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首页> 外文期刊>The European physical journal, B. Condensed matter physics >A node representation learning approach for link prediction in social networks using game theory and K-core decomposition
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A node representation learning approach for link prediction in social networks using game theory and K-core decomposition

机译:使用博弈论和k核分解的社交网络链接预测的节点表示学习方法

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摘要

The role of social networks in people's daily life is undeniable. Link prediction is one of the most important tasks of complex network analysis. Predicting links is currently becoming a concerned topic in social network analysis. Although many link prediction methods have been proposed in the recent years, most of the existing link prediction methods have unsatisfactory performance because of high time complexity, network size, sparsity, and similarity measures between node pairs for processing topological information. In this paper, we proposed a method for node representation learning and also a new embedding technique is used for generating latent features. We also proposed an improved version of the weighted random walk based on game theoretical technique and k-core decomposition. Node representations are generated via skipgram method. Although most of the link prediction methods have high time complexity, since our method uses Stochastic Gradient Descent for the optimization process, it has linear time complexity with respect to the number of vertices. This causes our algorithm to be scalable to large networks. In addition to that, sparsity is a huge challenge in complex networks and we cannot infer enough information from the structure of the network to make predictions. By learning a low-dimensional representation that captures the network structure, classification of nodes and edges can be done more easily. The performance of the proposed method was evaluated with some benchmark heuristic scores and state-of-the-art techniques on link prediction in several real-world networks. The experimental results show that the proposed method obtains higher accuracy in comparison with considered methods and measures. However, the time complexity is not improved effectively.
机译:社交网络在人们日常生活中的作用是不可否认的。链路预测是复杂网络分析最重要的任务之一。预测链接目前正在成为社会网络分析中的有关主题。尽管在近年来已经提出了许多链路预测方法,但由于高时间复杂性,网络大小,稀疏性和节点对之间的相似性测量,因此具有不令人满意的性能。在本文中,我们提出了一种用于节点表示学习的方法,并且还用于产生潜在特征的新嵌入技术。我们还基于游戏理论技术和K核分解的加权随机行走的改进版本。节点表示通过跳天方法生成。虽然大多数链路预测方法具有高时间复杂度,因为我们的方法使用随机梯度下降来优化过程,它具有相对于顶点的数量的线性时间复杂度。这导致我们的算法可扩展到大型网络。除此之外,稀疏性是复杂网络中的巨大挑战,我们不能从网络的结构推断出足够的信息来进行预测。通过学习捕获网络结构的低维表示,可以更容易地完成节点和边缘的分类。提出的方法的性能被评估为几个基准启发式分数和最先进的技术,最先进的技术在几个真实网络中的链路预测。实验结果表明,与所考虑的方法和措施相比,该方法获得更高的准确性。但是,时间复杂性没有有效提高。

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