Analysing child sexual abuse activities in the dark web based on an efficient CSAM detection algorithm

Research output: Contribution to conferencePaperpeer-review

Abstract

Child sexual abuse material (CSAM) activities are prevalent on the Dark Web to evade detection, posing a global challenge for law enforcement. Our objective is to analyze CSAM discussions in this concealed space using a Support Vector Machine model, achieving an accuracy of 87.6%. Across eight forums, approximately 28.4% of posts contained CSAM, with victim ages most commonly reported as 12, 14, 13, and 11 years old for YouTube, Skype, Instagram, and Facebook, respectively. Additionally, in forums discussing boys, the most frequently mentioned nationalities in CSAM posts were English, German, and American, accounting for 12%, 7.8%, and 6% of all nationalities, respectively.
Original languageEnglish
DOIs
Publication statusPublished - 27 Sep 2023
EventTrust and Safety Research Conference - Stanford University, United States
Duration: 28 Sep 202329 Sep 2023

Conference

ConferenceTrust and Safety Research Conference
Country/TerritoryUnited States
Period28/09/2329/09/23

Keywords

  • Child sexual abuse material
  • Dark Web
  • Support Vector Machine
  • law enforcement
  • CSAM detection
  • forums
  • victim ages
  • nationalities

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