With the ever-increasing boom of Cryptocurrency, detecting fraudulent behaviors and associated malicious addresses draws significant research effort. However, most existing studies still rely on the full history features or full-fledged address transaction networks, thus cannot meet the requirements of early malicious address detection, which is urgent but seldom discussed by existing studies. To detect fraud behaviors of malicious addresses in the early stage, we present Evolve Path Tracer, which consists of Evolve Path Encoder LSTM, Evolve Path Graph GCN, and Hierarchical Survival Predictor. Specifically, in addition to the general address features, we propose asset transfer paths and corresponding path graphs to characterize early transaction patterns. Further, since the transaction patterns are changing rapidly during the early stage, we propose Evolve Path Encoder LSTM and Evolve Path Graph GCN to encode asset transfer path and path graph under an evolving structure setting. Hierarchical Survival Predictor then predicts addresses' labels with nice scalability and faster prediction speed. We investigate the effectiveness and versatility of Evolve Path Tracer on three real-world illicit bitcoin datasets. Our experimental results demonstrate that Evolve Path Tracer outperforms the state-of-the-art methods. Extensive scalability experiments demonstrate the model's adaptivity under a dynamic prediction setting.
翻译:随着加密货币的日益兴起,发现欺诈行为和相关恶意地址的日益兴起,引起了巨大的研究努力。然而,大多数现有研究仍然依赖于完整的历史特征或完整的地址交易网络,因此无法满足早期恶意地址检测的要求,而现有研究对此十分紧迫,但很少讨论。为了在早期发现恶意地址的欺诈行为,我们介绍了“动态路径追踪器”,其中包括“动态路径”LSTM、“动态路径图GCN”和“等级生存预测器”。具体地说,除了一般地址特征外,我们还提出了资产转移路径和相应的路径图,以说明早期交易模式的特点。此外,由于交易模式在早期阶段变化迅速,我们提议“动态路径编码器”LSTM和“动态路径图GCN”将资产转移路径和路径图编码在一个不断演变的结构设置下。“高层次生存预测器”然后以精确度和更快的预测速度预测标签。我们调查了“动态路径跟踪器”模型在三个现实-世界的“动态”路径模型模型中的有效性和多变性路径图。我们建议了“动态路径”的实验结果,展示了在不断变动的轨道上不断变动的模型。</s>