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首页> 外文期刊>Computers,environment and urban systems >Beyond Word2vec: An approach for urban functional region extraction and identification by combining Place2vec and POIs
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Beyond Word2vec: An approach for urban functional region extraction and identification by combining Place2vec and POIs

机译:超越Word2vec:结合Place2vec和POI进行城市功能区提取和识别的方法

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摘要

The actual functions of a region may not reflect the intent of the original zoning scheme from planners. To identify the actual urban functional regions, numerous methods have been proposed with computational advancement. Specifically, remote sensing by image recognition, geodemographic classification, social sensing with big data and geo-text mining techniques have been widely applied. Points-of-interest (POIs) are one of the most common open-access data type used to extract information pertaining to functional zones. However, previous works have either lost sight or did not make full use of the spatial interactions that can be extracted from POIs due to model limitations in the context of geographical space. In this research, we introduced an approach that detects functional regions at the scale of a neighborhood area (NA) by combining POI data and a simplified Place2vec model, which is theorized from the first law of geography. First, the POI-based spatial context is constructed by using the nearest neighbor approach. Then, we can increase the number of training tuples (t(center), t(context)) based on the weight derived from the distance between the POI t(center) and POI t(context). Next, high-dimensional characteristic vectors of the POIs are extracted by using the skip-gram training framework. By summarizing the POI vectors at the NA level, we employ a K-means clustering model to cluster the functional regions. Compared with other probabilistic topic models (PTMs) and Word2vec, the Place2vec-based approach obtained the highest mean reciprocal rank value (MRR-S-WP = 0.356, MRR-S-LC= 0.401, MRR-S-JC = 0.433, and MRR-S-Lin= 0.421) in terms of similarity capturing performance and functional region identification accuracy (OA= 0.7424). The research has important implications to urban planning and governance.
机译:一个区域的实际功能可能无法反映计划者最初的分区方案的意图。为了识别实际的城市功能区,随着计算的进步,已经提出了许多方法。具体而言,通过图像识别,地理人口统计分类,具有大数据的社会传感和地理文本挖掘技术的遥感已得到广泛应用。兴趣点(POI)是最常见的开放式访问数据类型之一,用于提取与功能区有关的信息。但是,由于地理空间环境中的模型限制,先前的工作要么看不见,要么没有充分利用可以从POI中提取的空间相互作用。在这项研究中,我们引入了一种方法,该方法通过结合POI数据和简化的Place2vec模型来检测邻近区域(NA)范围内的功能区域,该模型是根据地理第一定律推论得出的。首先,通过使用最近邻居方法构造基于POI的空间上下文。然后,我们可以基于从POI t(中心)和POI t(上下文)之间的距离得出的权重来增加训练元组的数量(t(中心),t(上下文))。接下来,通过使用跳过语法训练框架来提取POI的高维特征向量。通过在NA级别上汇总POI向量,我们采用K-均值聚类模型对功能区域进行聚类。与其他概率主题模型(PTM)和Word2vec相比,基于Place2vec的方法获得了最高的平均倒数排名值(MRR-S-WP = 0.356,MRR-S-LC = 0.401,MRR-S-JC = 0.433和就相似性捕获性能和功能区域识别精度而言,MRR-S-Lin = 0.421)(OA = 0.7424)。该研究对城市规划和治理具有重要意义。

著录项

  • 来源
    《Computers,environment and urban systems》 |2019年第3期|1-12|共12页
  • 作者单位

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Int Ctr Adaptat & Design iAdapt, Gainesville, FL 32611 USA;

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Ctr Hlth & Built Environm, Gainesville, FL 32611 USA;

    Southeast Univ, Sch Architecture, Nanjing, Jiangsu, Peoples R China;

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Int Ctr Adaptat & Design iAdapt, Gainesville, FL 32611 USA;

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Int Ctr Adaptat & Design iAdapt, Gainesville, FL 32611 USA|Shanghai Jiao Tong Univ, China Inst Urban Governance, Shanghai, Peoples R China;

    Tsinghua Univ, Sch Architecture, Beijing, Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Urban Functional Regions; Place2vec; POIs; Geo-Text Mining; Machine Learning;

    机译:城市功能区Place2vec POIs文本挖掘机器学习;

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