论文标题
选择联合学习体系结构模式的决策模型
Decision Models for Selecting Federated Learning Architecture Patterns
论文作者
论文摘要
在学术界和行业中,联合机器学习正在迅速增长,以解决机器学习中数据饥饿和隐私问题的解决方案。作为一个广泛分布的系统,联合机器学习需要各种系统设计思维。为了更好地设计联合机器学习系统,研究人员引入了多种模式和策略,涵盖了各种系统设计方面。但是,多种模式使设计师对何时和采用哪种模式感到困惑。在本文中,我们提供了一组决策模型,用于选择基于联合机器学习的系统文献综述的联合机器学习架构设计模式,以协助对联合机器学习知识有限的设计师和建筑师。每个决策模型将联合机器学习系统的功能和非功能要求映射到一组模式。我们还阐明了模式的缺点。我们通过将决策模式映射到大型科技公司的混凝土联合机器学习体系结构来评估模型的正确性和实用性来评估决策模型。评估结果表明,拟议的决策模型能够为联邦机器学习架构设计过程带来结构,并有助于明确阐明设计理由。
Federated machine learning is growing fast in academia and industries as a solution to solve data hungriness and privacy issues in machine learning. Being a widely distributed system, federated machine learning requires various system design thinking. To better design a federated machine learning system, researchers have introduced multiple patterns and tactics that cover various system design aspects. However, the multitude of patterns leaves the designers confused about when and which pattern to adopt. In this paper, we present a set of decision models for the selection of patterns for federated machine learning architecture design based on a systematic literature review on federated machine learning, to assist designers and architects who have limited knowledge of federated machine learning. Each decision model maps functional and non-functional requirements of federated machine learning systems to a set of patterns. We also clarify the drawbacks of the patterns. We evaluated the decision models by mapping the decision patterns to concrete federated machine learning architectures by big tech firms to assess the models' correctness and usefulness. The evaluation results indicate that the proposed decision models are able to bring structure to the federated machine learning architecture design process and help explicitly articulate the design rationale.