Active Domain Transfer on Network Embedding

Lichen Jin, Yizhou Zhang, Guojie Song, Yilun Jin
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引用次数: 4

Abstract

Recent works show that end-to-end, (semi-) supervised network embedding models can generate satisfactory vectors to represent network topology, and are even applicable to unseen graphs by inductive learning. However, domain mismatch between training and testing network for inductive learning, as well as lack of labeled data often compromises the outcome of such methods. To make matters worse, while transfer learning and active learning techniques, being able to solve such problems correspondingly, have been well studied on regular i.i.d data, relatively few attention has been paid on networks. Consequently, we propose in this paper a method for active transfer learning on networks named active-transfer network embedding, abbreviated ATNE. In ATNE we jointly consider the influence of each node on the network from the perspectives of transfer and active learning, and hence design novel and effective influence scores combining both aspects in the training process to facilitate node selection. We demonstrate that ATNE is efficient and decoupled from the actual model used. Further extensive experiments show that ATNE outperforms state-of-the-art active node selection methods and shows versatility in different situations.
网络嵌入中的主动域转移
最近的研究表明,端到端(半)监督网络嵌入模型可以生成满意的向量来表示网络拓扑,甚至可以通过归纳学习应用于看不见的图。然而,归纳学习的训练和测试网络之间的领域不匹配以及缺乏标记数据往往会影响这些方法的结果。更糟糕的是,虽然迁移学习和主动学习技术能够相应解决这类问题,已经在常规的i.i.d数据上得到了很好的研究,但对网络的关注相对较少。因此,我们在本文中提出了一种网络上的主动迁移学习方法,称为主动迁移网络嵌入,简称ATNE。在ATNE中,我们从迁移和主动学习的角度共同考虑每个节点对网络的影响,从而在训练过程中结合这两个方面设计新颖有效的影响分数,以方便节点的选择。我们证明了ATNE是有效的,并且与实际使用的模型解耦。进一步的广泛实验表明,ATNE优于最先进的活动节点选择方法,并在不同情况下显示出通用性。
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