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首页> 外文期刊>ISPRS International Journal of Geo-Information >Structured Knowledge Base as Prior Knowledge to Improve Urban Data Analysis
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Structured Knowledge Base as Prior Knowledge to Improve Urban Data Analysis

机译:结构化知识库作为先验知识,可改善城市数据分析

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Urban computing at present often relies on a large number of manually extracted features. This may require a considerable amount of feature engineering, and the procedure may miss certain hidden features and relationships among data items. In this paper, we propose a method to use structured prior knowledge in the form of knowledge graphs to improve the precision and interpretability in applications such as optimal store placement and traffic accident inference. Specifically, we integrate sub-graph feature extraction, sub-knowledge graph gated neural networks, and kernel-based knowledge graph convolutional neural networks as ways of incorporating large urban knowledge graphs into a fully end-to-end learning system. Experiments using data from several large cities showed that our method outperforms the baseline methods.
机译:目前,城市计算通常依赖于大量手动提取的功能。这可能需要大量的特征工程,并且该过程可能会错过某些隐藏的特征以及数据项之间的关系。在本文中,我们提出了一种以知识图形式使用结构化先验知识的方法,以提高应用程序的精度和可解释性,例如最佳商店放置和交通事故推理。具体来说,我们将子图特征提取,子知识图门控神经网络和基于内核的知识图卷积神经网络集成在一起,作为将大型城市知识图纳入完整的端到端学习系统的方式。使用来自几个大城市的数据进行的实验表明,我们的方法优于基线方法。

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