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Domain-Invariant Latent Representation Discovers Roles

机译:领域不变的潜在表示发现角色

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Discovering the roles of nodes in a network is important for solving various social issues. Role discovery aims to infer nodes' roles from a network structure, and it has received considerable attention recently. The conventional methods of role discovery mainly use unsupervised learning, but due to the lack of information, it is difficult to discover the roles we want or to ascertain the results. In this paper, we attempt to improve accuracy through using supervised information. Specifically, we adopt transfer learning using adversarial learning. As a result of computational experiments, we show that the proposed model discovers a node's role more effectively than do the conventional methods. Furthermore, we found that domain-invariant features lead to higher accuracy, the proposed method discovers roles better even with different network sizes, and the proposed method works well even if the networks have nodes of various structures.
机译:发现网络中节点的角色对于解决各种社会问题很重要。角色发现旨在从网络结构中推断节点的角色,并且近来受到了相当大的关注。传统的角色发现方法主要使用无监督学习,但是由于缺乏信息,因此很难发现我们想要的角色或确定结果。在本文中,我们尝试通过使用监督信息来提高准确性。具体来说,我们采用对抗学习的转移学习。计算实验的结果表明,与传统方法相比,所提出的模型更有效地发现了节点的作用。此外,我们发现,领域不变特征导致更高的准确性,即使在网络大小不同的情况下,该方法也能更好地发现角色,即使网络具有各种结构的节点,该方法也能很好地工作。

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