Federated learning (FL) is a recently proposed distributed machine learning paradigm dealing with distributed and private data sets. Based on the data partition pattern, FL is often categorized into horizontal, vertical, and hybrid settings. Despite the fact that many works have been developed for the first two approaches, the hybrid FL setting (which deals with partially overlapped feature space and sample space) remains less explored, though this setting is extremely important in practice. In this paper, we first set up a new model-matching-based problem formulation for hybrid FL, then propose an efficient algorithm that can collaboratively train the global and local models to deal with full and partial featured data. We conduct numerical experiments on the multi-view ModelNet40 data set to validate the performance of the proposed algorithm. To the best of our knowledge, this is the first formulation and algorithm developed for the hybrid FL.
翻译:联邦学习(FL)是最近提议的一种分布式机器学习模式,涉及分布式和私人数据集。根据数据分割模式,FL往往被分为横向、纵向和混合设置。尽管为前两种方法开发了许多工程,但混合FL设置(处理部分重叠的特征空间和样本空间)仍然很少被探索,尽管这种设置在实践中极为重要。我们首先为混合FL设计了基于模型的问题配方,然后提出了一种高效算法,可以合作培训全球和地方模型,处理全部和部分特写数据。我们对多视图模型Net40数据集进行了数字实验,以验证拟议算法的性能。我们最了解的是,这是为混合FL开发的首个配方和算法。