基于异质意见驱动的在线评论中不同旅游需求游客选择决策支持模型

A heterogeneous opinion-driven decision-support model for tourists’ selection with different travel needs in online reviews

Journal of the Operational Research Society · 2022
被引 25 · 同刊同年前 8%
ABS 3

中文导读

利用加纳餐厅在线评论,通过无监督机器学习提取因素和属性,结合改进的PL-LINMAP和PL-MARCOS模型,为不同旅游群体提供餐厅选择决策支持,帮助管理者理解异质偏好。

Abstract

The advancement of tourism websites has greatly improved the travelling experiences of tourists. One such way is the recommendation of restaurants by tourism websites. As a result, online restaurant reviews have grown tremendously in recent times. Using online reviews of restaurants in Ghana, this article deeply examines tourists’ restaurant experiences. Specifically, we employ unsupervised machine learning techniques such as Term Frequency-Inverse Document Frequency (TF-IDF) and K-means algorithms to detect restaurant factors and evaluation attributes. We further develop an improved probabilistic linguistic linear programming technique for multidimensional analysis of preference (PL-LINMAP) to derive the attributes’ weight importance for different tourist groups. Additionally, we propose an uncertain decision-support model known as probabilistic linguistic Measurement Alternatives and Ranking according to the COmpromise Solution (PL-MARCOS) to aid different tourist groups in satisfactory restaurant selection. This study provides a comprehensive model for restaurant managers in understanding heterogeneous tourist preferences.

旅游管理在线评论分析决策支持系统机器学习应用餐厅推荐