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首页> 外文期刊>International journal of cognitive informatics and natural intelligence >Semantic Manipulations and Formal Ontology for Machine Learning Based on Concept Algebra
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Semantic Manipulations and Formal Ontology for Machine Learning Based on Concept Algebra

机译:基于概念代数的机器学习的语义操纵和形式本体

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摘要

Towards the formalization ofontological methodologies for dynamic machine learning and semantic analyses, a new form of denotational mathematics known as concept algebra is introduced. Concept Algebra (CA) is a denotational mathematical structure for formal knowledge representation and manipulation in machine learning and cognitive computing. CA provides a rigorous knowledge modeling and processing tool, which extends the informal, static, and application-specific ontological technologies to a formal, dynamic, and gen eral mathematical means. An operational semantics for the calculus of CA is formally elaborated using a set of computational processes in real-time process algebra (RTPA). A case study is presented on how machines, cognitive robots, and software agents may mimic the key ability of human beings to autonomously manipulate knowledge in generic learning using CA. This work demonstrates the expressive power and a wide range of applications of CA for both humans and machines in cognitive computing, semantic computing, machine learning, and computational intelligence.
机译:面向用于动态机器学习和语义分析的本体论方法学的形式化,引入了一种称为概念代数的新型指称数学形式。概念代数(CA)是用于机器学习和认知计算中形式知识表示和操纵的代名词数学结构。 CA提供了严格的知识建模和处理工具,它将非正式,静态和特定于应用程序的本体技术扩展到形式,动态和通用数学手段。使用实时过程代数(RTPA)中的一组计算过程来正式阐述CA微积分的操作语义。案例研究介绍了机器,认知机器人和软件代理如何模仿人类使用CA自主学习通用学习中知识的关键能力。这项工作展示了CA在认知计算,语义计算,机器学习和计算智能中对人类和机器的表达能力和广泛的应用。

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