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EvoNRL: Evolving Network Representation Learning Based on Random Walks

机译:EvoNRL:基于随机游走的进化网络表示学习

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Large-scale network mining and analysis is key to revealing the underlying dynamics of networks. Lately, there has been a fast-growing interest in learning random walk-based low-dimensional continuous representations of networks. While these methods perform well, they can only operate on static networks. In this paper, we propose a random-walk based method for learning representations of evolving networks. The key idea of our approach is to maintain a set of random walks that are consistently valid with respect to the updated network topology. This way we are able to continuously learn a new mapping function from the new network to the existing low-dimension network representation. A thorough experimental evaluation is performed that demonstrates that our method is both accurate and fast, for a varying range of conditions.
机译:大规模的网络挖掘和分析是揭示网络潜在动态的关键。最近,人们对学习基于随机游动的网络低维连续表示法的兴趣日益增长。尽管这些方法表现良好,但它们只能在静态网络上运行。在本文中,我们提出了一种基于随机游走的方法来学习演化网络的表示。我们方法的关键思想是维护一组随机游走,这些游走对于更新的网络拓扑始终有效。这样,我们就能够不断学习从新网络到现有低维网络表示形式的新映射功能。进行了全面的实验评估,证明了我们的方法在各种条件下均准确,快速。

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