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Digging in the Details: A Case Study in Network Data Mining

机译:挖掘细节:以网络数据挖掘为例

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摘要

Network Data Mining builds network linkages (network models) between myriads of individual data items and utilizes special algorithms that aid visualization of 'emergent' patterns and trends in the linkage. It complements conventional and statistically based data mining methods. Statistical approaches typically flag, alert or alarm instances or events that could represent anomalous behavior or irregularities because of a match with pre-defined patterns or rules. They serve as 'exception detection' methods where the rules or definitions of what might constitute an exception are able to be known and specified ahead of time. Many problems are suited to this approach. Many problems however, especially those of a more complex nature, are not well suited. The rules or definitions simply cannot be specified; there are no known suspicious transactions. This paper presents a human-centered network data mining methodology. A case study from the area of security illustrates the application of the methodology and corresponding data mining techniques. The paper argues that for many problems, a 'discovery' phase in the investigative process based on visualization and human cognition is a logical precedent to, and complement of, more automated 'exception detection' phases.
机译:网络数据挖掘在无数个单独的数据项之间建立网络链接(网络模型),并利用特殊的算法帮助可视化链接中的“紧急”模式和趋势。它补充了传统的和基于统计的数据挖掘方法。统计方法通常会标记,警报或警报实例或事件,因为它们与预定义的模式或规则相匹配,可能表示异常行为或不正常行为。它们充当“异常检测”方法,在此方法中,可以提前知道并指定可能构成异常的规则或定义。许多问题都适合这种方法。但是,许多问题,特别是性质较复杂的问题,并不十分适合。规则或定义根本无法指定;没有已知的可疑交易。本文提出了一种以人为中心的网络数据挖掘方法。来自安全领域的案例研究说明了该方法的应用和相应的数据挖掘技术。本文认为,对于许多问题,基于可视化和人类认知的调查过程中的“发现”阶段是更自动化的“异常检测”阶段的逻辑先例,并对其进行补充。

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