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Quality-Aware Streaming Network Embedding with Memory Refreshing

机译:具有内存刷新功能的质量感知流网络嵌入

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Static network embedding has been widely studied to convert sparse structure information into a dense latent space. However, the majority of real networks are continuously evolving, and deriving the whole embedding for every snapshot is computationally intensive. To avoid recomputing the embedding over time, we explore streaming network embedding for two reasons: 1) to efficiently identify the nodes required to update the embeddings under multi-type network changes, and 2) to carefully revise the embeddings to maintain transduction over different parts of the network. Specifically, we propose a new representation learning framework, named Graph Memory Refreshing (GMR), to preserve both global types of structural information efficiently. We prove that GMR maintains the consistency of embeddings (crucial for network analysis) for isomorphic structures better than existing approaches. Experimental results demonstrate that GMR outperforms the baselines with much smaller time.
机译:静态网络嵌入已被广泛研究以将稀疏结构信息转换为密集的潜在空间。但是,大多数实际网络都在不断发展,并且为每个快照派生整个嵌入是计算密集型的。为避免随着时间的推移重新计算嵌入,我们出于以下两个原因探讨了流网络嵌入:1)在多种类型的网络变化下有效地识别更新嵌入所需的节点,以及2)仔细修改嵌入以维持跨不同部分的转换网络。具体来说,我们提出了一个新的表示学习框架,称为图形内存刷新(GMR),以有效地保留这两种全局类型的结构信息。我们证明,GMR对于同构结构的嵌入保持一致性(对于网络分析至关重要)比现有方法更好。实验结果表明,GMR在更短的时间内胜过了基线。

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