising the models with the suggested techniques.
工业领域的应用联合模型个性化:比较研究
为各种应用训练和部署复杂的机器学习和深度学习(DL)模型非常耗时,这仍然是机器学习(ML)领域面临的重大挑战。这些挑战在联合领域尤为突出,因为在联合领域,优化单个节点的模型非常困难。为解决这一问题,人们开发了许多方法,旨在减少训练费用和时间,同时保持高效的优化。应对这一挑战的三种建议策略包括主动学习(Active Learning)、知识蒸馏(Knowledge Distillation)和本地记忆(LocalMemorization)。通过这些方法,可以采用需要更少计算资源的小型模型,并利用本地知识实现模型个性化,从而提高当前模型的有效性。本研究深入探讨了这三种方法的基本原理,并提出了一种先进的联盟学习系统,该系统利用不同的个性化方法来提高人工智能模型的准确性,并增强 NG-IoT 实时应用中的用户体验,同时研究了这些技术在本地和联盟领域的有效性。然后通过对比分析,比较了本地和联盟背景下原始模型和优化模型的结果。后分析表明,在使用建议的技术优化和个性化模型方面,取得了令人鼓舞的成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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