In recent years, mobile devices have gained increasing development with stronger computation capability and larger storage space. Some of the computation-intensive machine learning tasks can now be run on mobile devices. To exploit the resources available on mobile devices and preserve personal privacy, the concept of client-based machine learning has been proposed. It leverages the users' local hardware and local data to solve machine learning sub-problems on mobile devices and only uploads computation results rather than the original data for the optimization of the global model. Such an architecture can not only relieve computation and storage burdens on servers but also protect the users' sensitive information. Another benefit is the bandwidth reduction because various kinds of local data can be involved in the training process without being uploaded. In this article, we provide a literature review on the progressive development of machine learning from server based to client based. We revisit a number of widely used server-based and client-based machine learning methods and applications. We also extensively discuss the challenges and future directions in this area. We believe that this survey will give a clear overview of client-based machine learning and provide guidelines on applying client-based machine learning to practice.
翻译:近年来,移动设备以更强的计算能力和更大的存储空间获得越来越多的发展。一些计算密集型机器学习任务现在可以在移动设备上运行。为了利用移动设备上的资源并保护个人隐私,已经提出了基于客户的机器学习概念。它利用用户的本地硬件和地方数据来解决移动设备上的机器学习子问题,并且只上传计算结果,而不是优化全球模型的原始数据。这样的结构不仅可以减轻服务器的计算和存储负担,还可以保护用户的敏感信息。另一个好处是减少带宽,因为各种本地数据可以不上传而参与培训过程。在本篇文章中,我们提供了关于从服务器到客户的机器学习的逐步发展的文献审查。我们审视了一些广泛使用的基于服务器和基于客户的机器学习方法和应用。我们还广泛讨论了该领域的挑战和未来方向。我们认为,这一调查将清晰地概述基于客户的机器学习,并提供应用基于客户的机器学习实践的指导方针。