可预测性
中国
地理
城市公园
随机森林
户外活动
城市形态
人口
环境资源管理
环境规划
城市规划
体力活动
生态学
环境科学
计算机科学
人口学
社会学
统计
考古
机器学习
物理医学与康复
生物
医学
数学
标识
DOI:10.1080/01426397.2024.2387174
摘要
As the urban population continues growing and residents prioritise the green and healthy aspects of cities, urban parks are facing unprecedented pressure in terms of usage. Through physical activity survey and landscape morphology qualifying from urban parks in Nanjing, China, this study conducted predictive analysis on 5 activity classification patterns and 14 specific physical activities, by employing random forest and gradient-boosting tree classification models. Our findings indicate that classification based on gender and outdoor activity items exhibited superior average prediction accuracy. Moreover, among the 14 activities, better prediction results were obtained for activities such as rest, collective, female, children, and intimate activities. This research explores the potential for extending studies from the correlation between activity and environment to prediction, offering valuable insights to enhance the interactive analysis between park landscape design and environmental behaviour. Ultimately, it aims to promote the efficient utilisation of urban park environments.
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