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Autores principales: Barredo-Valenzuela, Alfonso Rodriguez, Portillo, Sergio Pastrana, Suarez-Tangil, Guillermo
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2504.16836
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author Barredo-Valenzuela, Alfonso Rodriguez
Portillo, Sergio Pastrana
Suarez-Tangil, Guillermo
author_facet Barredo-Valenzuela, Alfonso Rodriguez
Portillo, Sergio Pastrana
Suarez-Tangil, Guillermo
contents The Onion Router (Tor) is a controversial network whose utility is constantly under scrutiny. On the one hand, it allows for anonymous interaction and cooperation of users seeking untraceable navigation on the Internet. This freedom also attracts criminals who aim to thwart law enforcement investigations, e.g., trading illegal products or services such as drugs or weapons. Tor allows delivering content without revealing the actual hosting address, by means of .onion (or hidden) services. Different from regular domains, these services can not be resolved by traditional name services, are not indexed by regular search engines, and they frequently change. This generates uncertainty about the extent and size of the Tor network and the type of content offered. In this work, we present a large-scale analysis of the Tor Network. We leverage our crawler, dubbed Mimir, which automatically collects and visits content linked within the pages to collect a dataset of pages from more than 25k sites. We analyze the topology of the Tor Network, including its depth and reachability from the surface web. We define a set of heuristics to detect the presence of replicated content (mirrors) and show that most of the analyzed content in the Dark Web (82% approx.) is a replica of other content. Also, we train a custom Machine Learning classifier to understand the type of content the hidden services offer. Overall, our study provides new insights into the Tor network, highlighting the importance of initial seeding for focus on specific topics, and optimize the crawling process. We show that previous work on large-scale Tor measurements does not consider the presence of mirrors, which biases their understanding of the Dark Web topology and the distribution of content.
format Preprint
id arxiv_https___arxiv_org_abs_2504_16836
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Snorkeling in dark waters: A longitudinal surface exploration of unique Tor Hidden Services (Extended Version)
Barredo-Valenzuela, Alfonso Rodriguez
Portillo, Sergio Pastrana
Suarez-Tangil, Guillermo
Cryptography and Security
The Onion Router (Tor) is a controversial network whose utility is constantly under scrutiny. On the one hand, it allows for anonymous interaction and cooperation of users seeking untraceable navigation on the Internet. This freedom also attracts criminals who aim to thwart law enforcement investigations, e.g., trading illegal products or services such as drugs or weapons. Tor allows delivering content without revealing the actual hosting address, by means of .onion (or hidden) services. Different from regular domains, these services can not be resolved by traditional name services, are not indexed by regular search engines, and they frequently change. This generates uncertainty about the extent and size of the Tor network and the type of content offered. In this work, we present a large-scale analysis of the Tor Network. We leverage our crawler, dubbed Mimir, which automatically collects and visits content linked within the pages to collect a dataset of pages from more than 25k sites. We analyze the topology of the Tor Network, including its depth and reachability from the surface web. We define a set of heuristics to detect the presence of replicated content (mirrors) and show that most of the analyzed content in the Dark Web (82% approx.) is a replica of other content. Also, we train a custom Machine Learning classifier to understand the type of content the hidden services offer. Overall, our study provides new insights into the Tor network, highlighting the importance of initial seeding for focus on specific topics, and optimize the crawling process. We show that previous work on large-scale Tor measurements does not consider the presence of mirrors, which biases their understanding of the Dark Web topology and the distribution of content.
title Snorkeling in dark waters: A longitudinal surface exploration of unique Tor Hidden Services (Extended Version)
topic Cryptography and Security
url https://arxiv.org/abs/2504.16836