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Mining point-of-interest data from social networks for urban land use classification and disaggregation

机译:从社会网络挖掘兴趣点数据,用于城市土地利用分类和分解

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摘要

Over the last few years, much online volunteered geographic information (VGI) has emerged and has been increasingly analyzed to understand places and cities, as well as human mobility and activity. However, there are concerns about the quality and usability of such VGI. In this study, we demonstrate a complete process that comprises the collection, unification, classification and validation of a type of VGI—online point-of-interest (POI) data—and develop methods to utilize such POI data to estimate disaggregated land use (i.e., employment size by category) at a very high spatial resolution (census block level) using part of the Boston metropolitan area as an example. With recent advances in activity-based land use, transportation, and environment (LUTE) models, such disaggregated land use data become important to allow LUTE models to analyze and simulate a person’s choices of work location and activity destinations and to understand policy impacts on future cities. These data can also be used as alternatives to explore economic activities at the local level, especially as government-published census-based disaggregated employment data have become less available in the recent decade. Our new approach provides opportunities for cities to estimate land use at high resolution with low cost by utilizing VGI while ensuring its quality with a certain accuracy threshold. The automatic classification of POI can also be utilized for other types of analyses on cities.
机译:在过去的几年中,已经出现了许多在线自愿性地理信息(VGI),并且已经对其进行了越来越多的分析,以了解地方和城市以及人们的流动性和活动性。但是,这种VGI的质量和可用性令人担忧。在这项研究中,我们演示了一个完整的过程,其中包括对一种VGI(在线兴趣点(POI)数据)的收集,统一,分类和验证,并开发出利用此类POI数据估算土地分类用途的方法(例如,以波士顿大都市区的一部分为例,以非常高的空间分辨率(人口普查区级)划分类别的就业人数)。随着基于活动的土地使用,运输和环境(LU​​TE)模型的最新进展,这种分类的土地使用数据对于使LUTE模型能够分析和模拟人员对工作地点和活动目的地的选择以及了解政策对未来的影响变得非常重要。城市。这些数据也可以用作在地方一级探索经济活动的替代方法,尤其是在最近十年中,政府发布的基于人口普查的分类就业数据越来越少的情况下。我们的新方法为城市提供了机会,通过利用VGI以低成本以高分辨率估算土地使用量,同时以一定的准确性阈值确保其质量。 POI的自动分类还可以用于城市的其他类型的分析。

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