88858cc永利官网
舊版入口
|
English
科研動态
張江玥(博士生)、蘇世亮的論文在APPLIED GEOGRAPHY刊出
發布時間:2024-09-30     發布者:易真         審核者:任福     浏覽次數:

标題: Scrutinizing the cultural ecosystem services of Chinese Classical Gardens: A novel deep learning approach based on online reviews from a multisensory perspective

作者: Zhang, JY (Zhang, Jiangyue); Luo, Y (Luo, Yun); Cao, HJ (Cao, Haojie); Su, SL (Su, Shiliang)

來源出版物: APPLIED GEOGRAPHY : 172 文獻号: 103404 DOI: 10.1016/j.apgeog.2024.103404 Early Access Date: SEP 2024 Published Date: 2024 NOV

摘要: The cultural ecosystem services (CESs)-related studies for decades have centered on the visual connotations of human perceptions rather than incorporating the other sensory experiences. This paper works to narrow the research gaps through scrutinizing the CESs of Chinese Classical Gardens from a multisensory perspective. We first demonstrate a qualitative phenomenological approach to conceptualizing the CES typologies of Chinese Classical Gardens, and then propose a novel deep learning approach to measuring their CESs based on online reviews from the lens of five senses. Following, the inter-relationships among the CESs are examined using co- occurrence network analysis. Results show that the CESs typologies of Chinese Classical Gardens include 7 main categories and 21 minor classes. Among them, the visual perception based CESs make up the highest proportion, but a noteworthy proportion of hearing, touch and taste based CESs is also observed. Additionally, the visual perception based CESs and auditory perception based CESs generally present higher centrality within the networked typology. Based on the discoveries, we finally discuss implications for landscape management. This paper foregrounds the effectiveness and feasibility of scrutinizing CESs from a multisensory perspective, and adds fuels to unpack the full spectrum of CESs for the geographical community.

作者關鍵詞: Cultural ecosystem services; Sensory experience; Textual data mining; Deep learning; Social media; Narrative texts; Green amenities

地址: [Zhang, Jiangyue; Luo, Yun; Cao, Haojie; Su, Shiliang] Wuhan Univ, Sch Resource & Environm Sci, Urban Comp & Visualizat Lab, Wuhan, Peoples R China.

通訊作者地址: Su, SL (通訊作者)129 Luoyu Rd, Wuhan, Hubei, Peoples R China.

電子郵件地址: shiliangsu@163.com

影響因子:4


Baidu
sogou