论文标题

在异质环境中联合的自制学习:HAR的基线方法的限制

Federated Self-Supervised Learning in Heterogeneous Settings: Limits of a Baseline Approach on HAR

论文作者

Ek, Sannara, Rombourg, Romain, Portet, François, Lalanda, Philippe

论文摘要

Federated Learning是一种新的机器学习范式,涉及独立设备上的分布式模型学习。联合学习的众多优点之一是,培训数据留在设备上(例如智能手机),并且仅与集中式服务器共享学习的模型。在监督学习的情况下,标签将委托给客户。但是,对于许多任务(例如人类活动识别),获取此类标签可能非常昂贵且容易出错。因此,大量数据仍然没有标记且未探索。主要关注监督学习的大多数现有联合学习方法主要忽略了这些未标记的数据。此外,目前尚不清楚标准联合学习方法是否适合于自学学习。处理该问题的少数研究局限于同质数据集的有利状况。这项工作为在现实的环境中对联邦学习的参考评估奠定了基础。我们表明,标准的轻型自动编码器和标准联合平均值无法通过几个现实的异质数据集学习人类活动识别的强大表示形式。这些发现倡导在联邦自我监督学习方面进行更深入的研究工作,以利用移动设备上存在的异质无标记数据的质量。

Federated Learning is a new machine learning paradigm dealing with distributed model learning on independent devices. One of the many advantages of federated learning is that training data stay on devices (such as smartphones), and only learned models are shared with a centralized server. In the case of supervised learning, labeling is entrusted to the clients. However, acquiring such labels can be prohibitively expensive and error-prone for many tasks, such as human activity recognition. Hence, a wealth of data remains unlabelled and unexploited. Most existing federated learning approaches that focus mainly on supervised learning have mostly ignored this mass of unlabelled data. Furthermore, it is unclear whether standard federated Learning approaches are suited to self-supervised learning. The few studies that have dealt with the problem have limited themselves to the favorable situation of homogeneous datasets. This work lays the groundwork for a reference evaluation of federated Learning with Semi-Supervised Learning in a realistic setting. We show that standard lightweight autoencoder and standard Federated Averaging fail to learn a robust representation for Human Activity Recognition with several realistic heterogeneous datasets. These findings advocate for a more intensive research effort in Federated Self Supervised Learning to exploit the mass of heterogeneous unlabelled data present on mobile devices.

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