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Where to Build New Public Toilets? Multi-Source Urban Data Tell the Truth

机译:在哪里建造新的公共厕所?多源城市数据讲述真相

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As cities undergo rapid sprawl and urbanization, it is commonly becoming a difficult task to find public toilets available. Building new public toilets becomes a promising way to alleviate this issue. However, where to build new public toilets is challenging. Traditionally, urban planners rely on empirical experience and surveys to understand the local toilet demand, which is unreliable and also time and labor-consuming. In this paper, we propose a data-driven approach to tackle the site selection problem of public toilets. Specifically, we propose a two-phase framework to discover knowledge from existing public toilets and use them to guide future planning and construction. In the first phase, we identify the candidate areas for new public toilets based on human mobility, land use, urban structure, and etc. In the second phase, we propose a learning-to-rank method to predict the demand level of the candidate areas and identify the optimal sites for placing new public toilets by simply ranking. Our approach combines the geographic characteristics of the city with mobility patterns of human activity by considering human activity, area functionality, road network, and the toileting demand of taxi drivers. Finally, we evaluate our approach by using multiple datasets including the taxi GPS trajectory data, POI data, and road network data in the real world from the city of Chongqing, China. The experimental results demonstrate the effectiveness of our proposed method.
机译:随着城市经历迅速的蔓延和城市化,常常成为找到公共厕所的艰巨任务。建立新的公共厕所成为缓解这个问题的有希望的方式。但是,建造新的公共厕所是挑战的。传统上,城市规划师依靠实证经验和调查来了解当地的厕所需求,这是不可靠的,也是时间和劳动。在本文中,我们提出了一种数据驱动方法来解决公共厕所的网站选择问题。具体而言,我们提出了一个两相框架,以发现现有公共厕所的知识,并使用它们来引导未来的规划和建设。在第一阶段,我们根据人类流动,土地利用,城市结构等,确定新的公共厕所的候选地区,我们提出了一种学习 - 排名方法来预测候选人的需求水平区域并确定通过简单排名将新的公共厕所放置最佳场所。我们的方法通过考虑人类活动,面积功能,道路网络和出租车司机的厕所需求,将城市的地理特征与人类活动的流动模式相结合。最后,我们通过在中国重庆市的现实世界中使用包括出租车GPS轨迹数据,POI数据和道路网络数据的多个数据集来评估我们的方法。实验结果表明了我们提出的方法的有效性。

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