论文标题
加权定向网络变体的权重预测
Weight Prediction for Variants of Weighted Directed Networks
论文作者
论文摘要
加权有向网络(WDN)是一个有向图,其中每个边缘与称为权重的唯一值相关联。这些网络非常适合对现实世界中的社交网络进行建模,其中对一个顶点进行了评估。本文研究的主要问题之一是预测此类网络中的边缘权重。我们首次介绍了研究WDN中边缘重量预测的度量几何方法。我们修改了一个常规的WDN概念,并引入了一种新型的WDN,我们将术语\ textIt {几乎加权的定向网络}(awdns)创建。 AWDN可以从给定的培训集中捕获网络的重量信息。然后,我们为AWDN构建一类指标(或距离),该指标(或距离)将此类网络与度量空间结构配合使用。使用AWDN的度量几何结构,我们提出了修改的$ K $最近的邻居(KNN)方法和修改的支持矢量机(SVM)方法,然后将用于预测AWDN中的边缘权重。在许多实际数据集中,除了边缘权重外,还可以将权重与捕获顶点信息的顶点相关联。重量与顶点的关联特别在图形嵌入问题中起着重要作用。采用类似的方法,我们介绍了两种新型的有向网络,其中权重与原点顶点的子集或终端顶点的子集相关联。我们首次在此类网络上构建新颖的指标类别,并基于这些新的指标提出了修改的$ K $ nn和SVM方法,以预测这些网络中起源和终端的权重。我们使用我们的几何方法对几个现实世界数据集提供了实验结果。
A weighted directed network (WDN) is a directed graph in which each edge is associated to a unique value called weight. These networks are very suitable for modeling real-world social networks in which there is an assessment of one vertex toward other vertices. One of the main problems studied in this paper is prediction of edge weights in such networks. We introduce, for the first time, a metric geometry approach to studying edge weight prediction in WDNs. We modify a usual notion of WDNs, and introduce a new type of WDNs which we coin the term \textit{almost-weighted directed networks} (AWDNs). AWDNs can capture the weight information of a network from a given training set. We then construct a class of metrics (or distances) for AWDNs which equips such networks with a metric space structure. Using the metric geometry structure of AWDNs, we propose modified $k$ nearest neighbors (kNN) methods and modified support-vector machine (SVM) methods which will then be used to predict edge weights in AWDNs. In many real-world datasets, in addition to edge weights, one can also associate weights to vertices which capture information of vertices; association of weights to vertices especially plays an important role in graph embedding problems. Adopting a similar approach, we introduce two new types of directed networks in which weights are associated to either a subset of origin vertices or a subset of terminal vertices . We, for the first time, construct novel classes of metrics on such networks, and based on these new metrics propose modified $k$NN and SVM methods for predicting weights of origins and terminals in these networks. We provide experimental results on several real-world datasets, using our geometric methodologies.