Signed networks are frequently observed in real life with additional sign information associated with each edge, yet such information has been largely ignored in existing network models. This paper develops a unified embedding model for signed networks to disentangle the intertwined balance structure and anomaly effect, which can greatly facilitate the downstream analysis, including community detection, anomaly detection, and network inference. The proposed model captures both balance structure and anomaly effect through a low rank plus sparse matrix decomposition, which are jointly estimated via a regularized formulation. Its theoretical guarantees are established in terms of asymptotic consistency and finite-sample probability bounds for network embedding, community detection and anomaly detection. The advantage of the proposed embedding model is also demonstrated through extensive numerical experiments on both synthetic networks and an international relation network.
翻译:在现实生活中,经常看到与每一边缘相关的标志性信息,而现有网络模型基本上忽视了这类信息。本文件为签字网络开发了一个统一的嵌入模型,以解开相互交织的平衡结构和异常效应,这将大大便利下游分析,包括社区检测、异常检测和网络推断。拟议模型通过低级别加上稀疏的矩阵分解,通过通过常规化的表述方法共同估算,既反映平衡结构和异常效应,又反映平衡结构和异常效应。其理论保障体现在网络嵌入、社区检测和异常检测的无症状一致性和有限概率界限上。拟议的嵌入模型的优势还体现在对合成网络和国际关系网络的广泛数字实验中。