Privacy Preserving with Modified Grey Wolf Optimization Over Big Data Using Optimal K Anonymization Approach

S. Sai Kumar, Anumala Reethika Reddy, B. S. Krishna, Dr.J.Nageswara Rao, A. Kiran
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引用次数: 106

Abstract

An optimal approach to anonymization using small data is proposed in this study. Map Reduce is a big data processing framework used across distributed applications. Prior to the development of a map reduce framework, data are distributed and clustered using a hybrid clustering algorithm. The algorithm used for grouping together similar techniques utilises the k-means clustering algorithm, along with the MFCM clustering algorithm. Clustered data is then fed into the map reduce frame work after it has been clustered. In order to guarantee privacy, the optimal k anonymization method is recommended. When using generalisation and randomization, there are two techniques that can be employed: K-anonymity, which is unique to each, depends on the type of the quasi identifier attribute. Our method replaces the standard k anonymization process by employing an optimization algorithm that dynamically determines the optimal k value. This algorithm uses the Modified Grey Wolf Optimization (MGWO) algorithm for optimization. The memory, execution time, accuracy, and error value are used to assess the recommended method’s practise. This experiment has shown that the suggested method will always finish ahead of the existing method by using the least amount of time while ensuring the greatest level of security. The current technique gets the lowest accuracy and the privacy proposed achieves the maximum accuracy while compared to the current technique. The solution is implemented in Java with Hadoop Map-Reduce, and it is tested and deployed in the cloud on Google Cloud Platform.
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基于最优K匿名化方法的大数据隐私保护改进灰狼优化
本研究提出了一种利用小数据进行匿名化的最佳方法。Map Reduce是一个跨分布式应用的大数据处理框架。在map reduce框架开发之前,使用混合聚类算法对数据进行分布和聚类。用于将类似技术分组的算法使用k-means聚类算法以及MFCM聚类算法。聚类后的数据将被输入到map reduce框架中。为了保证隐私,建议采用最优k匿名化方法。当使用泛化和随机化时,有两种技术可以使用:k -匿名,这是每个唯一的,取决于准标识符属性的类型。我们的方法通过采用动态确定最优k值的优化算法取代标准k匿名化过程。该算法采用改进的灰狼优化算法(MGWO)进行优化。使用内存、执行时间、准确性和误差值来评估推荐方法的实践情况。这个实验表明,建议的方法总是以最少的时间提前完成,同时确保最大程度的安全性。与现有技术相比,现有技术的准确率最低,而所提出的隐私算法的准确率最高。该解决方案在Java中使用Hadoop Map-Reduce实现,并在谷歌云平台上进行了测试和部署。
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