HAMLET: A Hierarchical Agent-based Machine Learning Platform
- URL: http://arxiv.org/abs/2010.04894v2
- Date: Mon, 29 Nov 2021 01:59:11 GMT
- Title: HAMLET: A Hierarchical Agent-based Machine Learning Platform
- Authors: Ahmad Esmaeili and John C. Gallagher and John A. Springer and Eric T.
Matson
- Abstract summary: HAMLET (Hierarchical Agent-based Machine LEarning plaTform) is a hybrid machine learning platform based on hierarchical multi-agent systems.
The proposed system models a machine learning solutions as a hypergraph and autonomously sets up a multi-level structure of heterogeneous agents.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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