Piccardi Carlo
Department of Electronics, Information and Bioengineering, Politecnico di Milano, Piazza Leonardo da Vinci 32, 20133, Milan, Italy.
Sci Rep. 2023 Sep 5;13(1):14657. doi: 10.1038/s41598-023-40938-4.
Identifying networks with similar characteristics in a given ensemble, or detecting pattern discontinuities in a temporal sequence of networks, are two examples of tasks that require an effective metric capable of quantifying network (dis)similarity. Here we propose a method based on a global portrait of graph properties built by processing local nodes features. More precisely, a set of dissimilarity measures is defined by elaborating the distributions, over the network, of a few egonet features, namely the degree, the clustering coefficient, and the egonet persistence. The method, which does not require the alignment of the two networks being compared, exploits the statistics of the three features to define one- or multi-dimensional distribution functions, which are then compared to define a distance between the networks. The effectiveness of the method is evaluated using a standard classification test, i.e., recognizing the graphs originating from the same synthetic model. Overall, the proposed distances have performances comparable to the best state-of-the-art techniques (graphlet-based methods) with similar computational requirements. Given its simplicity and flexibility, the method is proposed as a viable approach for network comparison tasks.
在给定的网络集合中识别具有相似特征的网络,或者检测网络时间序列中的模式不连续性,是需要一种能够量化网络(不)相似性的有效度量的任务示例。在这里,我们提出了一种基于通过处理局部节点特征构建的图属性全局画像的方法。更确切地说,通过详细阐述网络上一些自我网络特征(即度、聚类系数和自我网络持久性)的分布来定义一组不相似性度量。该方法不需要对被比较的两个网络进行对齐,而是利用这三个特征的统计信息来定义一维或多维分布函数,然后通过比较这些函数来定义网络之间的距离。使用标准分类测试(即识别源自同一合成模型的图)来评估该方法的有效性。总体而言,所提出的距离在类似计算要求下具有与最佳的现有技术(基于图元的方法)相当的性能。鉴于其简单性和灵活性,该方法被提议作为网络比较任务的一种可行方法。