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首页> 外文期刊>International Journal of Electrical and Computer Engineering >Detecting malicious URLs using binary classification through adaboost algorithm
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Detecting malicious URLs using binary classification through adaboost algorithm

机译:通过Adaboost算法使用二进制分类来检测恶意URL

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Malicious Uniform Resource Locator (URL) is a frequent and severe menace to cybersecurity. Malicious URLs are used to extract unsolicited information and trick inexperienced end users as a sufferer of scams and create losses of billions of money each year. It is crucial to identify and appropriately respond to such URLs. Usually, this discovery is made by the practice and use of blacklists in the cyber world. However, blacklists cannot be exhaustive, and cannot recognize zero-day malicious URLs. So to increase the observation of malicious URL indicators, machine learning procedures should be incorporated. This study aims to discuss the exposure of malicious URLs as a binary classification problem using machine learning through an AdaBoost algorithm.
机译:恶意统一资源定位器(URL)是一个频繁和严重的网络安全威胁。恶意URL用于提取未经请求的信息和技巧缺乏经验的最终用户作为诈骗的患者,每年造成数十亿美元的损失。识别和适当响应此类URL至关重要。通常,这一发现是通过网络世界中的黑名单的实践和使用作出的。但是,黑名单不能穷举,无法识别零日恶意URL。因此,为了增加恶意URL指标的观察,应纳入机器学习程序。本研究旨在通过ADABOOST算法使用机器学习讨论恶意URL作为二进制分类问题的曝光。

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