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Mapping the invisible internet: Framework and dataset.

Siddique Abubakr Muntaka1, Jacques Bou Abdo1, Kemi Akanbi1

  • 1University of Cincinnati, School of Information Technology, Cincinnati, OH, USA.

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Summary
This summary is machine-generated.

A new dataset maps the Invisible Internet Project (I2P) network layer, detailing over 50,000 nodes and traffic patterns. This resource aids research into I2P

Keywords:
Anonymity networksDark web and I2P datasetDecentralized network mappingGarlic routingInvisible internet project (I2P)Overlay network topologyTunnel peer or node discovery

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Area of Science:

  • Computer Science
  • Network Engineering
  • Cybersecurity

Background:

  • The Invisible Internet Project (I2P) is a significant anonymity network.
  • Understanding I2P's network topology and traffic is crucial for its security and resilience.
  • Existing data on I2P's internal structure is limited.

Purpose of the Study:

  • To introduce a novel dataset mapping the I2P network layer.
  • To provide a comprehensive resource for analyzing I2P's decentralized routing behaviors.
  • To facilitate research on network resilience, anonymity, and adversarial modeling within I2P.

Main Methods:

  • Utilized the SWARM-I2P framework to deploy I2P routers as mapping agents.
  • Collected data on network topology, traffic, node characteristics (bandwidth, latency, uptime), and geographic distribution.
  • Employed methods including router console queries, network database (netDb) analysis, and passive monitoring.
  • Anonymized all node identifiers to ensure user privacy.

Main Results:

  • The dataset encompasses over 50,000 nodes, including high-performance (FastSet) and high-capacity subsets.
  • Detailed records of network traffic and geographic distribution of numerous nodes are included.
  • Data is publicly available in CSV and TXT formats on Zenodo, with mapping scripts on GitHub.

Conclusions:

  • This dataset offers a foundational understanding of I2P's decentralized routing.
  • The resource is suitable for reuse in studies of tunnel node selection and network resilience.
  • Enables advanced analyses, including adversarial modeling within the I2P ecosystem.