Content-Based Features to Rank Influential Hidden Services of the Tor Darknet

Bibliographic Details
Title: Content-Based Features to Rank Influential Hidden Services of the Tor Darknet
Authors: Al-Nabki, Mhd Wesam, Fidalgo, Eduardo, Alegre, Enrique, Chaves, Deisy
Publication Year: 2019
Collection: Computer Science
Statistics
Subject Terms: Computer Science - Machine Learning, Computer Science - Information Retrieval, Statistics - Machine Learning
More Details: The unevenness importance of criminal activities in the onion domains of the Tor Darknet and the different levels of their appeal to the end-user make them tangled to measure their influence. To this end, this paper presents a novel content-based ranking framework to detect the most influential onion domains. Our approach comprises a modeling unit that represents an onion domain using forty features extracted from five different resources: user-visible text, HTML markup, Named Entities, network topology, and visual content. And also, a ranking unit that, using the Learning-to-Rank (LtR) approach, automatically learns a ranking function by integrating the previously obtained features. Using a case-study based on drugs-related onion domains, we obtained the following results. (1) Among the explored LtR schemes, the listwise approach outperforms the benchmarked methods with an NDCG of 0.95 for the top-10 ranked domains. (2) We proved quantitatively that our framework surpasses the link-based ranking techniques. Also, (3) with the selected feature, we observed that the textual content, composed by text, NER, and HTML features, is the most balanced approach, in terms of efficiency and score obtained. The proposed framework might support Law Enforcement Agencies in detecting the most influential domains related to possible suspicious activities.
Document Type: Working Paper
Access URL: http://arxiv.org/abs/1910.02332
Accession Number: edsarx.1910.02332
Database: arXiv
More Details
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