链接预测的组合网络嵌入

Tianshu Lyu, Fei Sun, Peng Jiang, Wenwu Ou, Yan Zhang
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引用次数: 3

摘要

几乎所有现有的网络嵌入方法都学习将节点id映射到相应的节点嵌入。然而,这一设计原则阻碍了现有方法在实际案例中的应用。由于节点ID的不可泛化性,现有的方法在冷启动问题上需要付出很大的努力。异构网络通常需要额外的工作来编码节点类型,因为节点类型不能通过节点ID来标识。节点ID携带罕见的信息,导致现有方法对噪声的鲁棒性不足的批评。为了解决这个问题,我们引入了组合网络嵌入,这是一种通用的归纳网络表示学习框架,它通过基于“组合原则”组合节点特征来生成节点嵌入。我们没有直接优化基于任意节点id的嵌入查找,而是学习了一个组合函数,该函数通过基于图的损失组合相应的节点属性嵌入来推断节点嵌入。为了评估,我们在三种不同的设置下进行了链路预测实验。实验结果验证了组合网络嵌入的有效性和泛化能力,特别是在不可见节点上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compositional network embedding for link prediction
Almost all the existing network embedding methods learn to map the node IDs to their corresponding node embeddings. This design principle, however, hinders the existing methods from being applied in real cases. Node ID is not generalizable and, thus, the existing methods have to pay great effort in cold-start problem. The heterogeneous network usually requires extra work to encode node types, as node type is not able to be identified by node ID. Node ID carries rare information, resulting in the criticism that the existing methods are not robust to noise. To address this issue, we introduce Compositional Network Embedding, a general inductive network representation learning framework that generates node embeddings by combining node features based on the "principle of compositionally". Instead of directly optimizing an embedding lookup based on arbitrary node IDs, we learn a composition function that infers node embeddings by combining the corresponding node attribute embeddings through a graph-based loss. For evaluation, we conduct the experiments on link prediction under three different settings. The results verified the effectiveness and generalization ability of compositional network embeddings, especially on unseen nodes.
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