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Understanding Place Characteristics in Geographic Contexts through Graph Convolutional Neural Networks

机译:通过图卷积神经网络了解地理背景中的地方特征

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Inferring the unknown properties of a place relies on both its observed attributes and the characteristics of the places to which it is connected. Because place characteristics are unstructured and the metrics for place connections can be diverse, it is challenging to incorporate them in a spatial prediction task where the results could be affected by how the neighborhoods are delineated and where the true relevance among places is hard to identify. To bridge the gap, we introduce graph convolutional neural networks (GCNNs) to model places as a graph, where each place is formalized as a node, place characteristics are encoded as node features, and place connections are represented as the edges. GCNNs capture the knowledge of the relevant geographic context by optimizing the weights among graph neural network layers. A case study was designed in the Beijing metropolitan area to predict the unobserved place characteristics based on the observed properties and specific place connections. A series of comparative experiments was conducted to highlight the influence of different place connection measures on the prediction accuracy and to evaluate the predictability across different characteristic dimensions. This research enlightens the promising future of GCNNs in formalizing places for geographic knowledge representation and reasoning.
机译:推断地点的未知属性依赖于其观察到的属性和它所连接的地方的特征。因为地方特征是非结构化的,并且可以多样化地连接的度量,因此在空间预测任务中将它们纳入了结果可能会受到邻域如何被描绘的影响以及地方之间的真正相关性难以识别的情况存在挑战。为了弥合差距,我们将图形卷积神经网络(GCNNS)引入模型位置作为图形,其中每个地方被形式化为节点,将特性被编码为节点特征,并且将连接作为边缘表示。 GCNN通过优化图形神经网络层之间的权重来捕获相关地理上下文的知识。在北京大都市地区设计了一个案例研究,以预测基于观察到的特性和特定的地点的未观察到的地方特征。进行了一系列比较实验以突出不同地方连接措施对预测精度的影响,并评估不同特征尺寸的可预测性。本研究启示了GCNN在正式化地理知识表示和推理中的未来未来。

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