Bitcoin is the most common cryptocurrency involved in cyber scams. Cybercriminals often utilize pseudonymity and privacy protection mechanism associated with Bitcoin transactions to make their scams virtually untraceable. The Ponzi scheme has attracted particularly significant attention among Bitcoin fraudulent activities. This paper considers a multi-class classification problem to determine whether a transaction is involved in Ponzi schemes or other cyber scams, or is a non-scam transaction. We design a specifically designed crawler to collect data and propose a novel Attention-based Long Short-Term Memory (A-LSTM) method for the classification problem. The experimental results show that the proposed model has better efficiency and accuracy than existing approaches, including Random Forest, Extra Trees, Gradient Boosting, and classical LSTM. With correctly identified scam features, our proposed A-LSTM achieves an F1-score over 82% for the original data and outperforms the existing approaches.
翻译:比特币是涉及网络骗局的最常见加密货币。 网络罪犯经常使用与比特币交易有关的假名和隐私保护机制,使其骗局几乎无法追查。 庞氏骗局在比特币欺诈活动中引起了特别显著的关注。 本文审议了一个多级分类问题,以确定交易是否涉及庞氏骗局或其他网络骗局,或是否属于非黑客交易。 我们设计了一个专门设计的爬行器来收集数据,并为分类问题提出一种新的基于注意的长期短期内存(A-LSTM)方法。 实验结果显示,提议的模型比现有的方法,包括随机森林、外树、梯子诱导和古典LSTM,更有效率和准确性。 有了正确识别的骗局特征,我们提议的A-LSTM在原始数据上取得了超过82%的F-1分数,并超越了现有方法。