Transfer Learning across Networks for Collective Classification

Meng Fang, Jie Yin, Xingquan Zhu
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引用次数: 47

Abstract

This paper addresses the problem of transferring useful knowledge from a source network to predict node labels in a newly formed target network. While existing transfer learning research has primarily focused on vector-based data, in which the instances are assumed to be independent and identically distributed, how to effectively transfer knowledge across different information networks has not been well studied, mainly because networks may have their distinct node features and link relationships between nodes. In this paper, we propose a new transfer learning algorithm that attempts to transfer common latent structure features across the source and target networks. The proposed algorithm discovers these latent features by constructing label propagation matrices in the source and target networks, and mapping them into a shared latent feature space. The latent features capture common structure patterns shared by two networks, and serve as domain-independent features to be transferred between networks. Together with domain-dependent node features, we thereafter propose an iterative classification algorithm that leverages label correlations to predict node labels in the target network. Experiments on real-world networks demonstrate that our proposed algorithm can successfully achieve knowledge transfer between networks to help improve the accuracy of classifying nodes in the target network.
集体分类跨网络迁移学习
本文解决了从源网络中转移有用知识来预测新形成的目标网络中的节点标签的问题。虽然现有的迁移学习研究主要集中在基于向量的数据上,其中假设实例是独立的、同分布的,但如何在不同的信息网络之间有效地迁移知识并没有得到很好的研究,这主要是因为网络可能具有不同的节点特征和节点之间的链接关系。在本文中,我们提出了一种新的迁移学习算法,该算法试图在源网络和目标网络之间迁移共同的潜在结构特征。该算法通过在源网络和目标网络中构造标签传播矩阵来发现这些潜在特征,并将它们映射到共享的潜在特征空间中。潜在特征捕获两个网络共享的共同结构模式,并作为领域无关的特征在网络之间传递。结合领域相关的节点特征,我们提出了一种迭代分类算法,该算法利用标签相关性来预测目标网络中的节点标签。在真实网络上的实验表明,本文提出的算法能够成功地实现网络间的知识转移,有助于提高目标网络中节点的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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