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Data security rules/regulations based classification of file data using TsF-kNN algorithm

机译:使用TsF-kNN算法基于数据安全规则/法规的文件数据分类

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摘要

Personal and organizational data are getting larger in volume with respect to time. Due to the importance of data for organisations, effective and efficient management and categorization of data need a special focus. Understanding and applying data security policies to the appropriate data types therefore is one of the core concerns in large organisations such as cloud service providers. With data classification, the identification of security requirements for the data can be accomplished without manual intervention where the encryption process is applied only to the confidential data thus saving encryption time, decryption time, storage and processing power. The proposed data classification approach is to reduce the network traffic, the additional data movement, the overload, and the storage place for confidential data can be decided where security requirements of the confidential data are fulfilled. In this paper, an intelligent data classification approach is presented for predicting the confidentiality/sensitivity level of the data in a file based on the corporate objective and government policies/rules. An enhanced version of the k-NN algorithm is also proposed to reduce the computational complexity of the traditional k-NN algorithm at data classification phase. The proposed algorithm is called Training dataset Filtration-kNN (TsF-kNN). The experimental results show that data in a file can be classified into confidential and non-confidential classes and TsF-kNN algorithm has better performance against the traditional k-NN and Na < ve Bayes algorithm.
机译:关于时间,个人和组织数据量越来越大。由于数据对组织的重要性,因此,有效和高效的数据管理和分类需要特别关注。因此,了解数据安全策略并将其应用于适当的数据类型是大型组织(如云服务提供商)的核心问题之一。通过数据分类,无需人工干预即可完成对数据安全性要求的识别,其中仅将加密过程应用于机密数据,从而节省了加密时间,解密时间,存储和处理能力。所提出的数据分类方法是减少网络流量,额外的数据移动,过载和机密数据的存储位置,这些可以在满足机密数据安全性要求的地方确定。在本文中,提出了一种智能数据分类方法,用于根据公司目标和政府政策/规则预测文件中数据的机密性/敏感性级别。还提出了k-NN算法的增强版本,以降低传统k-NN算法在数据分类阶段的计算复杂性。提出的算法称为训练数据集过滤-kNN(TsF-kNN)。实验结果表明,文件中的数据可以分为机密和非机密两类,而TsF-kNN算法相对于传统的k-NN和朴素贝叶斯算法具有更好的性能。

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