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A local random walk model for complex networks based on discriminative feature combinations

机译:基于判别特征组合的复杂网络局部随机游动模型

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Networks have become increasingly important to model many complex systems. This powerful representation has been employed in different tasks of artificial intelligence including machine learning, expert and intelligent systems. Link prediction, a branch of network pattern recognition, is the most fundamental and essential problem for complex network analysis. However, most existing link-prediction methods only consider a network's topology structures, and in doing so, these methods miss the opportunity to use nodes' attribute information. We present a combined approach here that uses nodes' attribute information and topology structure to direct link prediction. First, we propose a discriminative feature combinations selection method. Specifically, we present a novel mathematics inference to detail discriminative feature combinations. Second, based on the selected feature combinations, we aggregate the network, and further compute each feature combination's contributing degree to the link's formation, called the strength of feature combination. Third, we apply discriminative feature combinations into a local random walk model; in particular, we compute and redistribute the random walk particle's transfer probability in terms of each feature combination's strength, which makes the transfer probability depend on feature combinations satisfied by each node's edges. Finally, we predict links in complex networks based on the improved random walk model. Experimental results on real-life complex network datasets demonstrate that, compared to other baseline methods, using discriminative feature combinations and topology structures in tandem strengthens prediction performance remarkably. (C) 2018 Elsevier Ltd. All rights reserved.
机译:网络对于建模许多复杂系统变得越来越重要。这种强大的表示已被用于人工智能的不同任务中,包括机器学习,专家和智能系统。链接预测是网络模式识别的一个分支,是进行复杂网络分析的最基本也是最基本的问题。但是,大多数现有的链路预测方法仅考虑网络的拓扑结构,因此,这些方法会错过使用节点的属性信息的机会。我们在这里提出一种组合方法,该方法使用节点的属性信息和拓扑结构来指导链路预测。首先,我们提出了一种判别性特征组合选择方法。具体来说,我们提出了一种新颖的数学推论来详细说明辨别特征的组合。其次,基于选定的特征组合,我们聚合网络,并进一步计算每个特征组合对链接形成的贡献程度,称为特征组合的强度。第三,我们将判别特征组合应用于局部随机游动模型;特别是,我们根据每个特征组合的强度来计算和重新分配随机游走粒子的传递概率,这使得传递概率取决于每个节点边缘满足的特征组合。最后,我们基于改进的随机游走模型预测复杂网络中的链接。在现实生活中的复杂网络数据集上的实验结果表明,与其他基线方法相比,将判别特征组合和拓扑结构串联使用可显着增强预测性能。 (C)2018 Elsevier Ltd.保留所有权利。

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