Multi-view networks are ubiquitous in real-world applications. In order to extract knowledge or business value, it is of interest to transform such networks into representations that are easily machine-actionable. Meanwhile, network embedding has emerged as an effective approach to generate distributed network representations. Therefore, we are motivated to study the problem of multi-view network embedding, with a focus on the characteristics that are specific and important in embedding this type of networks. In our practice of embedding real-world multi-view networks, we identify two such characteristics, which we refer to as preservation and collaboration. We then explore the feasibility of achieving better embedding quality by simultaneously modeling preservation and collaboration, and propose the mvn2vec algorithms. With experiments on a series of synthetic datasets, an internal Snapchat dataset, and two public datasets, we further confirm the presence and importance of preservation and collaboration. These experiments also demonstrate that better embedding can be obtained by simultaneously modeling the two characteristics, while not over-complicating the model or requiring additional supervision.
翻译:多视图网络在现实世界应用中无处不在。为了获取知识或商业价值,我们有兴趣将这些网络转化为易于机器操作的演示。与此同时,网络嵌入已成为产生分布式网络演示的有效方法。因此,我们有志于研究多视图网络嵌入的问题,重点是嵌入这类网络的具体和重要特征。在我们嵌入现实世界多视图网络的做法中,我们确定了两个这样的特征,我们称之为保存与合作。然后我们探索通过同时建模和协作实现更好嵌入质量的可行性,并提出mvn2vec算法。通过一系列合成数据集、内部的Snapchat数据集和两个公共数据集的实验,我们进一步确认保存与合作的存在和重要性。这些实验还表明,同时建模这两个特征可以更好地嵌入,同时不过度复制模型或需要额外的监督。