LGCYSIMLNov 12, 2019

Identifying Hidden Buyers in Darknet Markets via Dirichlet Hawkes Process

arXiv:1911.04620v12 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of analyzing buyer behavior in darknet markets, which is crucial for combating illicit online transactions, though it is an incremental advance in a domain-specific area.

The paper tackles the problem of identifying hidden buyers in darknet markets by proposing UNMIX, a model that clusters transactions from anonymized IDs based on temporal and content patterns, achieving effectiveness demonstrated through experiments on real-world data from three markets.

The darknet markets are notorious black markets in cyberspace, which involve selling or brokering drugs, weapons, stolen credit cards, and other illicit goods. To combat illicit transactions in the cyberspace, it is important to analyze the behaviors of participants in darknet markets. Currently, many studies focus on studying the behavior of vendors. However, there is no much work on analyzing buyers. The key challenge is that the buyers are anonymized in darknet markets. For most of the darknet markets, We only observe the first and last digits of a buyer's ID, such as ``a**b''. To tackle this challenge, we propose a hidden buyer identification model, called UNMIX, which can group the transactions from one hidden buyer into one cluster given a transaction sequence from an anonymized ID. UNMIX is able to model the temporal dynamics information as well as the product, comment, and vendor information associated with each transaction. As a result, the transactions with similar patterns in terms of time and content group together as the subsequence from one hidden buyer. Experiments on the data collected from three real-world darknet markets demonstrate the effectiveness of our approach measured by various clustering metrics. Case studies on real transaction sequences explicitly show that our approach can group transactions with similar patterns into the same clusters.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes