基于认知安全架构的机器学习技术检测网络钓鱼攻击

Ivan Ortiz Garcés, María Cazares, R. Andrade
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引用次数: 16

摘要

在拉丁美洲,网络钓鱼攻击的数量有所增加,超过了网络安全分析师的操作技能。认知安全应用建议使用大数据、机器学习和数据分析来提高攻击检测的响应时间。本文介绍了与网络钓鱼攻击相关的异常行为分析的研究,以及机器学习技术如何成为面对问题的一种选择。该分析使用受污染的数据集和python工具开发机器学习,通过分析url来检测网络钓鱼攻击,以确定url的特定特征是好是坏,目的是提供实时信息,以便采取主动决策,最大限度地减少攻击的影响。
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Detection of Phishing Attacks with Machine Learning Techniques in Cognitive Security Architecture
The number of phishing attacks has increased in Latin America, exceeding the operational skills of cybersecurity analysts. The cognitive security application proposes the use of bigdata, machine learning, and data analytics to improve response times in attack detection. This paper presents an investigation about the analysis of anomalous behavior related with phishing web attacks and how machine learning techniques can be an option to face the problem. This analysis is made with the use of an contaminated data sets, and python tools for developing machine learning for detect phishing attacks through of the analysis of URLs to determinate if are good or bad URLs in base of specific characteristics of the URLs, with the goal of provide realtime information for take proactive decisions that minimize the impact of an attack.
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