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Concept Drift Detection and Adaptation for Robotics and Mobile Devices in Federated and Continual Settings

机译:联合和连续环境下机器人和移动设备的概念漂移检测和适应

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Service robots and other smart devices, such as smartphones, have access to large amounts of data suitable for learning models, which can greatly improve the customer experience. Federated learning is a popular framework that allows multiple distributed devices to train deep learning models remotely, collaboratively, and preserving data privacy. However, little research has been done regarding the scenario where data distribution is non-identical among the participants and it also changes over time in unforeseen ways, causing what is known as concept drift. This situation is, however, very common in real life, and poses new challenges to both federated and continual learning. In this work, we propose an extension of the most widely known federated algorithm, FedAvg, adapting it for continual learning under concept drift. We empirically demonstrate the weaknesses of regular FedAvg and prove that our extended method outperforms the original one in this type of scenario.
机译:服务机器人和智能手机等其他智能设备可以访问大量适合学习模型的数据,这可以极大地改善客户体验。联邦学习是一种流行的框架,它允许多个分布式设备远程、协作地训练深度学习模型,并保护数据隐私。然而,对于参与者之间的数据分布不一致,并且随着时间的推移以不可预见的方式发生变化,导致所谓的概念漂移的情况,几乎没有进行过研究。然而,这种情况在现实生活中非常普遍,对联合学习和持续学习都提出了新的挑战。在这项工作中,我们提出了最广为人知的联邦算法FedAvg的一个扩展,使其适应概念漂移下的持续学习。我们通过实证证明了常规FedAvg的缺点,并证明在这种情况下,我们的扩展方法优于原始方法。

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