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首页> 外文期刊>Journal of computational and theoretical nanoscience >A Novel Approach for Privacy Preservation in Bigdata Using Data Perturbation in Nested Clustering in Apache Spark
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A Novel Approach for Privacy Preservation in Bigdata Using Data Perturbation in Nested Clustering in Apache Spark

机译:在Apache Spark中使用数据扰动的BigData中隐私保存的新方法

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摘要

Now a days with the emerging technologies the surplus amount of data and security features faces a major problem. In order to handle this problem there are many innovative research and applications are processing. It plays a vital role in todays technological world. This paper comeup with a technique to handle the above problem in an adequate way. Apache Spark is a memory cluster computing platform, it is 10 to 100 times faster than map reduce in batch processing, sparks have a graph X, a distributed graph system. It supports machine learning algorithm for future prediction.There is many privacy preservation techniques are there. This paper is going to propose a technique ‘Data Perturbation in Nested Clustering’ (DPNC) for numerical and non-numerical data to enhance the privacy. The perturbated data will store in Hadoop through Apache Spark for thirdparty access for research or survey purpose. In this method the data will be preserved and hasty processing of data.
机译:现在,具有新兴技术的日子,剩余数据和安全功能面临着主要问题。 为了处理这个问题,有许多创新的研究和应用正在处理。 它在今天的技术世界中起着至关重要的作用。 本文提出了一种以足够的方式处理上述问题的技术。 Apache Spark是一个存储器群集计算平台,它比映射快10到100倍,减少批处理,火花有一个图形x,一个分布式图形系统。 它支持未来预测的机器学习算法。有很多隐私保存技术就在那里。 本文将提出嵌套聚类(DPNC)中的技术扰动,用于数值和非数值数据,以增强隐私。 扰动数据将通过Apache Spark储存在HadoOp中,以获得研究或调查目的的第三部分访问。 在此方法中,数据将被保留和仓促处理数据。

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