Towards evolutionary knowledge representation under the big data circumstance

Xuhui Li, Liuyan Liu, Xiaoguang Wang, Yiwen Li, Qingfeng Wu, T. Qian
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引用次数: 4

Abstract

Purpose The purpose of this paper is to propose a graph-based representation approach for evolutionary knowledge under the big data circumstance, aiming to gradually build conceptual models from data. Design/methodology/approach A semantic data model named meaning graph (MGraph) is introduced to represent knowledge concepts to organize the knowledge instances in a graph-based knowledge base. MGraph uses directed acyclic graph–like types as concept schemas to specify the structural features of knowledge with intention variety. It also proposes several specialization mechanisms to enable knowledge evolution. Based on MGraph, a paradigm is introduced to model the evolutionary concept schemas, and a scenario on video semantics modeling is introduced in detail. Findings MGraph is fit for the evolution features of representing knowledge from big data and lays the foundation for building a knowledge base under the big data circumstance. Originality/value The representation approach based on MGraph can effectively and coherently address the major issues of evolutionary knowledge from big data. The new approach is promising in building a big knowledge base.
迈向大数据环境下知识表达的进化
本文的目的是提出一种基于图的大数据环境下进化知识的表示方法,旨在从数据中逐步构建概念模型。设计/方法引入语义数据模型MGraph (meaning graph)来表示知识概念,组织基于图的知识库中的知识实例。MGraph使用有向无环类图类型作为概念模式来指定具有意图变化的知识的结构特征。本文还提出了实现知识演化的专业化机制。提出了基于MGraph的演化概念模式建模范式,并详细介绍了视频语义建模场景。FindingsMGraph适合大数据知识表示的演化特征,为大数据环境下知识库的构建奠定了基础。原创性/价值基于MGraph的表示方法可以有效且连贯地解决大数据中进化知识的主要问题。这种新方法有望建立一个庞大的知识库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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