A Model for Detection of Malwares on Edge Devices

Nwagwu, C .B., Taylor O. E., Nwiabu N.D
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Abstract

Abstract- Malware detection is a significant challenge in today's digital landscape. As new forms of malware are continuously being developed, traditional detection techniques often fall short due to their inability to detect these new strains. This paperintroduces meaningful features that effectively capture various types of malware, including viruses, worms, Trojans and Ransomware on Edge devices. The paper used a model that implemented Random forest classifier for feature selection and a support vector machine (SVM) model for Malware detection. Object-Oriented Analysis and Design (OOAD) methodology was used to as the design methodology, which involved identifying and modeling the different components of the system and their interactions. The system was developed using Python programming language, with an emphasis on model deployment via Python Flask for web-based testing and execution. The experimental results demonstrate the effectiveness of the proposed systems when compared with other existing system. The result gotten from proposed system is better than that of the existing system by achieving a detection accuracy of 99.98% which is better than existing techniques. This dissertation presents a promising direction for improving malware detection using support vector machine (SVM) model and highlights the potential for collaborative learning approaches to overcome the challenges of traditional centralized approaches. This result simulates edge device that performs malware detection. It measures the latency for each detection and prints whether the latency is high or low. After the simulation, it plots a graph to visualize the latency over multiple requests. Which shows that the proposed model had low latency between 0.25secs to 0.15 secs on multiple requests.
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边缘设备恶意软件检测模型
摘要- 在当今的数字环境中,恶意软件检测是一项重大挑战。随着新型恶意软件的不断开发,传统的检测技术往往因无法检测到这些新的恶意软件而无法发挥作用。本文介绍了有效捕捉 Edge 设备上各类恶意软件(包括病毒、蠕虫、木马和勒索软件)的有意义的特征。该论文使用的模型采用随机森林分类器进行特征选择,并使用支持向量机(SVM)模型进行恶意软件检测。设计方法采用了面向对象的分析和设计(OOAD)方法,包括识别和模拟系统的不同组件及其交互。该系统使用 Python 编程语言开发,重点是通过 Python Flask 进行模型部署,以便进行基于网络的测试和执行。实验结果表明,与其他现有系统相比,提议的系统非常有效。建议系统的检测准确率达到 99.98%,优于现有系统。本论文提出了利用支持向量机(SVM)模型改进恶意软件检测的一个有前途的方向,并强调了协作学习方法在克服传统集中式方法的挑战方面的潜力。该成果模拟了执行恶意软件检测的边缘设备。它测量每次检测的延迟,并打印延迟是高还是低。模拟结束后,它绘制了一张图,直观显示多个请求的延迟情况。结果表明,建议的模型在多个请求中的延迟时间较低,在 0.25 秒到 0.15 秒之间。
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