Mass internet of things data security exchange model under heterogeneous environment

Wenbo Fu
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Abstract

At present, the data classification based on SOA data exchange method of internet of things (IoT) data is not perfect, the effectiveness of data filtering is low, and the security of data exchange is poor. In this paper, the mass data of IoT are classified by transfer-boost method. The auxiliary training data are used to help source training data and build a reliable classifier to make the classifier more accurate in the test data. Hedge grammar is used to process massive data of heterogeneous IoT. The buffer mechanism is introduced to deal with the unstable data flow in the IoT, so as to enhance the effectiveness of data filtering, and realise the secure data exchange through modules such as server request, identity authentication and receiving data. Experimental results showed that the proposed model can improve the classification accuracy and data filtering effect, and achieve a more secure data exchange effect.
异构环境下海量物联网数据安全交换模型
目前,基于SOA的物联网(IoT)数据交换方法的数据分类不完善,数据过滤的有效性低,数据交换的安全性差。本文采用transfer-boost方法对物联网的海量数据进行分类。利用辅助训练数据帮助源训练数据,构建可靠的分类器,使分类器在测试数据中更加准确。模糊语法用于处理异构物联网的海量数据。针对物联网中不稳定的数据流,引入缓冲机制,增强数据过滤的有效性,通过服务器请求、身份认证、接收数据等模块实现安全的数据交换。实验结果表明,该模型可以提高分类精度和数据过滤效果,实现更安全的数据交换效果。
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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