Lu Zekun, Chen Shunhe, Qiu Chao, Chen Rongxiang, Lin Yuchen, Lu Yichen, Xu Ying
College of Arts College of Landscape Architecture, Fujian Agriculture and Forestry University, Fuzhou, Fujian Province, China.
PLoS One. 2025 Aug 13;20(8):e0329118. doi: 10.1371/journal.pone.0329118. eCollection 2025.
In recent years, the impact of landscape environments on tourists' emotions has increasingly become a significant topic in sustainable tourism and urban planning research. However, studies on the relationship between multidimensional environmental features of Coastal National Parks and tourists' emotions remain relatively limited. This study integrates machine learning and multi-source data to systematically explore how the landscape environments of Fujian's Coastal National Parks influence tourists' emotional fluctuations. Using natural language processing (NLP) techniques, sentiment indices were calculated from social media textual data, while semantic segmentation models and image analysis were employed to extract environmental feature data. The Light Gradient Boosting Machine (LightGBM) model and SHapley Additive exPlanations (SHAP) method were used to evaluate the relative importance of different environmental variables on tourists' emotions, with the findings visualized using ArcMap. The results indicate: (1) Over the past five years, 87.06% of emotions were positive, with the highest sentiment indices observed in the Fuyao Islands, Changle, and Xiamen. (2) Greenness (0.0-0.2) and aquatic rate (0.1-0.15) had the most significant positive impacts on emotions, whereas transportation proportion and paving degree had relatively minor effects. This study provides a theoretical basis for the sustainable development of Coastal National Parks and offers practical insights for optimizing landscape planning to enhance tourists' emotional experiences.
近年来,景观环境对游客情绪的影响日益成为可持续旅游和城市规划研究中的一个重要课题。然而,关于沿海国家公园多维环境特征与游客情绪之间关系的研究仍然相对有限。本研究整合机器学习和多源数据,系统地探讨福建沿海国家公园的景观环境如何影响游客的情绪波动。利用自然语言处理(NLP)技术,从社交媒体文本数据中计算情感指数,同时采用语义分割模型和图像分析来提取环境特征数据。使用轻梯度提升机(LightGBM)模型和SHapley加性解释(SHAP)方法评估不同环境变量对游客情绪的相对重要性,并使用ArcMap将结果可视化。结果表明:(1)在过去五年中,87.06%的情绪为积极情绪,在福瑶列岛、长乐和厦门观察到最高的情感指数。(2) 绿度(0.0-0.2)和水域率(0.1-0.15)对情绪有最显著的积极影响,而交通比例和铺装程度的影响相对较小。本研究为沿海国家公园的可持续发展提供了理论依据,并为优化景观规划以提升游客的情感体验提供了实践见解。