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EmbeddingVis: A Visual Analytics Approach to Comparative Network Embedding Inspection

机译:EmbeddingVis:对比较网络嵌入检查的视觉分析方法

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Constructing latent vector representation for nodes in a network through embedding models has shown its practicality in many graph analysis applications, such as node classification, clustering, and link prediction. However, despite the high efficiency and accuracy of learning an embedding model, people have little clue of what information about the original network is preserved in the embedding vectors. The abstractness of low-dimensional vector representation, stochastic nature of the construction process, and non-transparent hyper-parameters all obscure understanding of network embedding results. Visualization techniques have been introduced to facilitate embedding vector inspection, usually by projecting the embedding space to a two-dimensional display. Although the existing visualization methods allow simple examination of the structure of embedding space, they cannot support in-depth exploration of the embedding vectors. In this paper, we design an exploratory visual analytics system that supports the comparative visual interpretation of embedding vectors at the cluster, instance, and structural levels. To be more specific, it facilitates comparison of what and how node metrics are preserved across different embedding models and investigation of relationships between node metrics and selected embedding vectors. Several case studies confirm the efficacy of our system. Experts’ feedback suggests that our approach indeed helps them better embrace the understanding of network embedding models.
机译:构建用于通过嵌入模型网络中的节点潜矢量表示已经显示出其在许多图形分析应用中,例如节点分类,聚类,和链路预测实用性。然而,尽管高效率和学习的嵌入模型的准确性,人们有什么有关原始网络信息中嵌入矢量被保留些许端倪。低维向量表示,施工过程中的随机性质,和非透明超参数网络嵌入结果的所有晦涩理解的抽象。可视化技术已被引入,以促进嵌入矢量检测,通常是通过投影嵌入空间到二维显示。虽然现有的可视化方法允许嵌入空间结构的简单检查,他们不能支持深入探索嵌入矢量的。在本文中,我们设计了一个试探性的视觉分析系统,它支持在集群,例如嵌入矢量的比较视觉解释和结构层次。更具体地讲,它促进了什么,以及如何度量节点跨不同的嵌入模型和节点指标之间的关系进行调查,并选择嵌入矢量保存比较。几个案例研究证实了我们的系统的效能。专家们的反馈表明,我们的方法确实可以帮助他们更好地拥抱网络嵌入模式的理解。

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