论文标题
基于嵌入向量之间的多种类型的一致性,多重社交网络中的层中链接链接预测
Interlayer Link Prediction in Multiplex Social Networks Based on Multiple Types of Consistency between Embedding Vectors
论文作者
论文摘要
在线用户通常在构成多重社交网络的多个社交媒体网络(SMN)上活动。确定在不同SMN上给定的帐户是否属于同一用户变得越来越具有挑战性。这可以表示为多路复用网络中的层中链接预测问题。为了解决预测层间链接的挑战,要利用功能或结构信息。使用网络嵌入技术来解决此问题的现有方法专注于学习映射功能,以将所有节点统一为一个常见的潜在表示空间进行预测;不使用无与伦比的节点与其共同匹配的邻居(CMN)之间的位置关系。此外,这些层通常被建模为未加权图,忽略了节点之间关系的优势。为了解决这些局限性,我们提出了一个基于嵌入向量(MULCEV)之间多种类型的一致性的框架。在MULCEV中,采用基于传统的基于嵌入的方法来获得代表无与伦比节点的向量之间的一致性,并且根据每个潜在空间中节点的位置提出的距离一致性指数为预测提供了额外的线索。通过将这两种类型的一致性关联,可以充分利用潜在空间中的有效信息。此外,mulcev将图层建模为加权图以获得表示。这样,节点之间关系的强度就越高,其嵌入向量越相似。我们在几个现实世界数据集上实验的结果表明,所提出的MULCEV框架显着优于当前基于嵌入的方法,尤其是当训练迭代次数较小时。
Online users are typically active on multiple social media networks (SMNs), which constitute a multiplex social network. It is becoming increasingly challenging to determine whether given accounts on different SMNs belong to the same user; this can be expressed as an interlayer link prediction problem in a multiplex network. To address the challenge of predicting interlayer links , feature or structure information is leveraged. Existing methods that use network embedding techniques to address this problem focus on learning a mapping function to unify all nodes into a common latent representation space for prediction; positional relationships between unmatched nodes and their common matched neighbors (CMNs) are not utilized. Furthermore, the layers are often modeled as unweighted graphs, ignoring the strengths of the relationships between nodes. To address these limitations, we propose a framework based on multiple types of consistency between embedding vectors (MulCEV). In MulCEV, the traditional embedding-based method is applied to obtain the degree of consistency between the vectors representing the unmatched nodes, and a proposed distance consistency index based on the positions of nodes in each latent space provides additional clues for prediction. By associating these two types of consistency, the effective information in the latent spaces is fully utilized. Additionally, MulCEV models the layers as weighted graphs to obtain representation. In this way, the higher the strength of the relationship between nodes, the more similar their embedding vectors in the latent representation space will be. The results of our experiments on several real-world datasets demonstrate that the proposed MulCEV framework markedly outperforms current embedding-based methods, especially when the number of training iterations is small.