Human factors in webserver log file analysis: a controlled experiment on investigating malicious activity

L. Layman, Sylvain David Diffo, N. Zazworka
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引用次数: 5

Abstract

While automated methods are the first line of defense for detecting attacks on webservers, a human agent is required to understand the attacker's intent and the attack process. The goal of this research is to understand the value of various log fields and the cognitive processes by which log information is grouped, searched, and correlated. Such knowledge will enable the development of human-focused log file investigation technologies. We performed controlled experiments with 65 subjects (IT professionals and novices) who investigated excerpts from six webserver log files. Quantitative and qualitative data were gathered to: 1) analyze subject accuracy in identifying malicious activity; 2) identify the most useful pieces of log file information; and 3) understand the techniques and strategies used by subjects to process the information. Statistically significant effects were observed in the accuracy of identifying attacks and time taken depending on the type of attack. Systematic differences were also observed in the log fields used by high-performing and low-performing groups. The findings include: 1) new insights into how specific log data fields are used to effectively assess potentially malicious activity; 2) obfuscating factors in log data from a human cognitive perspective; and 3) practical implications for tools to support log file investigations.
web服务器日志文件分析中的人为因素:调查恶意活动的对照实验
虽然自动化方法是检测web服务器攻击的第一道防线,但需要人工代理来了解攻击者的意图和攻击过程。本研究的目的是了解各种日志字段的价值,以及日志信息被分组、搜索和关联的认知过程。这些知识将有助于开发以人为中心的日志文件调查技术。我们对65名被试(IT专业人员和新手)进行了对照实验,他们调查了6个web服务器日志文件的摘录。收集定量和定性数据:1)分析主体识别恶意活动的准确性;2)识别最有用的日志文件信息;3)理解被试处理信息的技巧和策略。根据攻击类型,在识别攻击的准确性和所花费的时间方面观察到统计上显著的影响。在高绩效组和低绩效组使用的原木领域也观察到系统性差异。研究结果包括:1)关于如何使用特定日志数据字段来有效评估潜在恶意活动的新见解;2)从人类认知角度分析测井数据中的混淆因素;3)支持日志文件调查的工具的实际含义。
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