Machine Learning framework for Information Security Management in Big Data Applications

Othman Al Basheer, Murat Ozcek
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引用次数: 0

Abstract

Big data has become an integral part of modern businesses, but its management and protection present numerous challenges, such as securing sensitive information from unauthorized access, preventing data breaches, and ensuring data integrity. This work investigated applying a machine learning (ML) approach to tackling the challenges of information security and management in big data environments. We present an ML framework that leverages a supervised learning strategy to detect anomalies, classify big data, and predict potential security threats. We also investigate the implementation of this framework and its potential benefits, such as reducing false positives and improving detection rates. Our experimental analysis in public datasets demonstrates the effectiveness of our approach in improving information security and management in big data environments.
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大数据应用中信息安全管理的机器学习框架
大数据已成为现代企业不可或缺的一部分,但其管理和保护面临着许多挑战,例如保护敏感信息不受未经授权的访问,防止数据泄露,确保数据完整性。这项工作研究了应用机器学习(ML)方法来应对大数据环境中信息安全和管理的挑战。我们提出了一个机器学习框架,利用监督学习策略来检测异常,对大数据进行分类,并预测潜在的安全威胁。我们还研究了该框架的实施及其潜在的好处,如减少误报和提高检出率。我们对公共数据集的实验分析表明,我们的方法在提高大数据环境下的信息安全和管理方面是有效的。
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