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Confidentiality Based File Attributes and Data Classification Using TsF-KNN

机译:使用TsF-KNN的基于机密性的文件属性和数据分类

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Machine Leaning (ML) plays an important role in the electronic data management. It is always costly and difficult to manage the data manually without adopting ML or with ML using metadata. Many ML algorithms have been proposed to solve different data management issues, but the prediction of the confidential data and non- confidential data in a data file is still a challenging research gap. A file cannot be categorized into a single category/class because the data in one simply file may fall into different categories/classes. The main objective of this study is to predict the confidential and non-confidential data of a file using K-NN algorithm. We also proposed a method called Training dataset Filtration Key Nearest Neighbour (TsF-KNN) classifier which classifies the data of file based on the confidentiality level of the schema of a file (file attributes). The proposed algorithm, TsF-KNN, is efficient in the context of time and has a higher accuracy as compared to the traditional K-NN algorithms.
机译:机器学习(ML)在电子数据管理中起着重要作用。如果不采用ML或使用元数据的ML,手动管理数据总是很昂贵且很困难。已经提出了许多机器学习算法来解决不同的数据管理问题,但是数据文件中机密数据和非机密数据的预测仍然是一个充满挑战的研究空白。不能将文件归为一个类别/类,因为一个简单文件中的数据可能属于不同的类别/类。这项研究的主要目的是使用K-NN算法预测文件的机密和非机密数据。我们还提出了一种称为“训练数据集过滤关键最近邻”(TsF-KNN)分类器的方法,该方法根据文件架构(文件属性)的机密性级别对文件数据进行分类。所提出的算法TsF-KNN在时间范围内是有效的,并且与传统的K-NN算法相比具有更高的准确性。

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