基于图正则元路径的异构信息网络转换回归

Mengting Wan, Yunbo Ouyang, Lance M. Kaplan, Jiawei Han
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引用次数: 18

摘要

现实世界中的许多网络都是异构信息网络,由不同类型的节点和链路组成。异构信息网络中的数值预测是一个具有挑战性但又重要的领域,因为基于网络的未标记对象的信息通常局限于做出精确的估计。在本文中,我们考虑了一个基于图正则化元路径的转导回归模型(Grempt),它结合了典型的基于图的转导分类方法和为同构网络设计的转导回归模型的主要原理。该方法的计算节省了时间和空间,并通过数值实验验证了模型的精度。
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Graph Regularized Meta-path Based Transductive Regression in Heterogeneous Information Network
A number of real-world networks are heterogeneous information networks, which are composed of different types of nodes and links. Numerical prediction in heterogeneous information networks is a challenging but significant area because network based information for unlabeled objects is usually limited to make precise estimations. In this paper, we consider a graph regularized meta-path based transductive regression model (Grempt), which combines the principal philosophies of typical graph-based transductive classification methods and transductive regression models designed for homogeneous networks. The computation of our method is time and space efficient and the precision of our model can be verified by numerical experiments.
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