Recent years have seen an explosion in the number and scale of digital communities (e.g. peer-to-peer file sharing systems,
chat applications and social networking sites). Unfortunately, digital communities are host to significant criminal activity
including copyright infringement, identity theft and child sexual abuse. Combating this growing level of crime is problematic
due to the ever increasing scale of today’s digital communities. This paper presents an approach to provide automated support
for the detection of child sexual abuse related activities in digital communities. Specifically, we analyze the characteristics
of child sexual abuse media distribution in P2P file sharing networks and carry out an exploratory study to show that corpus-based
natural language analysis may be used to automate the detection of this activity. We then give an overview of how this approach
can be extended to police chat and social networking communities.
Keywords Social Networks - P2P - Network Monitoring - Natural Language Analysis - Child Protection