基于云与雾混合计算的大健康数据资源整合方法

Xiaodong Zhang, Xiaojun Xia, Miao Leng
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引用次数: 1

摘要

针对当前健康数据集成相关研究中检索响应延迟大、准确性差的问题,提出了一种基于混合云和雾计算的健康数据资源集成方法。在健康数据资源服务平台通用模型的基础上,构建了大健康数据资源集成框架。采用样本约简和降维方法对健康大数据进行约简。采用基于分词和权值的域匹配方法对数据资源进行清理,并计算域匹配度。当匹配度大于阈值时,待匹配的字段为相似的重复记录,删除冗余数据。通过混合云和雾计算计算资源数据的权重,并根据权重值对大健康数据进行排序,从而实现健康数据的分类和整合。实验结果表明,该方法具有良好的性能、低数据冗余、低检索响应延迟和高分类集成精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Health Data Resource Integration Method Based on Hybrid Cloud and Fog Computing
Aiming at the problems of high latency and poor accuracy of retrieval response in current health data integration related research, this paper presents a health data resource integration method based on Hybrid Cloud and Fog Computing. Based on the general model of health data resource service platform, the framework of large health data resource integration is constructed. Sample reduction and dimension reduction are used to reduce big health data. The field matching method based on participle and weight is used to clean data resources and calculate the field matching degree. When the matching degree is larger than a threshold value, the fields to be matched are similar duplicate records, and the redundant data is removed. The weight of resource data is calculated by Hybrid Cloud and Fog Computing, and the big health data is arranged according to the weight value, so as to realize the classification and integration of health data.The experimental results show that the proposed method has good performance, low data redundancy, low retrieval response delay and high classification integration accuracy.
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