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Structural Role Enhanced Attributed Network Embedding

机译:结构角色增强的属性网络嵌入

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摘要

In recent years, network embedding methods based on deep learning to process network structure data have attracted widespread attention. It aims to represent nodes in the network as low-dimensional dense real-value vectors and effectively preserve network structure and other valuable information. Most network embedding methods now only preserve the network topology and do not take advantage of the rich attribute information in networks. In this paper, we propose a novel deep attributed network embedding framework (RolEANE), which can preserve network topological structure and attribute information well at the same time. The framework consists of two parts, one of which is the network structural role proximity enhanced deep autoencoder, which is used to capture highly nonlinear network topological structure and attribute information. The other part is that we proposed a neighbor optimization strategy to modify the Skip-Gram model so that it can integrate the network topological structure and attribute information to improve the final embedded performance. The experiments on four real datasets show that our method outperforms other state-of-the-art network embedding methods.
机译:近年来,基于深度学习的网络嵌入方法来处理网络结构数据已引起广泛关注。它旨在将网络中的节点表示为低维密集实值向量,并有效保留网络结构和其他有价值的信息。现在,大多数网络嵌入方法仅保留网络拓扑,而没有利用网络中的丰富属性信息。在本文中,我们提出了一种新颖的深属性网络嵌入框架(RolEANE),该框架可以同时很好地保留网络拓扑结构和属性信息。该框架由两部分组成,其中之一是网络结构角色邻近增强型深度自动编码器,用于捕获高度非线性的网络拓扑结构和属性信息。另一部分是我们提出了一种邻居优化策略来修改Skip-Gram模型,以便它可以集成网络拓扑结构和属性信息以提高最终的嵌入式性能。在四个真实数据集上的实验表明,我们的方法优于其他最新的网络嵌入方法。

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