Managing inputs that are novel, unknown, or out-of-distribution is critical as an agent moves from the lab to the open world. Novelty-related problems include being tolerant to novel perturbations of the normal input, detecting when the input includes novel items, and adapting to novel inputs. While significant research has been undertaken in these areas, a noticeable gap exists in the lack of a formalized definition of novelty that transcends problem domains. As a team of researchers spanning multiple research groups and different domains, we have seen, first hand, the difficulties that arise from ill-specified novelty problems, as well as inconsistent definitions and terminology. Therefore, we present the first unified framework for formal theories of novelty and use the framework to formally define a family of novelty types. Our framework can be applied across a wide range of domains, from symbolic AI to reinforcement learning, and beyond to open world image recognition. Thus, it can be used to help kick-start new research efforts and accelerate ongoing work on these important novelty-related problems. This extended version of our AAAI 2021 paper included more details and examples in multiple domains.
翻译:作为从实验室到开放世界的代理机构,管理新颖、未知或超出分配范围的投入至关重要。新颖问题包括容忍对正常投入的新干扰,在投入包括新产品时发现,适应新投入,适应新投入。虽然在这些领域已经进行了大量研究,但在缺乏超越问题领域的新事物正式定义方面还存在明显差距。作为一个跨多个研究小组和不同领域的研究人员团队,我们首先看到由错误确定的新颖问题以及不一致的定义和术语引起的困难。因此,我们提出了关于新颖的正式理论的第一个统一框架,并使用框架正式界定新颖类型的家庭。我们的框架可以适用于广泛的领域,从象征性的AI到强化学习,再到开放世界形象认知。因此,可以用来帮助启动新的研究工作,加速这些重要的新相关问题的持续工作。我们AAI 2021年的扩大版文件包含了多个领域更多的细节和实例。