Literature DB >> 35462180

Objectifying evidence evaluation for gunshot residue comparisons using machine learning on criminal case data.

Timo Matzen1, Corina Kukurin2, Judith van de Wetering3, Simone Ariëns4, Wauter Bosma5, Alwin Knijnenberg6, Amalia Stamouli7, Rolf Jf Ypma8.   

Abstract

Comparative gunshot residue analysis addresses relevant forensic questions such as 'did suspect X fire shot Y?'. More formally, it weighs the evidence for hypotheses of the form H1: gunshot residue particles found on suspect's hands are from the same source as the gunshot residue particles found on the crime scene and H2: two sets of particles are from different sources. Currently, experts perform this analysis by evaluating the elemental composition of the particles using their knowledge and experience. The aim of this study is to construct a likelihood-ratio (LR) system based on representative data. Such an LR system can support the expert by making the interpretation of the results of electron microscopy analysis more empirically grounded. In this study we chose statistical models from the machine learning literature as candidates to construct this system, as these models have been shown to work well for large and high-dimensional datasets. Using a subsequent calibration step ensured that the system outputs well-calibrated LRs. The system is developed and validated on casework data and an additional validation step is performed on an independent dataset of cartridge data. The results show that the system performs well on both datasets. We discuss future work needed before the method can be implemented in casework.
Copyright © 2022 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Casework data; Comparative GSR analysis; Evidence evaluation; Gunshot residue; Likelihood ratio (LR); Machine learning

Mesh:

Year:  2022        PMID: 35462180     DOI: 10.1016/j.forsciint.2022.111293

Source DB:  PubMed          Journal:  Forensic Sci Int        ISSN: 0379-0738            Impact factor:   2.395


  1 in total

1.  A strawman with machine learning for a brain: A response to Biedermann (2022) the strange persistence of (source) "identification" claims in forensic literature.

Authors:  Geoffrey Stewart Morrison; Daniel Ramos; Rolf Jf Ypma; Nabanita Basu; Kim de Bie; Ewald Enzinger; Zeno Geradts; Didier Meuwly; David van der Vloed; Peter Vergeer; Philip Weber
Journal:  Forensic Sci Int Synerg       Date:  2022-05-06
  1 in total

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