Tool induced biases? Misleading data presentation as a biasing source in digital forensic analysis

IF 2 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Daniel Bing Andersen , Nina Sunde , Kyle Porter
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Abstract

Pattern of life analysis has gained ground in the digital forensics field due to the widespread use of smart devices and systems. At the core of pattern of life analysis are the activity-level traces. These traces require expertise to draw valid inferences regarding coherent narratives of criminal events. Such complex tasks also increase the risks of bias and error. The contextual biases have been examined in a digital forensic context, however, the flaws and misinterpretations related to the interplay between the practitioner and the presented data from various software have not been examined through research.
This study advances this knowledge by examining the flaws or misinterpretations that may occur during such interactions in digital forensic casework. Our experiment conducted a mock murder scenario where pattern of life analysis is necessary to answer investigative questions. Six digital forensics investigators used two different pattern of life analysis tools, Cellebrite and APOLLO, to analyze the data extracted from the victim's iPhone and answer nine core investigative questions. We then evaluated their answers and identified any mistakes, wherein we further explored any errors that were likely caused by data misinterpretation. Both the output from Cellebrite and APOLLO enabled investigative errors due to poor naming conventions, but Cellebrite's lack of context and details of traces contributed to the largest amount of the investigators' errors. Further, the study examines how biases/misinterpretations may possibly be mitigated by combinations of traditional quality measures in digital forensics, such as the dual tool approach and peer review.
工具引起的偏见?误导数据呈现是数字取证分析中的一个偏颇源
由于智能设备和系统的广泛使用,生活模式分析在数字取证领域取得了进展。生活模式分析的核心是活动层面的痕迹。这些痕迹需要专业知识来得出关于犯罪事件连贯叙述的有效推论。如此复杂的任务也增加了偏见和错误的风险。背景偏差已经在数字取证环境中进行了检查,然而,与从业者和来自各种软件的呈现数据之间的相互作用相关的缺陷和误解尚未通过研究进行检查。本研究通过检查在数字法医案件工作中可能发生的这种交互过程中的缺陷或误解来推进这一知识。我们的实验进行了一个模拟谋杀场景,其中生活模式分析是回答调查问题所必需的。六名数字取证调查人员使用Cellebrite和APOLLO两种不同的生活模式分析工具,分析了从受害者iPhone中提取的数据,并回答了九个核心调查问题。然后我们评估他们的答案并确定任何错误,其中我们进一步探索可能由数据误解引起的任何错误。Cellebrite和APOLLO的输出都可能由于命名约定不当而导致调查错误,但Cellebrite缺乏上下文和痕迹细节,这是导致调查人员错误最多的原因。此外,该研究还探讨了如何通过结合数字取证中的传统质量措施(如双工具方法和同行评审)来减轻偏见/误解。
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来源期刊
CiteScore
5.90
自引率
15.00%
发文量
87
审稿时长
76 days
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