dStyle-GAN: Generative Adversarial Network based on Writing and Photography Styles for Drug Identification in Darknet Markets

Yiming Zhang, Y. Qian, Yujie Fan, Yanfang Ye, Xin Li, Qi Xiong, Fudong Shao
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引用次数: 9

Abstract

Despite the persistent effort by law enforcement, illicit drug trafficking in darknet markets has shown great resilience with new markets rapidly appearing after old ones being shut down. In order to more effectively detect, disrupt and dismantle illicit drug trades, there’s an imminent need to gain a deeper understanding toward the operations and dynamics of illicit drug trading activities. To address this challenge, in this paper, we design and develop an intelligent system (named dSytle-GAN) to automate the analysis for drug identification in darknet markets, by considering both content-based and style-aware information. To determine whether a given pair of posted drugs are the same or not, in dStyle-GAN, based on the large-scale data collected from darknet markets, we first present an attributed heterogeneous information network (AHIN) to depict drugs, vendors, texts and writing styles, photos and photography styles, and the rich relations among them; and then we propose a novel generative adversarial network (GAN) based model over AHIN to capture the underlying distribution of posted drugs’ writing and photography styles to learn robust representations of drugs for their identifications. Unlike existing approaches, our proposed GAN-based model jointly considers the heterogeneity of network and relatedness over drugs formulated by domain-specific meta-paths for robust node (i.e., drug) representation learning. To the best of our knowledge, the proposed dStyle-GAN represents the first principled GAN-based solution over graphs to simultaneously consider writing and photography styles as well as their latent distributions for node representation learning. Extensive experimental results based on large-scale datasets collected from six darknet markets and the obtained ground-truth demonstrate that dStyle-GAN outperforms the state-of-the-art methods. Based on the identified drug pairs in the wild by dStyle-GAN, we perform further analysis to gain deeper insights into the dynamics and evolution of illicit drug trading activities in darknet markets, whose findings may facilitate law enforcement for proactive interventions.
基于写作和摄影风格的生成对抗网络在暗网市场中的药物识别
尽管执法部门不断努力,但暗网市场的非法毒品交易显示出极大的弹性,旧市场被关闭后,新市场迅速出现。为了更有效地发现、破坏和摧毁非法毒品交易,迫切需要对非法毒品交易活动的运作和动态有更深入的了解。为了应对这一挑战,在本文中,我们设计并开发了一个智能系统(名为dstyle - gan),通过考虑基于内容和风格感知的信息,自动分析暗网市场中的药物识别。在dStyle-GAN中,基于从暗网市场收集的大规模数据,我们首先提出了一个属性异构信息网络(AHIN)来描述药物、供应商、文字和写作风格、照片和摄影风格,以及它们之间的丰富关系;然后,我们在AHIN上提出了一种新的基于生成对抗网络(GAN)的模型,以捕获张贴药物的书写和摄影风格的潜在分布,以学习药物的鲁棒表示以进行识别。与现有的方法不同,我们提出的基于gan的模型联合考虑了网络的异质性和药物的相关性,这些异质性和相关性是由特定领域的元路径制定的,用于鲁棒节点(即药物)表示学习。据我们所知,所提出的dStyle-GAN代表了第一个基于gan的图形解决方案,同时考虑了写作和摄影风格以及它们的潜在分布,用于节点表示学习。基于从六个暗网市场收集的大规模数据集和获得的基本事实的广泛实验结果表明,dStyle-GAN优于最先进的方法。基于dStyle-GAN在野外发现的药物对,我们进行了进一步的分析,以更深入地了解暗网市场中非法药物交易活动的动态和演变,其发现可能有助于执法部门采取主动干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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