与强化学习的无监督对抗网络对齐

Yang Zhou, Jiaxiang Ren, R. Jin, Zijie Zhang, Jingyi Zheng, Zhe Jiang, Da Yan, D. Dou
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引用次数: 11

摘要

网络对齐以学习多个信息网络中相同实体之间的匹配为目标,经常面临特征不一致、高维特征、对齐结果不稳定等问题。本文提出了一种新的网络对齐框架,基于无监督对抗学习的网络对齐(UANA),它结合了生成对抗网络(GAN)和强化学习(RL)技术来解决上述关键挑战。首先,我们提出了一种双向对抗性网络分布匹配模型,在两个网络之间进行双向跨网络对齐平移,使真实网络和平移网络的分布完全重合。此外,构造了两个跨网络的对齐平移周期,用于训练无监督对齐,而不需要事先的对齐知识。其次,为了解决特征不一致问题,我们将双对抗性自编码器模块与对抗性二元分类模型集成在一起,将具有高维不一致特征的相同顶点的两个副本投影到相同的低维嵌入空间中。这有利于对抗性网络分布匹配模型中两个网络分布的转换。最后,我们开发了一种基于强化学习的优化方法来解决GAN模型离散空间中的顶点匹配问题,即直接选择目标网络中与源网络中顶点最相关的顶点,而不需要对判别特征和相似度指标敏感的不稳定相似性计算。对真实世界图形数据集的广泛评估证明了UANA在解决无监督网络对齐问题方面的卓越能力,无论是在有效性还是可扩展性方面。
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Unsupervised Adversarial Network Alignment with Reinforcement Learning
Network alignment, which aims at learning a matching between the same entities across multiple information networks, often suffers challenges from feature inconsistency, high-dimensional features, to unstable alignment results. This article presents a novel network alignment framework, Unsupervised Adversarial learning based Network Alignment(UANA), that combines generative adversarial network (GAN) and reinforcement learning (RL) techniques to tackle the above critical challenges. First, we propose a bidirectional adversarial network distribution matching model to perform the bidirectional cross-network alignment translations between two networks, such that the distributions of real and translated networks completely overlap together. In addition, two cross-network alignment translation cycles are constructed for training the unsupervised alignment without the need of prior alignment knowledge. Second, in order to address the feature inconsistency issue, we integrate a dual adversarial autoencoder module with an adversarial binary classification model together to project two copies of the same vertices with high-dimensional inconsistent features into the same low-dimensional embedding space. This facilitates the translations of the distributions of two networks in the adversarial network distribution matching model. Finally, we develop an RL based optimization approach to solve the vertex matching problem in the discrete space of the GAN model, i.e., directly select the vertices in target networks most relevant to the vertices in source networks, without unstable similarity computation that is sensitive to discriminative features and similarity metrics. Extensive evaluation on real-world graph datasets demonstrates the outstanding capability of UANA to address the unsupervised network alignment problem, in terms of both effectiveness and scalability.
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