Hierarchical Multi-Agent Systems provide convenient and relevant ways to analyze, model, and simulate complex systems composed of a large number of entities that interact at different levels of abstraction. In this paper, we introduce HAMLET (Hierarchical Agent-based Machine LEarning plaTform), a hybrid machine learning platform based on hierarchical multi-agent systems, to facilitate the research and democratization of geographically and/or locally distributed machine learning entities. The proposed system models a machine learning solutions as a hypergraph and autonomously sets up a multi-level structure of heterogeneous agents based on their innate capabilities and learned skills. HAMLET aids the design and management of machine learning systems and provides analytical capabilities for research communities to assess the existing and/or new algorithms/datasets through flexible and customizable queries. The proposed hybrid machine learning platform does not assume restrictions on the type of learning algorithms/datasets and is theoretically proven to be sound and complete with polynomial computational requirements. Additionally, it is examined empirically on 120 training and four generalized batch testing tasks performed on 24 machine learning algorithms and 9 standard datasets. The provided experimental results not only establish confidence in the platform's consistency and correctness but also demonstrate its testing and analytical capacity.
翻译:在本文件中,我们引入了HAMLET(基于等级的机器LEARING PlaTAForm),这是一个混合机器学习平台,其基础是分级的多试剂系统,以便利地理和/或地方分布的机器学习实体的研究和民主化;拟议的系统模型是一种机器学习解决方案,作为高压和自主地根据不同物力和学习技能,建立由众多实体组成的复杂系统的多层次结构。HAMLET协助机器学习系统的设计和管理,并为研究界提供分析能力,通过灵活和可定制的查询评估现有和/或新的算法/数据集。拟议的混合机器学习平台不对学习算法/数据集的类型施加限制,理论上证明它与多元计算要求是合理和完整的。此外,它从经验上审查了120项培训和4项通用分批测试任务,在24个机器学习算法和9个标准数据集上完成。它提供的实验结果不仅在测试中确立了一致性,而且还在分析中证明了一致性。