Link prediction, inferring the undiscovered or potential links of the graph, is widely applied in the real-world. By facilitating labeled links of the graph as the training data, numerous deep learning based link prediction methods have been studied, which have dominant prediction accuracy compared with non-deep methods. However,the threats of maliciously crafted training graph will leave a specific backdoor in the deep model, thus when some specific examples are fed into the model, it will make wrong prediction, defined as backdoor attack. It is an important aspect that has been overlooked in the current literature. In this paper, we prompt the concept of backdoor attack on link prediction, and propose Link-Backdoor to reveal the training vulnerability of the existing link prediction methods. Specifically, the Link-Backdoor combines the fake nodes with the nodes of the target link to form a trigger. Moreover, it optimizes the trigger by the gradient information from the target model. Consequently, the link prediction model trained on the backdoored dataset will predict the link with trigger to the target state. Extensive experiments on five benchmark datasets and five well-performing link prediction models demonstrate that the Link-Backdoor achieves the state-of-the-art attack success rate under both white-box (i.e., available of the target model parameter)and black-box (i.e., unavailable of the target model parameter) scenarios. Additionally, we testify the attack under defensive circumstance, and the results indicate that the Link-Backdoor still can construct successful attack on the well-performing link prediction methods. The code and data are available at https://github.com/Seaocn/Link-Backdoor.
翻译:链接预测,即图中未发现或潜在链接的链接预测,在现实世界中被广泛应用。通过促进图表的标签链接,将培训数据标记为培训数据,已经研究了许多基于深层次学习的链接预测方法,这些方法与非深度方法相比具有主要的预测准确性。然而,恶意制作的培训图的威胁将留下一个深层次模型中特定的后门,因此当某些具体例子被输入模型时,它将作出错误的预测,定义为后门攻击。这是当前文献中忽略的一个重要方面。在本文中,我们将后门攻击的概念用于链接预测,并提议使用 Link-Back门来显示现有链接预测方法的培训脆弱性。具体地说, Link-B门将假节点与目标链接的节点结合起来,形成触发器。此外,它优化了目标模型中的梯度信息。因此,在后门数据库中培训的预测模型将预测与目标状态的联系。在5个基准数据集和5个运行良好的链接中,仍然进行广泛的实验,在Slink-rorfor-lor-lickral 预测模型下, 以及我们现有的攻击目标指标中,可以实现链接。Link-lake-lax-lax-lax-bbbbor-lax-laus-lax-laus