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Problem solving methods and knowledge systems: A personal journey to perceptual images as knowledge

机译:解决问题的方法和知识系统:将感知图像作为知识的个人旅程

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I was among those who proposed problem solving methods (PSMs) in the late 1970s and early 1980s as a knowledge-level description of strategies useful in building knowledge-based systems. This paper summarizes the evolution of my ideas in the last two decades. I start with a review of the original ideas. From an artificial intelligence (AI) point of view, it is not PSMs as such, which are essentially high-level design strategies for computation, that are interesting, but PSMs associated with tasks that have a relation to AI and cognition. They are also interesting with respect to cognitive architecture proposals such as Soar and ACT-R: PSMs are observed regularities in the use of knowledge that an exclusive focus on the architecture level might miss, the latter providing no vocabulary to talk about these regularities. PSMs in the original conception are closely connected to a specific view of knowledge: symbolic expressions represented in a repository and retrieved as needed. I join critics of this view, and maintain with them that most often knowledge is not retrieved from a base as much as constructed as needed. This criticism, however, raises the question of what is in memory that is not knowledge as traditionally conceived in AI, but can support the construction of knowledge in predicate-symbolic form. My recent proposal about cognition and multimodality offers a possible answer. In this view, much of memory consists of perceptual and kinesthetic images, which can be recalled during deliberation and from which internal perception can generate linguistic-symbolic knowledge. For example, from a mental image of a configuration of objects, numerous sentences can be constructed describing spatial' relations between the objects. My work on diagrammatic reasoning is an implemented example of how this might work. These internal perceptions on imagistic representations are a new kind of PSM.
机译:我就是在1970年代末和1980年代初提出问题解决方法(PSM)的人之一,他们对在构建基于知识的系统中有用的策略进行了知识级的描述。本文总结了我在过去二十年中思想的演变。我首先回顾一下原始思想。从人工智能(AI)的角度来看,有趣的不是本质上是用于计算的高级设计策略的PSM,而是与与AI和认知有关的任务相关的PSM。对于诸如Soar和ACT-R之类的认知体系结构建议,它们也很有趣:PSM被视为在使用知识上的规律性,而这种知识只专注于体系结构级别,可能会遗漏,后者并没有提供谈论这些规律性的词汇。原始概念中的PSM与特定的知识视图紧密相关:在存储库中表示并根据需要检索的符号表达式。我与对此观点的批评者一道加入批评家的行列,并坚持认为,大多数情况下,从基础中检索到的知识没有达到所需的构造。但是,这种批评提出了一个问题,即内存中的内容不是AI中传统上构想的知识,而是可以支持谓词符号形式的知识构建。我最近关于认知和多模态的建议提供了一个可能的答案。按照这种观点,很多记忆都是由知觉和动觉的图像组成的,它们可以在思考过程中被召回,并且内部感知可以从中产生语言符号知识。例如,从对象配置的心理图像中,可以构造出许多句子来描述对象之间的空间关系。我在图解推理方面的工作是一个可行的示例。这些对影像表示的内部理解是一种新型的PSM。

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