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APPLYING TOPIC MODELING TO FORENSIC DATA

机译:将主题建模应用于法证数据

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Most actionable evidence is identified during the analysis phase of digital forensic investigations. Currently, the analysis phase uses expression-based searches, which assume a good understanding of the evidence; but latent evidence cannot be found using such methods. Knowledge discovery and data mining (KDD) techniques can significantly enhance the analysis process. A promising KDD technique is topic modeling, which infers the underlying semantic context of text and summarizes the text using topics described by words. This paper investigates the application of topic modeling to forensic data and its ability to contribute to the analysis phase. Also, it highlights the challenges that forensic data poses to topic modeling algorithms and reports on the lessons learned from a case study.
机译:在数字取证调查的分析阶段会识别出最具可操作性的证据。当前,分析阶段使用基于表达式的搜索,假定对证据有很好的理解;但是使用这种方法找不到潜在的证据。知识发现和数据挖掘(KDD)技术可以显着增强分析过程。一种有前途的KDD技术是主题建模,它可以推断文本的底层语义上下文,并使用单词描述的主题来总结文本。本文研究了主题建模在法医数据中的应用及其对分析阶段的贡献。此外,它还强调了取证数据对主题建模算法的挑战,并报告了从案例研究中学到的经验教训。

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