A cognitive architecture aimed at cumulative learning must provide the necessary information and control structures to allow agents to learn incrementally and autonomously from their experience. This involves managing an agent's goals as well as continuously relating sensory information to these in its perception-cognition information stack. The more varied the environment of a learning agent is, the more general and flexible must be these mechanisms to handle a wider variety of relevant patterns, tasks, and goal structures. While many researchers agree that information at different levels of abstraction likely differs in its makeup and structure and processing mechanisms, agreement on the particulars of such differences is not generally shared in the research community. A binary processing architecture (often referred to as System-1 and System-2) has been proposed as a model of cognitive processing for low- and high-level information, respectively. We posit that cognition is not binary in this way and that knowledge at any level of abstraction involves what we refer to as neurosymbolic information, meaning that data at both high and low levels must contain both symbolic and subsymbolic information. Further, we argue that the main differentiating factor between the processing of high and low levels of data abstraction can be largely attributed to the nature of the involved attention mechanisms. We describe the key arguments behind this view and review relevant evidence from the literature.
翻译:旨在累积学习的认知结构必须提供必要的信息和控制结构,使代理商能够从他们的经验中逐步和自主地学习。这涉及管理代理人的目标,以及在其认知认知信息堆中不断将感官信息与它们联系起来。一个学习代理商的环境越是多样化,处理更广泛的相关模式、任务和目标结构的认知结构就越一般和灵活。虽然许多研究人员同意,不同层次的抽象信息在其构成、结构和处理机制方面可能有所不同,但研究界普遍不分享关于这种差异的具体细节的协议。一个二进制处理结构(通常称为System-1和System-2)已经分别作为低层次信息的认知处理模式提出。我们认为,认知并不是这种方式的二进制,而任何层次的抽象知识都涉及我们所说的神经心理信息,这意味着高层次和低层次的数据必须包含象征性和亚质信息。此外,我们认为,高层次和低层次证据的处理主要区别因素是高层次和低层次证据的处理过程。我们基本上可以描述涉及的关键证据机制。