An approach to remove duplication records in healthcare dataset based on Mimic Deep Neural Network (MDNN) and Chaotic Whale Optimization (CWO)

M. Praveena, B. Bharathi
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引用次数: 2

Abstract

Duplication of data in an application will become an expensive factor. These replication of data need to be checked and if it is needed it has to be removed from the dataset as it occupies huge volume of data in the storage space. The cloud is the main source of data storage and all organizations are already started to move their dataset into the cloud since it is cost effective, storage space, data security and data Privacy. In the healthcare sector, storing the duplicated records leads to wrong prediction. Also uploading same files by many users, data storage demand will be occurred. To address those issues, this paper proposes an Optimal Removal of Deduplication (ORD) in heart disease data using hybrid trust based neural network algorithm. In ORD scheme, the Chaotic Whale Optimization (CWO) algorithm is used for trust computation of data using multiple decision metrics. The computed trust values and the nature of the data’s are sequentially applied to the training process by the Mimic Deep Neural Network (MDNN). It classify the data is a duplicate or not. Hence the duplicates files are identified and they were removed from the data storage. Finally, the simulation evaluates to examine the proposed MDNN based model and simulation results show the effectiveness of ORD scheme in terms of data duplication removal. From the simulation result it is found that the model’s accuracy, sensitivity and specificity was good.
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基于模拟深度神经网络(mnn)和混沌鲸优化(CWO)的医疗数据集中重复记录删除方法
应用程序中的重复数据将成为一个昂贵的因素。需要检查这些数据的复制,如果需要,则必须从数据集中删除,因为它占用了存储空间中的大量数据。云是数据存储的主要来源,所有组织都已经开始将他们的数据集迁移到云中,因为它具有成本效益,存储空间,数据安全和数据隐私。在医疗保健领域,存储重复的记录会导致错误的预测。同时很多用户上传相同的文件,会产生数据存储需求。为了解决这些问题,本文提出了一种基于混合信任的神经网络算法的心脏病数据中重复数据删除(ORD)的优化方法。在ORD方案中,采用混沌鲸优化(混沌鲸优化)算法对包含多个决策指标的数据进行信任计算。模拟深度神经网络(Mimic Deep Neural Network, mnn)将计算得到的信任值和数据的性质依次应用到训练过程中。它对数据是否重复进行分类。因此,可以识别重复文件,并从数据存储中删除它们。最后,通过仿真验证了所提出的基于MDNN的模型,仿真结果表明了ORD方案在消除重复数据方面的有效性。仿真结果表明,该模型具有较好的准确性、灵敏度和特异性。
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