Networks analysis has been commonly used to study the interactions between units of complex systems. One problem of particular interest is learning the network's underlying connection pattern given a single and noisy instantiation. While many methods have been proposed to address this problem in recent years, they usually assume that the true model belongs to a known class, which is not verifiable in most real-world applications. Consequently, network modeling based on these methods either suffers from model misspecification or relies on additional model selection procedures that are not well understood in theory and can potentially be unstable in practice. To address this difficulty, we propose a mixing strategy that leverages available arbitrary models to improve their individual performances. The proposed method is computationally efficient and almost tuning-free; thus, it can be used as an off-the-shelf method for network modeling. We show that the proposed method performs equally well as the oracle estimate when the true model is included as individual candidates. More importantly, the method remains robust and outperforms all current estimates even when the models are misspecified. Extensive simulation examples are used to verify the advantage of the proposed mixing method. Evaluation of link prediction performance on 385 real-world networks from six domains also demonstrates the universal competitiveness of the mixing method across multiple domains.
翻译:通常使用网络分析来研究复杂系统各单位之间的相互作用。一个特别令人感兴趣的问题是,在单一的、吵闹的即时操作下,学习网络的基本连接模式。虽然近年来提出了许多方法来解决这个问题,但通常认为,真正的模型属于已知的类别,在大多数现实世界应用中无法核实,因此,基于这些方法的网络建模要么存在模型错误区分,要么依赖在理论上没有很好理解并且在实践中可能不稳定的更多模型选择程序。为了解决这一困难,我们提出了一个混合战略,利用现有的任意模型来改进它们的个人性能。拟议的方法是计算效率高,几乎是无调的;因此,它可以用作网络建模的现成方法。我们表明,在将真实模型作为个别候选人列入时,拟议的方法同样和估计值相同。更重要的是,即使模型被错误地描述,该方法仍然健全,而且不符合所有目前的估计值。我们采用了广泛的模拟实例,以核实拟议的混合方法的优点。拟议的方法是计算效率,几乎没有调整;因此,拟议的方法可以用作网络建模的方法。因此,可以用作网络建模方法,用来作为现成的现成。我们显示,从现实世界网络中测算的多域的模型的预测性。