基于关系映射和网络科学的知识仿真

S. Halladay, Charles A. Milligan
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引用次数: 1

摘要

知识表示从亚里士多德的逻辑和本体论开始,重点是通过关于关系的结构化元数据来管理信息。工具的发展采用子集近似、分类和计算分析,使人类的理解和数学操作。系统保真度要求关系丰富度与信息大小和复杂性成正比。本文介绍了知识模拟(Ks)和知识推理(Ki)。Ks基于网络科学原理,而不是结构化元数据。Ki建议通过放松对人类理解的要求,但增加人类在指导计算分析方面的互动能力来实现知识潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Simulation via Relationship Mapping and Network Science
Knowledge representation began with logic and ontology from Aristotle and focuses on managing information via structured metadata about relationships. Tools evolved employing subset approximation, categorization, and computational analysis that enable human understanding and mathematical manipulation. System fidelity requires that relationship richness be kept proportional to information size and complexity. This paper introduces knowledge simulation (Ks) resulting in knowledge inference (Ki). Ks is based on network science principles rather than structured metadata. Ki suggests knowledge potential by relaxing requirements for human understanding but increasing capability for human interaction in directing computational analysis.
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