AIOIML: Automatic Integration of Ontologies for IoT Domain Using Hybridized Machine Learning Techniques

Rishi Rakesh Shrivastava, G. Deepak
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Abstract

There is a need for Ontology modelling and automatic generation of Ontologies in order to assimilate knowledge World Wide Web knowledge as a strategic model. Ontologies are the best knowledge descriptor model as they have some amount of human cognition associated with them because either humans are major contributors when they are generated manually or are indirect contributors when they are semi automatically generated. Internet of Things is a domain which has strategically evolved in the last few years, and there is a need for integrating several facets of Internet of Things Ontology. In this paper a strategic scheme for Internet of Things Ontology integration for Internet of Things domain with different perspective are proposed wherein the dataset are subjected to tag generation which is further classified using the AdaBoost classifier which are aligned with the random core classes of the existing variational Ontologies in the Internet of Things domain using Shannon’s entropy and the pointwise mutual information measure with differential step deviation measure. Which yields average precision and recall of 96.83 and 97.95 respectively.
基于混合机器学习技术的物联网领域本体自动集成
为了将万维网知识作为一种战略模型来吸收,需要本体建模和本体的自动生成。本体是最好的知识描述符模型,因为它们与一定数量的人类认知相关联,因为当它们手动生成时,人类是主要贡献者,而当它们半自动生成时,人类是间接贡献者。物联网是近年来战略性发展的一个领域,物联网本体的多个方面需要进行整合。本文提出了一种面向不同视角的物联网领域的物联网本体集成策略方案,该方案首先对数据集进行标签生成,然后使用AdaBoost分类器对数据集进行分类,该分类器与物联网领域现有变分本体的随机核心类对齐,利用香农熵和点向互信息度量与差阶偏差度量对数据集进行分类。平均查准率为96.83,查全率为97.95。
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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