论文标题
AI自治:自我启发的开放世界持续学习和适应
AI Autonomy : Self-Initiated Open-World Continual Learning and Adaptation
论文作者
论文摘要
随着越来越多的AI代理在实践中使用,现在是时候考虑如何使这些代理完全自主的人(1)以自我激励和自我启动的方式继续学习,而不是在人工工程师的启动下定期脱机,并且(2)适应或适应意外或新颖的情况。由于现实世界是一个充满未知或新颖性的开放环境,因此检测新颖性,表征它们,适应/适应它们,收集地面真相训练数据并逐步学习未知/新颖性对于使AI越来越多的知识,强大,强大,自我维持的时间变得至关重要。这里的主要挑战是如何自动化该过程,以便通过代理自己的主动行动以及与人类,其他代理商和环境的互动,就像人类的在职学习一样。本文为此范式提出了一个框架(称为Sola),以促进建立自主和持续学习的研究,从而实现了AI代理。为了显示可行性,还描述了实施的代理。
As more and more AI agents are used in practice, it is time to think about how to make these agents fully autonomous so that they can (1) learn by themselves continually in a self-motivated and self-initiated manner rather than being retrained offline periodically on the initiation of human engineers and (2) accommodate or adapt to unexpected or novel circumstances. As the real-world is an open environment that is full of unknowns or novelties, the capabilities of detecting novelties, characterizing them, accommodating/adapting to them, gathering ground-truth training data and incrementally learning the unknowns/novelties become critical in making the AI agent more and more knowledgeable, powerful and self-sustainable over time. The key challenge here is how to automate the process so that it is carried out continually on the agent's own initiative and through its own interactions with humans, other agents and the environment just like human on-the-job learning. This paper proposes a framework (called SOLA) for this learning paradigm to promote the research of building autonomous and continual learning enabled AI agents. To show feasibility, an implemented agent is also described.