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Scalable Graph Embedding for Asymmetric Proximity

机译:嵌入不对称接近的可伸缩图

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Graph Embedding methods are aimed at mapping each vertex into a low dimensional vector space, which preserves certain structural relationships among the vertices in the original graph. Recently, several works have been proposed to learn embeddings based on sampled paths from the graph, e.g., DeepWalk, Line, Node2Vec. However, their methods only preserve symmetric proximities, which could be insufficient in many applications, even the underlying graph is undirected. Besides, they lack of theoretical analysis of what exactly the relationships they preserve in their embedding space. In this paper, we propose an asymmetric proximity preserving (APP) graph embedding method via random walk with restart, which captures both asymmetric and high-order similarities between node pairs. We give theoretical analysis that our method implicitly preserves the Rooted PageRank score for any two vertices. We conduct extensive experiments on tasks of link prediction and node recommendation on open source datasets, as well as online recommendation services in Alibaba Group, in which the training graph has over 290 million vertices and 18 billion edges, showing our method to be highly scalable and effective.
机译:绘图嵌入方法旨在将每个顶点映射到低维矢量空间中,这在原始图中保留了顶点之间的某些结构关系。最近,已经提出了几种作品来学习基于图表的采样路径的嵌入式,例如Deplwalk,Line,Node2Vec。然而,它们的方法仅保留对称近似度,这在许多应用中可能不足,即使是底层图形是无向的。此外,他们缺乏对他们在嵌入空间中保存的关系的理论分析。在本文中,我们提出了通过重启随机散步的不对称邻近保存(App)植物嵌入方法,其捕获节点对之间的非对称和高阶相似性。我们给出了理论分析,即我们的方法隐含地保留了任何两个顶点的根的PageRank分数。我们对开源数据集的链路预测和节点建议的任务进行了广泛的实验,以及阿里巴巴集团的在线推荐服务,其中培训图具有超过2.9亿顶点和180亿边缘,显示我们的方法是高度可扩展的有效的。

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