首页> 外文期刊>Journal of Transport Geography >A massive geographically weighted regression model of walking- environment relationships
【24h】

A massive geographically weighted regression model of walking- environment relationships

机译:行走环境关系的大规模地理加权回归模型

获取原文
获取原文并翻译 | 示例
           

摘要

Many studies aim at identifying environmental correlates of walking in order to identify specific potential levers for tackling the medical burden of physical inactivity. The links between environmental characteristics and walking behaviors are usually context specific. While local studies fail to embrace a global overview of these contexts, global studies hide the context scale patterns. In this study, we applied a geographically weighted logistic regression (GWR) on a large area (whole of France) to explore spatial variations of the relations between five environmental variables and walking for leisure and errands purposes among 40,480 French adults. This approach allowed us to adopt a global view of local patterns of relations and to highlight spatial contexts (defined through a clustering of GWR odds ratios) where combinations of correlates varied. Specifically, clustering algorithms on the GWR odds ratios led to 9 and 6 clusters for walking for leisure and errands, respectively. Some clusters were characterized by a particularly strong effect of population density, whereas others exhibited low effect of vegetation cover rate. Chi -squared tests indicated that these clusters were associated with type of urban areas (Paris, major urban poles, periurban areas, small urban poles, isolated areas) for the two types of walking. Beyond its methodological contribution - providing a method to handle large data samples into GWR analyses - this study offers key elements to practitioners and policy makers to target relevant contexts and environmental features for promoting daily walking.
机译:许多研究旨在确定步行与环境的相关性,以便确定解决运动不足的医疗负担的特定潜在杠杆。环境特征和步行行为之间的联系通常取决于具体情况。尽管本地研究未能涵盖这些背景的全球概况,但全球研究隐藏了背景范围模式。在这项研究中,我们在大面积(整个法国)中应用了地理加权逻辑回归(GWR),以探索40,480名法国成年人中五个环境变量与休闲和出差目的步行之间关系的空间变化。这种方法使我们能够采用局部关系模式的全局视图,并突出显示在空间上下文中(通过GWR优势比的聚类定义),其中关联的组合会发生变化。具体来说,基于GWR优势比的聚类算法分别导致休闲和差事行走的9个和6个群集。一些集群的特点是人口密度的影响特别强,而另一些集群的植被覆盖率的影响却很低。卡方检验表明,对于两种类型的步行,这些聚类与市区类型(巴黎,主要市区,郊区地区,小型市区,偏远地区)相关。除了其方法论上的贡献(提供一种将大量数据样本处理到GWR分析中的方法)之外,本研究还为从业人员和决策者提供了关键要素,以针对相关背景和环境特征来促进日常步行。

著录项

  • 来源
    《Journal of Transport Geography》 |2018年第4期|118-129|共12页
  • 作者单位

    Univ Paris 08, LADYSS, UMR 7533, CNRS, 2 Rue Liberte, F-93526 St Denis, France;

    Univ Paris 01, Geog Cites, UMR 8504, CNRS, Paris, France;

    Univ Paris 13, Equipe Rech Epidemiol Nutr, Sorbonne Paris Cite, U1153,Inserm,INRA,CNAM,Ctr Rech Epidemiol &, Bobigny, France;

    Univ Strasbourg, LIVE, UMR 7562, CNRS, Strasbourg, France;

    Inst Syst Complexes Paris Ile de France, Paris, France;

    Univ Paris 13, Equipe Rech Epidemiol Nutr, Sorbonne Paris Cite, U1153,Inserm,INRA,CNAM,Ctr Rech Epidemiol &, Bobigny, France;

    Univ Strasbourg, LIVE, UMR 7562, CNRS, Strasbourg, France;

    Univ Claude Bernard Lyon 1, INSA Lyon, INRA U1235, CRNH Rhone Alpes,Lyon Univ,Lab CarMeN,INSERM,U123, Lyon, France;

    Univ Paris 13, Equipe Rech Epidemiol Nutr, Sorbonne Paris Cite, U1153,Inserm,INRA,CNAM,Ctr Rech Epidemiol &, Bobigny, France;

    Univ Claude Bernard Lyon 1, INSA Lyon, INRA U1235, CRNH Rhone Alpes,Lyon Univ,Lab CarMeN,INSERM,U123, Lyon, France;

    Univ Paris 13, Equipe Rech Epidemiol Nutr, Sorbonne Paris Cite, U1153,Inserm,INRA,CNAM,Ctr Rech Epidemiol &, Bobigny, France;

    Pierre & Marie Curie Univ, Sorbonne Univ, Pitie Salpetriere Hosp, AP HP,Dept Nutr,ICAN, Paris, France;

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

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号