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 well-connected, 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 self-organized 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.
翻译:由于可获得大量数据和处理能力,目前人工智能系统在解决复杂任务方面是有效的,然而,尽管大赦国际在不同领域取得了成功,但设计能够真正模仿人工一般智能等人类认知能力的人工智能系统的问题仍然基本上没有解决,因此,许多新兴的跨系统应用将要求从传统的中央学习系统过渡到大规模分布的可协作执行多重复杂学习任务的人工智能系统。因此,我们提出一种新型设计理念,称为民主化学习(Dem-AI),其目标是建立大规模分布式学习系统,依靠分布式学习机构,这些机构具有良好联系,但学习能力有限。相应地,在人类社会团体的启发下,拟议的民主知识系统的专门学习机构团体将自成一个等级结构,以更有效地集体执行学习任务。因此,民主学会学习系统可以根据我们称之为专门化和普遍化进程的两个根本的双重性进程来演变和调节自己。在这方面,我们提出一种参考设计,作为指导性设计更强、更精准、更精准的标准化的系统,我们从基础领域开始,从结构上进行更好的学习。