Suspicious URL Filtering Based on Logistic Regression with Multi-view Analysis

Ke-Wei Su, Kuo-Ping Wu, Hahn-Ming Lee, Te-En Wei
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引用次数: 19

Abstract

The current malicious URLs detecting techniques based on whole URL information are hard to detect the obfuscated malicious URLs. The most precise way to identify a malicious URL is verifying the corresponding web page contents. However, it costs very much in time, traffic and computing resource. Therefore, a filtering process that detecting more suspicious URLs which should be further verified is required in practice. In this work, we propose a suspicious URL filtering approach based on multi-view analysis in order to reduce the impact from URL obfuscation techniques. URLs are composed of several portions, each portion has a specific use. The proposed method intends to learn the characteristics from multiple portions (multi-view) of URLs for giving the suspicion level of each portion. Adjusting the suspicion threshold of each portion, the proposed system would select the most suspicious URLs. This work uses the real dataset from T. Co. to evaluate the proposed system. The requests from T. Co. are (1) detection rate should be less than 25%, (2) missing rate should be lower than 25%, and (3) the process with one hour data should be end in an hour. The experiment results show that our approach is effective, is capable to reserve more malicious URLs in the selected suspicious ones and satisfy the requests given by practical environment, such as T. Co. daily works.
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基于多视图逻辑回归的可疑URL过滤
目前基于全URL信息的恶意URL检测技术难以检测到被混淆的恶意URL。识别恶意URL的最准确方法是验证相应的网页内容。然而,它在时间、流量和计算资源上花费非常大。因此,在实际应用中需要一个过滤过程来检测出更多的可疑url,这些可疑url需要进一步的验证。在这项工作中,我们提出了一种基于多视图分析的可疑URL过滤方法,以减少URL混淆技术的影响。url由几个部分组成,每个部分都有特定的用途。该方法旨在从url的多个部分(多视图)中学习特征,从而给出每个部分的怀疑程度。通过调整每个部分的怀疑阈值,系统将选择最可疑的url。本工作使用T. Co.的真实数据集来评估所提出的系统。T. Co.的要求是(1)检出率应小于25%,(2)漏检率应低于25%,(3)1小时数据的流程应在1小时内结束。实验结果表明,该方法是有效的,能够在选取的可疑url中保留更多的恶意url,满足t公司日常工作等实际环境的要求。
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