论文标题
自组织民主化学习:朝向大规模的分布式学习系统
Self-organizing Democratized Learning: Towards Large-scale Distributed Learning Systems
论文作者
论文摘要
新兴的跨设备人工智能(AI)应用程序需要从传统的集中学习系统过渡到可以协作执行复杂学习任务的大规模分布式AI系统。在这方面,民主化学习(DEM-AI)提出了一种整体哲学,其基本原则用于构建大规模分布和民主化的机器学习系统。概述的原则旨在研究分布式学习系统中的概括,这些原则超出了现有的机制,例如联合学习。此外,此类学习系统依赖于具有有限和高度个性化数据的良好分布式学习代理的层次自我组织,并且可以根据专业和广义流程的基本二元性来发展和调节自己。受Dem-ai哲学的启发,本文提出了一种新颖的分布式学习方法。该方法由基于聚集聚类,分层概括和相应学习机制的自组织分层结构机制组成。随后,使用分布式个性化学习问题和分层更新机制的解决方案来制定递归形式的层次概括性学习问题,并显示出近似解决的问题。为此,提出了一种分布式学习算法,即杜姆(Demlearn)。与传统的FL算法相比,对基准MNIST,时尚与纳斯特,FE-MNIST和CIFAR-10数据集进行了广泛的实验,表明,所提出的算法在试剂中学习模型的通用性能更好。详细的分析提供了有用的观察结果,可以进一步处理DEM-AI系统中学习模型的概括和专业化表现。
Emerging cross-device artificial intelligence (AI) applications require a transition from conventional centralized learning systems towards large-scale distributed AI systems that can collaboratively perform complex learning tasks. In this regard, democratized learning (Dem-AI) lays out a holistic philosophy with underlying principles for building large-scale distributed and democratized machine learning systems. The outlined principles are meant to study a generalization in distributed learning systems that goes beyond existing mechanisms such as federated learning. Moreover, such learning systems rely on hierarchical self-organization of well-connected distributed learning agents who have limited and highly personalized data and can evolve and regulate themselves based on the underlying duality of specialized and generalized processes. Inspired by Dem-AI philosophy, a novel distributed learning approach is proposed in this paper. The approach consists of a self-organizing hierarchical structuring mechanism based on agglomerative clustering, hierarchical generalization, and corresponding learning mechanism. Subsequently, hierarchical generalized learning problems in recursive forms are formulated and shown to be approximately solved using the solutions of distributed personalized learning problems and hierarchical update mechanisms. To that end, a distributed learning algorithm, namely DemLearn is proposed. Extensive experiments on benchmark MNIST, Fashion-MNIST, FE-MNIST, and CIFAR-10 datasets show that the proposed algorithms demonstrate better results in the generalization performance of learning models in agents compared to the conventional FL algorithms. The detailed analysis provides useful observations to further handle both the generalization and specialization performance of the learning models in Dem-AI systems.