基于长匿名随机行走的网络表示学习算法

W. Liu, Xin Du
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引用次数: 0

摘要

网络表示学习(Network Representation Learning, NRL)在网络分析中起着重要的作用,其目的是通过将节点转换为低维向量来更简洁地表示复杂的网络。网络表示学习已成为学术界和工业界日益关注的研究热点。在一个方向上的大部分工作是基于学习基于随机行走衍生模型的网络特征。然而,面对长徘徊序列,很难提取出有效的特征。因此,我们提出了一种基于长匿名随机行走(Long Anonymous Random Walks, LARW)的动态网络表征方法。LARW结合了最新的长序列预测方法Informer,可以保留更多的特征信息。在与实际结果对比的过程中对模型参数进行优化,使节点嵌入更具预测性和因果性。在我们的实验中,我们将我们的模型与现有的NRL模型在四个真实数据集上进行了比较。实验结果表明,LARW在节点分类和链路预测等任务上取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LARW: Network Representation Learning Algorithm Based On Long Anonymous Random Walks
Network Representation Learning (NRL) plays an important role in network analysis and aims to represent complex networks more concisely by transforming nodes into low-dimensional vectors. Network representation learning has become the focus of increasing research interest in academia and industry. Much of the work in one direction is based on learning network features based on random walk derived models. However, it is difficult to extract effective features in the face of long wandering sequences. Therefore, we propose a dynamic network characterization method based on Long Anonymous Random Walks(LARW). LARW incorporates the latest long series prediction method Informer, which allows more feature information to be retained. The model parameters are optimized in the process of comparing with the actual results, thus making the node embedding more predictive and causal. In our experiments, we compare our model with the existing NRL model on four real-world datasets. The experimental results show that LARW achieves superior results in tasks such as node classification and link prediction.
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