论文标题

Wrapperfl:工业联邦学习的模型不可知论插件

WrapperFL: A Model Agnostic Plug-in for Industrial Federated Learning

论文作者

Wu, Xueyang, Tan, Shengqi, Xu, Qian, Yang, Qiang

论文摘要

作为保护隐私的协作机器学习范式,联邦学习在行业中越来越关注。随着需求的巨大增长,有许多联合学习平台使联邦参与者能够从头开始建立并建立一个联合模型。但是,退出平台高度侵入性,复杂且难以与建造的机器学习模型集成。对于许多已经具有成熟的服务模型的现实世界企业,现有的联合学习平台具有很高的进入障碍和发展成本。本文介绍了一个简单而实用的联合学习插件,其灵感来自合奏学习,被称为包装,使参与者能够以最低的成本建立/加入使用现有模型的联合系统。 Wrapperfl通过简单地将其连接到现有模型的输入和输出界面,而无需重新开发,从而大大减少了人力和资源的开销。我们在异质数据分布和异质模型下验证了有关各种任务的建议方法。实验结果表明,在实际设置下,包装可以成功地应用于广泛的应用程序,并以低成本的联合学习来改善本地模型。

Federated learning, as a privacy-preserving collaborative machine learning paradigm, has been gaining more and more attention in the industry. With the huge rise in demand, there have been many federated learning platforms that allow federated participants to set up and build a federated model from scratch. However, exiting platforms are highly intrusive, complicated, and hard to integrate with built machine learning models. For many real-world businesses that already have mature serving models, existing federated learning platforms have high entry barriers and development costs. This paper presents a simple yet practical federated learning plug-in inspired by ensemble learning, dubbed WrapperFL, allowing participants to build/join a federated system with existing models at minimal costs. The WrapperFL works in a plug-and-play way by simply attaching to the input and output interfaces of an existing model, without the need of re-development, significantly reducing the overhead of manpower and resources. We verify our proposed method on diverse tasks under heterogeneous data distributions and heterogeneous models. The experimental results demonstrate that WrapperFL can be successfully applied to a wide range of applications under practical settings and improves the local model with federated learning at a low cost.

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