Action is the primary key: a categorical framework for episode description and logical reasoning

Yoshiki Fukada
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Abstract

This research presents a computational framework for describing and recognizing episodes and for logical reasoning. This framework, named cognitive-logs, consists of a set of relational and graph databases. Cognitive-logs record knowledge, particularly in episodes that consist of "actions" represented by verbs in natural languages and "participants" who perform the actions. These objects are connected by arrows (morphisms) that link each action to its participant and link cause to effect. Operations based on category theory enable comparisons between episodes and deductive inferences, including abstractions of stories. One of the goals of this study is to develop a database-driven artificial intelligence. This artificial intelligence thinks like a human but possesses the accuracy and rigour of a machine. The vast capacities of databases (up to petabyte scales in current technologies) enable the artificial intelligence to store a greater volume of knowledge than neural-network based artificial intelligences. Cognitive-logs serve as a model of human cognition and designed with references to cognitive linguistics. Cognitive-logs also have the potential to model various human mind activities.
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行动是首要关键:情节描述和逻辑推理的分类框架
这项研究提出了一个用于描述和识别情节以及逻辑推理的计算框架。认知日志记录知识,尤其是由自然语言中动词代表的 "行动 "和执行行动的 "参与者 "组成的事件。这些对象通过箭头(变形)连接起来,箭头将每个动作与其参与者联系起来,并将因果联系起来。基于范畴理论的运算可以进行情节之间的比较和演绎推理,包括故事的抽象。本研究的目标之一是开发一种数据库驱动的人工智能。这种人工智能的思维方式与人类相似,但具有机器的准确性和严谨性。与基于神经网络的人工智能相比,数据库的巨大容量(在目前的技术中可达到 PB 级)使人工智能能够存储更多的知识。认知日志是人类认知的模型,其设计参考了认知语言学。认知日志还有可能模拟人类的各种思维活动。
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