A Novel Architecture for Detecting Phishing Webpages using Cost-based Feature Selection

A. Zangooei, V. Derhami, F. Jamshidi
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引用次数: 0

Abstract

Phishing is one of the luring techniques used to exploit personal information. A phishing webpage detection system (PWDS) extracts features to determine whether it is a phishing webpage or not. Selecting appropriate features improves the performance of PWDS. Performance criteria are detection accuracy and system response time. The major time consumed by PWDS arises from feature extraction that is considered as feature cost in this paper. Here, two novel features are proposed. They use semantic similarity measure to determine the relationship between the content and the URL of a page. Since suggested features don't apply third-party services such as search engines result, the features extraction time decreases dramatically. Login form pre-filer is utilized to reduce unnecessary calculations and false positive rate. In this paper, a cost-based feature selection is presented as the most effective feature. The selected features are employed in the suggested PWDS. Extreme learning machine algorithm is used to classify webpages. The experimental results demonstrate that suggested PWDS achieves high accuracy of 97.6% and short average detection time of 120.07 milliseconds.
一种利用基于成本的特征选择检测网络钓鱼网页的新架构
网络钓鱼是用来利用个人信息的引诱手段之一。钓鱼网页检测系统(PWDS)提取特征以确定它是否是钓鱼网页。选择适当的功能可以提高PWDS的性能。性能标准是检测精度和系统响应时间。PWDS所花费的主要时间来自于本文中被认为是特征成本的特征提取。在这里,提出了两个新颖的特点。他们使用语义相似性度量来确定内容和页面URL之间的关系。由于建议的功能不适用于搜索引擎结果等第三方服务,因此特征提取时间显著缩短。登录表单预申报器用于减少不必要的计算和误报率。在本文中,基于成本的特征选择被认为是最有效的特征。所选的功能被用于建议的PWDS中。使用极限学习机算法对网页进行分类。实验结果表明,所提出的PWDS实现了97.6%的高精度和120.07毫秒的短平均检测时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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