The success of machine learning applications often needs a large quantity of data. Recently, federated learning (FL) is attracting increasing attention due to the demand for data privacy and security, especially in the medical field. However, the performance of existing FL approaches often deteriorates when there exist domain shifts among clients, and few previous works focus on personalization in healthcare. In this article, we propose FedHealth 2, an extension of FedHealth \cite{chen2020fedhealth} to tackle domain shifts and get personalized models for local clients. FedHealth 2 obtains the client similarities via a pretrained model, and then it averages all weighted models with preserving local batch normalization. Wearable activity recognition and COVID-19 auxiliary diagnosis experiments have evaluated that FedHealth 2 can achieve better accuracy (10%+ improvement for activity recognition) and personalized healthcare without compromising privacy and security.
翻译:机器学习应用的成功往往需要大量的数据。最近,由于对数据隐私和安全的需求,特别是在医疗领域,联合学习(FL)正在引起越来越多的关注。然而,当客户之间出现域变换时,现有的FL方法的性能往往会恶化,而以前的工作很少侧重于保健方面的个性化。在本篇文章中,我们提议FedHealth 2, 扩大FedHealth\cite{chen2020Fedhealth} 的范围, 以便处理域变换,并为当地客户获得个性化模式。FedHeal 2通过预先培训的模式获得客户的相似之处,然后将所有加权模式平均地维持当地批量的正常化。Wewable 活动识别和COVID-19辅助诊断实验评估FedHeal 2能够实现更准确性(活动识别改善10 ⁇ )和个性化保健,同时又不损害隐私和安全。