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Delineating urban functional use from points of interest data with neural network embedding: A case study in Greater London

机译:划定与神经网络嵌入的兴趣点数据中的城市功能使用:在大伦敦的案例研究

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Delineating urban functional use plays a key role in understanding urban dynamics, evaluating planning strategies and supporting policymaking. In recent years, Points of Interest (POI) data, with precise geolocation and detailed attributes, have become the primary data source for exploring urban functional use from a bottom-up perspective, using local, highly disaggregated, big datasets. Previous studies using POI data have given insufficient consideration to the relationship among POI classes in the spatial context, and have failed to provide a straightforward means by which to classify urban functional areas. This study proposes an approach for delineating urban functional use at the scale of the Lower Layer Super Output Area (LSOA) in Greater London by integrating the Doc2Vec model, a neural network embedding method commonly used in natural language processing for vectoring words and documents from their context. In this study, the neural network vectorises both POI classes ('Word') and urban areas ('Document') based on their functional context by learning features from the spatial distribution of POIs in the city. Specifically, we first construct POI sequences based on the distribution of POI classes, and add their LSOA IDs as 'document' tags. By utilising these constructed POI-LSOA sequences, the Doc2Vec model trains the vectors of 574 POI classes (word vectors) and 4836 LSOAs (document vectors). The vectors of POI classes are then used in calculating the functional similarity scores based on their cosine distance, with the vectors of LSOAs grouped into clusters (i.e., functional areas) via the k-means clustering algorithm. We also identify latent functions in each cluster of LSOAs by performing topic modelling and enrichment factor. Compared with TF-IDF, LDA and Word2Vec models, the Doc2Vec model obtains the highest accuracy when classifying functional areas. This study proposes a straightforward approach in which the model directly trains vectors for urban areas, subsequently using them to classify urban functional areas. By employing the enhanced neural network model with low-cost and ubiquitous POI datasets, this study provides a potential tool with which to monitor urban dynamics in a timely and adaptive manner, thereby providing enhanced, datadriven support to urban planning, development and management.
机译:划定城市功能使用在理解城市动态,评估规划战略和支持政策制度方面发挥着关键作用。近年来,兴趣点(POI)数据,具有精确的地理位置和详细属性,已成为探索城市功能使用的主要数据源,从自下而上的角度使用本地,高度分列的大数据集。以前的使用POI数据的研究已经给出了空间背景中POI类之间的关系的不充分考虑,并且未能提供对城市功能区域进行分类的简单装置。本研究提出了一种通过集成DOC2VEC模型,通过集成DOC2VEC模型来描绘大伦敦下层超级输出区域(LSOA)的规模的方法,该方法是一种常用于自然语言处理的神经网络嵌入方法,用于矢量单词和文字的自然语言处理语境。在这项研究中,神经网络通过从城市中POI的空间分布的学习功能,根据其功能背景,VISIC网络向导具体地,我们首先根据POI类的分布来构建POI序列,并将其LSOA ID添加为“文档”标签。通过利用这些构建的POI-LSOA序列,DOC2VEC模型列举了574 POI类(字矢量)和4836 LSOA(文献向量)的矢量。然后使用POI类的载体基于它们的余弦距离计算功能相似度得分,通过K-Means聚类算法将LSOA的载体分组成簇(即功能区域)。我们还通过执行主题建模和富集因子来识别每个LSOA群集中的潜在功能。与TF-IDF,LDA和Word2VEC模型相比,DOC2VEC模型在分类功能区域时获得最高精度。本研究提出了一种直接的方法,其中模型直接培训城市地区的向量,随后使用它们来分类城市功能区域。通过采用具有低成本和普遍存在的POI数据集的增强的神经网络模型,本研究提供了一种潜在的工具,可以及时监测城市动态,从而为城市规划,开发和管理提供增强的数据支持。

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