机器学习算法与基于数据科学的机器学习算法恶意软件检测的比较研究

Q4 Mathematics
Sunita Choudhary, Anand Sharma
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引用次数: 1

摘要

随着网络的快速发展和进步,恶意软件是当今主要的高级危险之一。因此,恶意软件发现是PC框架安全的重要组成部分。如今,攻击者总体上计划聚合恶意软件,这是一种典型的恶意软件,它不断地改变其明确无误的组件,以欺骗识别策略,利用普通的基于签名的技术。因此,基于机器学习的识别需求出现了。在这项工作中,我们将获得可能通过静态或动态检查完成的行为标准,稍后我们可以应用独特的ML策略来识别它是否是恶意软件。将讨论基于行为的检测技术,利用机器学习计算来接近基于社交的恶意软件识别,此外,分组模型。本文主要研究两者之间的关系。第一种是机器学习算法直接应用于数据集。第二是同样的机器学习算法与数据科学预处理步骤的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison study of Machine Learning Algorithm and Data Science based Machine Learning Algorithm Malware Detection
With quick development and advancement of the web, malware is one of major advanced perils these days. Hence, malware discovery is a significant component in the security of PC frameworks. These days, assailants by and large plan polymeric malware, it is typically a kind of malware that ceaselessly changes its unmistakable component to trick recognition strategies that utilizes run of the mill signature-based techniques. For that reason, the requirement for Machine Learning based identification emerges. In this work, we will acquire standard of conduct that might be accomplished through static or dynamic examination, a while later we can apply unique ML strategies to recognize regardless of whether it's malware. Conduct based Detection techniques will be talked about to take advantage from ML calculations in order to approach social-based malware acknowledgment, furthermore, grouping model. In this paper, study related between two major components. First one is machine learning algorithm apply on data set directly. Second is same Machine learning algorithm apply with Data science pre-processing steps.
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来源期刊
Philippine Statistician
Philippine Statistician Mathematics-Statistics and Probability
CiteScore
0.50
自引率
0.00%
发文量
92
期刊介绍: The Journal aims to provide a media for the dissemination of research by statisticians and researchers using statistical method in resolving their research problems. While a broad spectrum of topics will be entertained, those with original contribution to the statistical science or those that illustrates novel applications of statistics in solving real-life problems will be prioritized. The scope includes, but is not limited to the following topics:  Official Statistics  Computational Statistics  Simulation Studies  Mathematical Statistics  Survey Sampling  Statistics Education  Time Series Analysis  Biostatistics  Nonparametric Methods  Experimental Designs and Analysis  Econometric Theory and Applications  Other Applications
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