基于 AGCN-WGAN 的数据检索方法

Geng Sun, Guotao Peng, Xiaolei Tian, Lu Li, Yuqi Zhao, Yue Wang
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摘要

传统的知识图谱检索技术忽略了节点关系权重,难以实现有针对性的检索。因此,本文充分发挥图卷积网络(Graph Convolutional Networks,GCN)和生成对抗网络(Generative Adversarial Networks,GAN)的优势,提出了一种非线性模型 AGCN-WGAN 来解决关系网络中的检索任务。首先,利用 AGCN 捕捉单个节点的局部拓扑特征;此外,GAN 的使用增强了 AGCN 模型生成合理权重分布图的能力,有效提取了节点间的相关性,从而提高了模型处理大规模数据检索任务的性能。为了验证该方法的有效性,使用了某城市电网真实业务场景中的调度运行数据进行实验。实验结果表明,与现有方法相比,所提出的数据检索方法的准确性有了显著提高。
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A Data Retrieval Method Based on AGCN-WGAN
Traditional knowledge graph retrieval techniques ignore node relationship weights, making it difficult to achieve targeted retrieval. Therefore, a nonlinear model AGCN-WGAN is proposed to solve retrieval tasks in relational networks, fully utilizing the advantages of Graph Convolutional Networks (GCN) and Generative Adversarial Networks (GAN). Firstly, AGCN is used to capture the local topological features of a single node; In addition, the use of GAN enhances the ability of AGCN models to generate reasonable weight distribution maps, effectively extracting correlations between nodes, thereby improving the performance of the model in handling large-scale data retrieval tasks. In order to verify the effectiveness of the method, the dispatching operation data in a real business scenario of a city power grid is used for experiments. The experimental results show that the proposed data retrieval method has significantly improved accuracy compared to existing methods.
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