Analyst and machine learning opinions in fire debris analysis

IF 2.6 3区 医学 Q2 CHEMISTRY, ANALYTICAL Forensic Chemistry Pub Date : 2023-09-01 DOI:10.1016/j.forc.2023.100517
Frances A. Whitehead , Mary R. Williams , Michael E. Sigman
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Abstract

The principles of subjective logic are applied to the competing propositions that ignitable liquid residue (ILR) is present, or is not present, in a fire debris sample. Analysts’ estimates of the strength of evidence coupled with their perceived levels of uncertainty combine to define a “fuzzy category” that is mapped to an opinion triangle. The opinion is expressed as a tuple consisting of the belief mass, disbelief mass, uncertainty and base rate. A workflow is introduced to guide the analyst through the fuzzy category formulation. Opinion tuples are also generated from a set of machine learning (ML) models trained on an ensemble of data sets. A set of 20 single-blind fire debris samples were analyzed by each of the authors, and by an ensemble of optimized support vector machine models. The opinions of each analyst and the ML ensemble were compared and combined to obtain an opinion representing a consensus of each analyst and the ML. The opinions of the analysts and ML were projected onto the zero-uncertainty axis and the projected opinion probabilities were used as scores to construct an receiver operating characteristic (ROC) curve. The area under the ROC curves for each analyst were greater than or equal to 0.90 and the area under the ML ROC curve was 0.96. The methodology is widely applicable to forensic problems that can be represented as a pair of mutually exclusive and exhaustive hypotheses.

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火灾碎片分析中的分析师和机器学习观点
主观逻辑的原则是适用于竞争命题可燃液体残留物(ILR)是存在的,或不存在,在火灾碎片样品。分析人士对证据强度的估计,加上他们所感知到的不确定性水平,共同定义了一个“模糊类别”,并将其映射为一个意见三角形。该意见表示为一个由相信质量、不相信质量、不确定性和基本率组成的元组。引入了一个工作流来指导分析人员通过模糊分类的制定。意见元组也是由一组在数据集集合上训练的机器学习(ML)模型生成的。每个作者分析了一组20个单盲火灾碎片样本,并通过优化的支持向量机模型集合进行了分析。将每个分析师和机器学习集合的意见进行比较和组合,以获得代表每个分析师和机器学习的共识的意见。分析师和机器学习的意见被投影到零不确定性轴上,投影的意见概率被用作分数来构建接收者工作特征(ROC)曲线。每位分析人员的ROC曲线下面积均大于等于0.90,ML ROC曲线下面积为0.96。该方法广泛适用于法医问题,可以表示为一对相互排斥和详尽的假设。
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来源期刊
Forensic Chemistry
Forensic Chemistry CHEMISTRY, ANALYTICAL-
CiteScore
5.70
自引率
14.80%
发文量
65
审稿时长
46 days
期刊介绍: Forensic Chemistry publishes high quality manuscripts focusing on the theory, research and application of any chemical science to forensic analysis. The scope of the journal includes fundamental advancements that result in a better understanding of the evidentiary significance derived from the physical and chemical analysis of materials. The scope of Forensic Chemistry will also include the application and or development of any molecular and atomic spectrochemical technique, electrochemical techniques, sensors, surface characterization techniques, mass spectrometry, nuclear magnetic resonance, chemometrics and statistics, and separation sciences (e.g. chromatography) that provide insight into the forensic analysis of materials. Evidential topics of interest to the journal include, but are not limited to, fingerprint analysis, drug analysis, ignitable liquid residue analysis, explosives detection and analysis, the characterization and comparison of trace evidence (glass, fibers, paints and polymers, tapes, soils and other materials), ink and paper analysis, gunshot residue analysis, synthetic pathways for drugs, toxicology and the analysis and chemistry associated with the components of fingermarks. The journal is particularly interested in receiving manuscripts that report advances in the forensic interpretation of chemical evidence. Technology Readiness Level: When submitting an article to Forensic Chemistry, all authors will be asked to self-assign a Technology Readiness Level (TRL) to their article. The purpose of the TRL system is to help readers understand the level of maturity of an idea or method, to help track the evolution of readiness of a given technique or method, and to help filter published articles by the expected ease of implementation in an operation setting within a crime lab.
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