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首页> 外文期刊>ACM transactions on multimedia computing communications and applications >A~2 CMHNE: Attention-Aware Collaborative Multimodal Heterogeneous Network Embedding
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A~2 CMHNE: Attention-Aware Collaborative Multimodal Heterogeneous Network Embedding

机译:A〜2 CMHNE:注意感知的协作多模式异构网络嵌入

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摘要

Network representation learning is playing an important role in network analysis due to its effectiveness in a variety of applications. However, most existing network embedding models focus on homogeneous networks and neglect the diverse properties such as different types of network structures and associated multimedia content information. In this article, we learn node representations for multimodal heterogeneous networks, which contain multiple types of nodes and/or links as well as multimodal content such as texts and images. We propose a novel attention-aware collaborative multimodal heterogeneous network embedding method (A(2)CMHNE), where an attention-based collaborative representation learning approach is proposed to promote the collaboration of structure-based embedding and content-based embedding, and generate the robust node representation by introducing an attention mechanism that enables informative embedding integration. In experiments, we compare our model with existing network embedding models on two real-world datasets. Our method leads to dramatic improvements in performance by 5%, and 9% compared with five state-of-the-art embedding methods on one benchmark (M10 Dataset), and on a multi-modal heterogeneous network dataset (WeChat dataset) for node classification, respectively. Experimental results demonstrate the effectiveness of our proposed method on both node classification and link prediction tasks.
机译:网络表示学习由于其在各种应用程序中的有效性而在网络分析中发挥着重要作用。但是,大多数现有的网络嵌入模型都集中在同构网络上,而忽略了各种属性,例如不同类型的网络结构和关联的多媒体内容信息。在本文中,我们将学习多模式异构网络的节点表示形式,其中包含多种类型的节点和/或链接以及多模式内容,例如文本和图像。我们提出了一种新颖的注意力感知协作多模式异构网络嵌入方法(A(2)CMHNE),其中提出了一种基于注意力的协作表示学习方法,以促进基于结构的嵌入和基于内容的嵌入的协作,并生成通过引入启用信息集成集成的注意力机制来实现强大的节点表示。在实验中,我们将我们的模型与两个真实世界数据集上的现有网络嵌入模型进行了比较。与在一个基准(M10数据集)和节点的多模式异构网络数据集(WeChat数据集)上的五种最先进的嵌入方法相比,我们的方法将性能显着提高了5%和9%。分类。实验结果证明了我们提出的方法对节点分类和链接预测任务的有效性。

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