Intrusion Detection in Cyber Space Using Machine Learning Based Algorithm

Q4 Environmental Science Iranian Journal of Botany Pub Date : 2022-06-16 DOI:10.33897/fujeas.v3i1.687
S. Rehman
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Abstract

  Now a day, the fast growth of Internet access and the adoption of smart digital technology has resulted in new cybercrime strategies targeting regular people and businesses. The Web and social activities take precedence in most aspects of their lives, but also poses significant social risks. Static and dynamic analysis are inefficient in detecting unknown malware in standard threat detection approaches. Virus makers create new malware by modifying current malware using polymorphic and evasion tactics in order to fool. Furthermore, by utilizing selection of features techniques to identify more important features and minimizing amount of the data, these Machine Learning models' accuracy can be increased, resulting in fewer calculations. In the previous study traditional machine learning approaches were used to detect Malware. We employed Cuckoo sandbox, a malware detection and analysis system for detection and categorization, in this study we provide a Machine Learning based Intrusion analysis system to calculate exact and on spot Intrusion classification. We integrated feature extraction and component selection from the file, as well as selecting the much higher quality, resulting in exceptional accuracy and cheaper computing costs. For reliable identification and fine-grained categorization, we use a variety of machine learning algorithms. Our experimental results show that we achieved good, classified accuracy when compared to state-of-the-art approaches. We employed machine learning techniques such as K-Nearest Neighbor, Random Forest, Support Vector Machine, and Decision Tree. Using the Random Forest classifier on 108 features, we attained the greatest accuracy of 99.37 percent. We also discovered that Random Forest outscored all other classic machine learning techniques during the procedure. These findings can aid in the exact and accurate identification of Malware families.  
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基于机器学习算法的网络空间入侵检测
如今,互联网接入的快速增长和智能数字技术的采用导致了针对普通人和企业的新的网络犯罪策略。网络和社交活动在他们生活的大多数方面占据了优先地位,但也带来了重大的社会风险。在标准的威胁检测方法中,静态和动态分析在检测未知恶意软件时效率低下。病毒制造者通过使用多态和逃避策略修改现有的恶意软件来创建新的恶意软件,以便欺骗。此外,通过利用特征选择技术来识别更重要的特征并最小化数据量,这些机器学习模型的准确性可以提高,从而减少计算量。在之前的研究中,传统的机器学习方法被用来检测恶意软件。本研究采用Cuckoo sandbox恶意软件检测分析系统进行检测和分类,提供了一种基于机器学习的入侵分析系统来计算准确的、现场的入侵分类。我们从文件中集成了特征提取和组件选择,以及选择更高质量的组件,从而获得了卓越的准确性和更低的计算成本。为了可靠的识别和细粒度分类,我们使用了各种机器学习算法。我们的实验结果表明,与最先进的方法相比,我们取得了良好的分类精度。我们使用了机器学习技术,如k近邻、随机森林、支持向量机和决策树。在108个特征上使用随机森林分类器,我们达到了99.37%的最高准确率。我们还发现,在这个过程中,随机森林的得分超过了所有其他经典的机器学习技术。这些发现有助于准确和准确地识别恶意软件家族。
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来源期刊
Iranian Journal of Botany
Iranian Journal of Botany Environmental Science-Ecology
CiteScore
0.80
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0
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