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Experiential Learning: Case Study-Based Portable Hands-on Regression Labware for Cyber Fraud Prediction

机译:体验式学习:基于案例研究的便携式动手回归实验室软件,用于网络欺诈预测

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Machine Learning (ML) analyzes, and processes data and discover patterns. In cybersecurity, it effectively analyzes big data from existing cybersecurity attacks and develop proactive strategies to detect current and future cybersecurity attacks. Both ML and cybersecurity are important subjects in computing curriculum, but using ML for cybersecurity is not commonly explored. This paper designs and presents a case study-based portable labware experience built on Google's CoLaboratory (CoLab) for a ML cybersecurity application to provide students with hands-on labs accessing from anywhere and anytime, reducing or eliminating tedious installations and configurations. This approach allows students to focus on learning essential concepts and gaining valuable experience through hands-on problem solving skills. Our preliminary results and student evaluations are reported for a case-based hands-on regression labware in cyber fraud prediction using credit card fraud as an example.
机译:机器学习(ML)分析,处理数据和发现模式。在网络安全中,它有效地分析了来自现有网络安全攻击的大数据,并制定了主动策略以检测当前和将来的网络安全攻击。机器学习和网络安全都是计算课程中的重要主题,但是通常不探讨将机器学习用于网络安全。本文设计并展示了基于案例研究的便携式实验室器具体验,该体验建立在Google实验室网络(CoLaboratory)(CoLab)上,用于ML网络安全应用程序,可为学生提供随时随地访问的动手实验室,从而减少或消除了繁琐的安装和配置。这种方法使学生能够专注于学习基本概念并通过动手解决问题的技能获得宝贵的经验。我们以信用卡欺诈为例,针对基于案例的动手回归实验室软件在网络欺诈预测中报告了我们的初步结果和学生评估。

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