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Type Preserving Representation of Heterogeneous Information Networks

机译:类型保存异构信息网络的表示

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In the current information explosion era, many complex systems can be modeled using networks/graphs. The development of artificial intelligence and machine learning has also provided more means for graph analysis tasks. However, the high-dimensional large-scale graphs cannot be used as input to machine learning algorithms directly. One typically needs to apply representation learning to transform the high-dimensional graphs to low-dimensional vector representations. As for network embedding/representation learning, the study on homogeneous graphs is already highly adequate. However, heterogeneous information networks are more common in real-world applications. Applying homogeneous-graph embedding methods to heterogeneous graphs will incur significant information loss. In this paper, we propose a numerical signature based method, which is highly pluggable-given a target heterogeneous graph G, our method can complement any existing network embedding method on either homogeneous or heterogeneous graphs and universally improve the embedding quality of G, while only introducing minimum overhead. We use real datasets from four different domains, and compare with a representative homogeneous network embedding method, a representative heterogeneous network embedding method, and a state-of-the-art heterogeneous network embedding method, to illustrate the improvement effect of the proposed framework on the quality of network embedding, in terms of node classification, node clustering, and edge classification tasks.
机译:在当前信息爆炸时代,许多复杂系统可以使用网络/图形建模。人工智能和机器学习的开发还提供了更多的图形分析任务。但是,高维大规模图不能直接用作机器学习算法的输入。一种通常需要应用表示学习以将高维图形转换为低维矢量表示。至于网络嵌入/表示学习,均匀图表的研究已经高度了。然而,异构信息网络在现实世界中更为常见。将同质图形嵌入方法应用于异构图形将产生重大的信息损失。在本文中,我们提出了一种基于数值签​​名的方法,该方法是高度可插拔的 - 给定目标异构图G,我们的方法可以补充任何现有的网络嵌入方法在均匀或异构图上,并普遍提高G的嵌入质量引入最小开销。我们使用来自四个不同域的真实数据集,并与代表性的同质网络嵌入方法,代表异构网络嵌入方法和最先进的异构网络嵌入方法进行比较,以说明所提出的框架的改进效果在节点分类,节点群集和边缘分类任务方面,网络嵌入的网络质量。

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