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Estimating complex networks centrality via neural networks and machine learning

机译:通过神经网络和机器学习估计复杂的网络中心性

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Vertex centrality measures are important analysis elements in complex networks and systems. These metrics have high space and time complexity, which is a severe problem in applications that typically involve large networks. To apply such high complexity metrics in large networks we trained and tested off-the-shelf machine learning algorithms on several generated networks using five well-known complex network models. Our main hypothesis is that if one uses low complexity metrics as inputs to train the algorithms, one will achieve good approximations of high complexity measures. Our results show that the regression output of the machine learning algorithms applied in our experiments successfully approximate the real metric values and are a robust alternative in real world applications, in particular in complex and social network analysis.
机译:顶点集中度度量是复杂网络和系统中的重要分析元素。这些度量具有很高的空间和时间复杂性,这在通常涉及大型网络的应用程序中是一个严重的问题。为了在大型网络中应用如此高的复杂性指标,我们使用五个众所周知的复杂网络模型在几个生成的网络上训练并测试了现成的机器学习算法。我们的主要假设是,如果使用低复杂度度量作为输入来训练算法,则将获得高复杂度度量的良好近似值。我们的结果表明,在我们的实验中应用的机器学习算法的回归输出成功地逼近了实际指标值,并且在现实世界的应用程序中(尤其是在复杂的社交网络分析中)是可靠的替代方案。

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