With the booming growth of e-commerce, detecting financial fraud has become an urgent task to avoid transaction risks. Despite the successful application of graph neural networks in fraud detection, the existing solutions are only suitable for a narrow scope due to the limitation of data collection. Especially when expanding a business into new territory, e.g., new cities or new countries, developing a totally new model will bring the cost issue and result in forgetting previous knowledge. Besides, most existing GNNs-based solutions concentrate on either homogeneous graphs or decomposing heterogeneous interactions into several homogeneous connections for convenience. To this end, this study proposes a novel solution based on heterogeneous trade graphs, namely HTG-CFD, to prevent knowledge forgetting of cross-regional fraud detection. In particular, the heterogeneous trade graph (HTG) is constructed from initial transaction records to explore the complex semantics among different types of entities and relationships. Extensive experiments demonstrate that the proposed HTG-CFD not only promotes the performance in cross-regional scenarios but also significantly contributes to the single-regional fraud detection. The code of the paper can be accessed at https://github.com/YujieLi42/HTG-CFD.
翻译:随着电子商务的蓬勃增长,发现金融欺诈已成为避免交易风险的紧迫任务。尽管在发现欺诈时成功地应用了图形神经网络,但现有的解决方案由于数据收集的局限性而仅适合狭小的范围。特别是在将企业扩展到新的领域,例如新城市或新国家时,开发一个全新的模式将带来成本问题,并导致忘记先前的知识。此外,大多数现有的基于GNN的解决方案侧重于同质图形,或者将异质互动分解成若干相同的连接,以方便交易。为此,本研究报告提出了基于多种贸易图,即HTG-CFD的新解决方案,以防止忘记跨区域欺诈探测的知识。特别是,混合贸易图(HTG)是从最初的交易记录中构建的,以探索不同类型实体和关系之间的复杂结构。广泛的实验表明,拟议的HTG-CDF不仅促进跨区域情景的绩效,而且还大大促进了单一区域欺诈的发现。文件的代码可以在https://githhub.com/YujiLi/HDLi查阅。