DFRWS EU 10-Year Review and Future Directions in Digital Forensic Research
- URL: http://arxiv.org/abs/2312.11292v2
- Date: Fri, 15 Mar 2024 16:51:23 GMT
- Title: DFRWS EU 10-Year Review and Future Directions in Digital Forensic Research
- Authors: Frank Breitinger, Jan-Niclas Hilgert, Christopher Hargreaves, John Sheppard, Rebekah Overdorf, Mark Scanlon,
- Abstract summary: This paper surveys all 135 peer-reviewed articles published at the Digital Forensics Research Conference Europe (DFRWS EU) spanning the decade since its inaugural running (2014-2023)
This comprehensive study of DFRWS EU articles encompasses sub-disciplines such as digital forensic science, device forensics, techniques and fundamentals, artefact forensics, multimedia forensics, memory forensics, and network forensics.
The analysis presented offers insights into the evolution of digital forensic research efforts over these ten years and informs some identified future research directions.
- Score: 0.11545092788508222
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Conducting a systematic literature review and comprehensive analysis, this paper surveys all 135 peer-reviewed articles published at the Digital Forensics Research Conference Europe (DFRWS EU) spanning the decade since its inaugural running (2014-2023). This comprehensive study of DFRWS EU articles encompasses sub-disciplines such as digital forensic science, device forensics, techniques and fundamentals, artefact forensics, multimedia forensics, memory forensics, and network forensics. Quantitative analysis of the articles' co-authorships, geographical spread and citation metrics are outlined. The analysis presented offers insights into the evolution of digital forensic research efforts over these ten years and informs some identified future research directions.
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