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Main Authors: de Jong, Annelies, Cascavilla, Giuseppe, De Pascale, Jessica
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.01492
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author de Jong, Annelies
Cascavilla, Giuseppe
De Pascale, Jessica
author_facet de Jong, Annelies
Cascavilla, Giuseppe
De Pascale, Jessica
contents This work investigates the potential of torrent metadata as a source for open-source intelligence (OSINT), with a focus on user profiling and behavioral analysis. While peer-to-peer (P2P) networks such as BitTorrent are well studied with respect to privacy and performance, their metadata is rarely used for investigative purposes. This work presents a proof of concept demonstrating how tracker responses, torrent index data, and enriched IP metadata can reveal patterns associated with high-risk behavior. The research follows a five-step OSINT process: source identification, data collection, enrichment, behavioral analysis, and presentation of the results. Data were collected from The Pirate Bay and UDP trackers, yielding a dataset of more than 60,000 unique IP addresses across 206 popular torrents. The data were enriched with geolocation, anonymization status, and flags of involvement in child exploitation material (CEM). A case study on sensitive e-books shows how such data can help detect possible interest in illicit content. Network analysis highlights peer clustering, co-download patterns, and the use of privacy tools by suspicious users. The study shows that publicly available torrent metadata can support scalable and automated OSINT profiling. This work adds to digital forensics by proposing a new method to extract useful signals from noisy data, with applications in law enforcement, cybersecurity, and threat analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2601_01492
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Breadcrumbs in the Digital Forest: Tracing Criminals through Torrent Metadata with OSINT
de Jong, Annelies
Cascavilla, Giuseppe
De Pascale, Jessica
Information Retrieval
Computers and Society
This work investigates the potential of torrent metadata as a source for open-source intelligence (OSINT), with a focus on user profiling and behavioral analysis. While peer-to-peer (P2P) networks such as BitTorrent are well studied with respect to privacy and performance, their metadata is rarely used for investigative purposes. This work presents a proof of concept demonstrating how tracker responses, torrent index data, and enriched IP metadata can reveal patterns associated with high-risk behavior. The research follows a five-step OSINT process: source identification, data collection, enrichment, behavioral analysis, and presentation of the results. Data were collected from The Pirate Bay and UDP trackers, yielding a dataset of more than 60,000 unique IP addresses across 206 popular torrents. The data were enriched with geolocation, anonymization status, and flags of involvement in child exploitation material (CEM). A case study on sensitive e-books shows how such data can help detect possible interest in illicit content. Network analysis highlights peer clustering, co-download patterns, and the use of privacy tools by suspicious users. The study shows that publicly available torrent metadata can support scalable and automated OSINT profiling. This work adds to digital forensics by proposing a new method to extract useful signals from noisy data, with applications in law enforcement, cybersecurity, and threat analysis.
title Breadcrumbs in the Digital Forest: Tracing Criminals through Torrent Metadata with OSINT
topic Information Retrieval
Computers and Society
url https://arxiv.org/abs/2601.01492