School of Transportation and Geomatics Engineering, Shenyang Jianzhu University, Shenyang, China.
College of Economics and Management, Shenyang Agricultural University, Shenyang, China.
Sci Rep. 2024 Oct 15;14(1):24146. doi: 10.1038/s41598-024-75701-w.
Peer-to-peer accommodation has gained prominence in the sharing economy and e-commerce sectors, with big data playing a crucial role in understanding customer preferences and evaluating homestay satisfaction. This study proposes a novel methodology that integrates Natural Language Processing (NLP) techniques, a Random Forest model, and Geographic Information System (GIS) functionalities to quantify the complex relationship between homestay satisfaction and diverse customer preferences. Notably, this study addresses the positive bias inherent in listing scores by segmenting homestays into three categories (satisfactory, moderate, and dissatisfactory) based on sentiment analysis from online reviews. Furthermore, this study not only identifies eight key determinants of homestay satisfaction but also unveils the nonlinear relationships and interactions between them. More significantly, we identify specific threshold values for geographic determinants, offering actionable recommendations for homestay planning and layout. These findings provide valuable insights that can be leveraged to improve homestay experiences and promote the sustainable development of urban homestays.
点对点住宿在共享经济和电子商务领域越来越受到关注,大数据在理解客户偏好和评估民宿满意度方面发挥着关键作用。本研究提出了一种新的方法,该方法结合了自然语言处理 (NLP) 技术、随机森林模型和地理信息系统 (GIS) 功能,以量化民宿满意度与各种客户偏好之间的复杂关系。值得注意的是,本研究通过对在线评论进行情感分析,将民宿分为(满意、中等、不满意)三类,解决了房源评分中固有的正向偏差问题。此外,本研究不仅确定了民宿满意度的八个关键决定因素,还揭示了它们之间的非线性关系和相互作用。更重要的是,我们确定了地理决定因素的具体阈值,为民宿规划和布局提供了可操作的建议。这些发现提供了有价值的见解,可以用来改善民宿体验,促进城市民宿的可持续发展。