基于机器学习的社区检测目标函数选择

Asa Bornstein, Amir Rubin, Danny Hendler
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引用次数: 0

摘要

. NECTAR是Cohen等人于2016年提出的一种以节点为中心的重叠社区检测算法,它根据调用该算法的网络,在两个目标函数之间动态选择要优化的函数。正如Cohen等人所示,这种方法优于六种最先进的重叠社区检测算法。在这项工作中,我们提出了NECTAR- ml,这是NECTAR算法的扩展,它使用基于机器学习的模型来自动选择目标函数,并在15,755个合成网络和7个真实网络的数据集上进行了训练和评估。我们的分析表明,在大约90%的情况下,我们的模型能够成功地选择正确的目标函数。我们对NECTAR和NECTAR- ml进行了竞争分析。结果表明,NECTAR- ml在选择最佳目标函数方面的能力明显优于NECTAR。我们还对NECTAR-ML和另外两种最先进的多目标社区检测算法进行了竞争分析。NECTAR-ML在平均检测质量方面优于两种算法。多目标ea (moea)被认为是解决MOP最流行的方法,NECTAR-ML显著优于它们的事实证明了基于ml的目标函数选择的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine-Learning Based Objective Function Selection for Community Detection
. NECTAR, a Node-centric ovErlapping Community deTection AlgoRithm, presented in 2016 by Cohen et. al, chooses dynamically between two objective functions which function to optimize, based on the network on which it is invoked. This approach, as shown by Cohen et al., outperforms six state-of-the-art algorithms for overlapping community detection. In this work, we present NECTAR-ML, an extension of the NECTAR algorithm that uses a machine-learning based model for automating the selection of the objective function, trained and evaluated on a dataset of 15,755 synthetic and 7 real-world networks. Our analysis shows that in approximately 90% of the cases our model was able to successfully select the correct objective function. We conducted a competitive analysis of NECTAR and NECTAR-ML. NECTAR-ML was shown to significantly outperform NECTAR’s ability to select the best objective function. We also conducted a competitive analysis of NECTAR-ML and two additional state-of-the-art multi-objective community detection algorithms. NECTAR-ML outperformed both algorithms in terms of average detection quality. Multiobjective EAs (MOEAs) are considered to be the most popular approach to solve MOP and the fact that NECTAR-ML significantly outperforms them demonstrates the effectiveness of ML-based objective function selection.
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