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Machine-independent audit trail analysis - a tool for continuous audit assurance

机译:与机器无关的审计跟踪分析-连续审计保证的工具

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摘要

[Summary]: This paper reports the results of a research project which examines the feasibility of developing a machine-independent audit trail analyser (MIATA). MIATA is a knowledge based system which performs intelligent analysis of operating system audit trails. Such a system is proposed as a decision support tool for auditors when assessing the risk of unauthorised user activity in multi-usercomputer systems. It is also relevant to the provision of a continuous assurance service to clients by internal and external auditors. Monitoring user activity in system audit trails manually is impractical because of the vast quantity of events recorded in those audit trails. However, if done manually, an expert security auditor would be needed to look for 2 main types of events - user activity rejected by the system's security settings (failed actions) and user's behaving abnormally (e.g. unexpected changes in activity such as the purchasing clerk attempting to modify payroll data). A knowledge based system is suited to applications that require expertise to perform well-defined, yet complex, monitoring activities (e.g. controlling nuclear reactors and detecting intrusions in computer systems). To permit machine-independent intelligent audit trail analysis, an anomaly-detection approach is adopted. Time series forecasting methods are used to develop and maintain the user profile database (knowledge base) that allows identification of users with rejected behaviour as well asudabnormal behaviour. The knowledge based system maintains this knowledge base and permits reporting on the potential intruder threats (summarized in Table 1). The intelligence of the MIATA system is its ability to handle audit trails from any system, its knowledge base capturing rejected user activity and detecting anomalous activity, and its reporting capabilities focusing on known methods of intrusion. MIATA also updates user profiles and forecasts of behaviour on a daily basis. As such, it also 'learns' from changes in user behaviour. The feasibility of generating machine-independent audit trail records, and the applicability of the anomaly-detection approach and time series forecasting methods are demonstrated using three case studies. These results support the proposal that developing a machine-independent audit trail analyser is feasible. Such a system will be an invaluable aid to an auditor in detecting potential computer intrusions and monitoring user activity.ud
机译:[摘要]:本文报告了一个研究项目的结果,该项目研究了开发独立于机器的审计跟踪分析器(MIATA)的可行性。 MIATA是基于知识的系统,可对操作系统审核记录进行智能分析。在评估多用户计算机系统中未经授权的用户活动的风险时,建议将这种系统用作审核员的决策支持工具。这也与内部和外部审计师向客户提供持续保证服务有关。手动监视系统审计跟踪中的用户活动是不切实际的,因为这些审计跟踪中记录了大量事件。但是,如果手动完成,则将需要专家安全审核员来查找两种主要类型的事件-用户的活动被系统的安全设置拒绝(失败的操作)和用户的行为异常(例如,活动的意外更改,例如采购员尝试修改工资数据)。基于知识的系统适用于需要专业知识来执行定义明确而又复杂的监视活动(例如控制核反应堆和检测计算机系统中的入侵)的应用。为了允许独立于机器的智能审计跟踪分析,采用了异常检测方法。时间序列预测方法用于开发和维护用户配置文件数据库(知识库),该数据库可以识别行为被拒绝以及行为异常的用户。基于知识的系统维护此知识库,并允许报告潜在的入侵者威胁(表1汇总)。 MIATA系统的智能之处在于它能够处理来自任何系统的审计跟踪记录,其知识库可捕获拒绝的用户活动并检测异常活动,并且其报告功能集中于已知的入侵方法。 MIATA还每天更新用户资料和行为预测。这样,它也从用户行为的变化中“学习”。通过三个案例研究证明了生成独立于机器的审计跟踪记录的可行性以及异常检测方法和时间序列预测方法的适用性。这些结果支持以下建议:开发独立于机器的审计跟踪分析器是可行的。这样的系统将对审核员发现潜在的计算机入侵和监视用户活动提供宝贵的帮助。

著录项

  • 作者

    Best Peter J.;

  • 作者单位
  • 年度 2004
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
  • 中图分类

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