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A Novel Enhanced Naieve Bayes Posterior Probability (ENBPP)Using Machine Learning: Cyber Threat Analysis

机译:使用机器学习的新型增强的幼稚贝叶斯后概率(eNB):网络威胁分析

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摘要

Machine learning techniques, that are based on semantic analysis of behavioural attack patterns, have not been successfully implemented in cyber threat intelligence. This is because of the error prone and time-consuming manual process of deep learning solutions, which is commonly used for searching correlated cyber-attack tactics, techniques and procedures in cyber-attacks prediction techniques. The aim of this paper is to improve the prediction accuracy and the processing time of cyber-attacks prediction mechanisms by proposing enhanced Naive Bayes posterior probability (ENBPP) algorithm. The proposed algorithm combines two functions; a modified version of Naive Bayes posterior probability function and a modified risk assessment function. Combining these two functions will enhance the threat prediction accuracy and decrease the processing time. Five different datasets were used to obtain the results. Five different datasets containing 328,814 threat samples were used to obtain the processing time and the prediction accuracy results for the proposed solution. Results show that the proposed solution gives better prediction accuracy and processing time when different examination types and different scenarios are taken into consideration. The proposed solution provides a significant prediction accuracy improvement in threat analysis from 92-96% and decreases the average processing time from 0.043 to 0.028 s compared with the other method. The proposed solution successfully enhances the overall prediction accuracy and improves the processing time by solving the TTPs dependency and the prediction sets threshold problems. Thus, the proposed algorithm reaches a more reliable threat prediction solution.
机译:基于行为攻击模式的语义分析的机器学习技术尚未在网络威胁情报中成功实施。这是因为易于易于和耗时的深度学习解决方案的手动过程,这通常用于在网络攻击预测技术中搜索相关的网络攻击策略,技术和程序。本文的目的是通过提出增强的朴素贝叶斯后概率(ENBPP)算法来提高网络攻击预测机制的预测准确性和处理时间。所提出的算法结合了两个功能;天真贝叶斯后概率函数的修改版和修改的风险评估功能。结合这两个功能将增强威胁预测精度并降低处理时间。使用五个不同的数据集来获得结果。使用包含328,814个威胁样本的五种不同的数据集来获得所提出的解决方案的处理时间和预测精度结果。结果表明,当考虑不同的检查类型和不同场景时,该解决方案提供了更好的预测准确性和处理时间。所提出的解决方案提供了从92-96%的威胁分析的显着预测准确性改善,与其他方法相比,将平均处理时间从0.043减少到0.028秒。所提出的解决方案通过求解TTPS依赖性和预测集阈值问题,成功增强了整体预测精度并改善了处理时间。因此,所提出的算法达到更可靠的威胁预测解决方案。

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