Network topology inference is a fundamental problem in many applications of network science, such as locating the source of fake news, brain connectivity networks detection, etc. Many real-world situations suffer from a critical problem that only a limited part of observed nodes are available. This letter considers the problem of network topology inference under the framework of partial observability. Based on the vector autoregressive model, we propose a novel unbiased estimator for the symmetric network topology with the Gaussian noise and the Laplacian combination rule. Theoretically, we prove that it converges to the network combination matrix in probability. Furthermore, by utilizing the Gaussian mixture model algorithm, an effective algorithm called network inference Gauss algorithm is developed to infer the network structure. Finally, compared with the state-of-the-art methods, numerical experiments demonstrate the proposed algorithm enjoys better performance in the case of small sample sizes.
翻译:网络地形推断是网络科学许多应用中的一个基本问题,例如定位假新闻的来源、脑连通网络探测等。 许多现实世界局势都存在一个关键问题,只有有限的部分观测节点可供使用。本信考虑了部分可观察性框架下的网络地形推断问题。根据矢量自反模型,我们建议用高斯噪音和拉普拉西亚混合规则为对称网络地形进行新的、公正的估计。理论上,我们证明它有可能与网络组合矩阵汇合。此外,通过使用高斯混合算法,一种称为网络推断算法的有效算法,可以推断网络结构。最后,与最先进的方法相比,数字实验表明,在小样本规模的情况下,提议的算法表现更好。