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Distributed and Democratized Learning: Philosophy and Research Challenges

机译:分布式和民主化的学习:哲学与研究挑战

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Due to the availability of huge amounts of data and processing abilities, current artificial intelligence (AI) systems are effective in solving complex tasks. However, despite the success of AI in different areas, the problem of designing AI systems that can truly mimic human cognitive capabilities such as artificial general intelligence, remains largely open. Consequently, many emerging cross-device AI applications will require a transition from traditional centralized learning systems towards large-scale distributed AI systems that can collaboratively perform multiple complex learning tasks. In this paper, we propose a novel design philosophy called democratized learning (Dem-AI) whose goal is to build large-scale distributed learning systems that rely on the self-organization of distributed learning agents that are wellconnected, but limited in learning capabilities. Correspondingly, inspired by the societal groups of humans, the specialized groups of learning agents in the proposed Dem-AI system are selforganized in a hierarchical structure to collectively perform learning tasks more efficiently. As such, the Dem-AI learning system can evolve and regulate itself based on the underlying duality of two processes which we call specialized and generalized processes. In this regard, we present a reference design as a guideline to realize future Dem-AI systems, inspired by various interdisciplinary fields. Accordingly, we introduce four underlying mechanisms in the design such as plasticity-stability transition mechanism, self-organizing hierarchical structuring, specialized learning, and generalization. Finally, we establish possible extensions and new challenges for the existing learning approaches to provide better scalable, flexible, and more powerful learning systems with the new setting of Dem-AI.
机译:由于巨额数据和处理能力的可用性,目前的人工智能(AI)系统在解决复杂任务方面是有效的。然而,尽管AI在不同领域取得了成功,但设计了设计能够真正模仿人为一般情报等人类认知能力的AI系统的问题仍然很大程度上是开放的。因此,许多新兴的跨设备AI应用程序将需要从传统集中学习系统朝向可以协作执行多个复杂学习任务的大规模分布式AI系统的转换。在本文中,我们提出了一种名为民主化的学习的新设计理念(Dem-AI),其目标是建立大规模分布式学习系统,依赖于整个良好的分布式学习代理的自我组织,但在学习能力中有限。相应地,由人类的社会群体的启发,拟议的DEM-AI系统中的专业学习代理团体在分层结构中是自动化的,以便更有效地统称地执行学习任务。因此,DEM-AI学习系统可以基于我们称之为专用和广义流程的两个进程的基础二元性来发展和调节本身。在这方面,我们向参考设计作为实现未来DEM-AI系统的指导,受到各种跨学科的启发。因此,我们在设计中引入了四种潜在机制,例如可塑性 - 稳定性转换机制,自组织层次结构化,专业学习和泛化。最后,我们为现有的学习方法制定了可能的扩展和新挑战,以提供更好的可扩展,灵活,更强大的学习系统,具有新的DEM-AI的设置。

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