EXEHDA-RR:机器学习和MCDA与语义网在物联网资源分类中的应用

Renato Dilli, Huberto Kaiser Filho, A. Pernas, A. Yamin
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引用次数: 3

摘要

目前,大量资源被连接到Internet上,许多资源同时请求和提供服务。如何在广泛的选择范围内充分选择最能满足用户需求的资源,一直是一项相关和当前的研究挑战。基于非功能参数的QoS在根据资源提供的服务对资源进行排序中起着重要的作用。本文旨在将机器学习聚合到EXEHDA中间件资源的预分类中,以降低MCDA算法产生的计算成本。我们提出了该软件架构(EXEHDA-RR),并将机器学习集成到分类过程中,所获得的结果是有希望的,并表明了研究的继续。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EXEHDA-RR: Machine Learning and MCDA with Semantic Web in IoT Resources Classification
Currently, a lot of resources are connected to the Internet, many simultaneously requesting and providing services. The adequate selection of resources that best meet the demands of users with a broad range of options has been a relevant and current research challenge. Based on the non-functional parameters of QoS play a significant role in the ranking of these resources according to the services they offer. This paper aims to aggregate machine learning in the pre-classification of EXEHDA middleware resources, to reduce the computational cost generated by MCDA algorithms. We presented the proposed software architecture (EXEHDA-RR), and the obtained results with the integration of machine learning in the classification process are promissing, and indicate to the research continuation.
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