Jinzhong University, Jinzhong 030619, Shanxi, China.
Universiti Sains Malaysia, Gelugor 11800, Penang, Malaysia.
Comput Intell Neurosci. 2022 Jul 19;2022:6120511. doi: 10.1155/2022/6120511. eCollection 2022.
In our study, through consulting, summarizing, and analyzing a large number of related literature studies on tourism consumer behavior, tourism big data, text data analysis, and so on, a framework of research ideas on tourism consumption was constructed. The train browser, NLPIR, and other software packages are used to crawl, preprocess, and mine the travel sample data, and the word frequency analysis, co-occurrence analysis, content analysis, sentiment analysis, network analysis, and other methods are used to analyze the characteristics and decision-making behavior of tourists. Based on the results of behavioral analysis, we proposed tourism development strategies from three aspects: reforming and promoting tourism marketing strategies, improving tourism product and service quality, and improving tourism destination management methods. The results show that (1) for the tourist characteristics, taking into account the factors of climate and geographical location, the domestic market is divided into four grades of markets, and different marketing strategies are adopted according to different market characteristics; (2) for the tourism decision-making behavior, a "push-pull resistance" tourism decision-making model was established through word frequency analysis, co-occurrence analysis, and content analysis; (3) for the tourism consumption preferences, through network analysis of scenic spots, it is found that there are three tourist routes preferred by tourists; and (4) for the tourism perception evaluation behavior, based on the "cognitive-emotional" model, this study describes the tourism image from the two dimensions of the cognitive image and emotional image. Generally speaking, tourists show a positive perception state. The research on tourism consumer behavior based on UGC (user-generated content) data can help scenic spots and other tourism companies to understand the characteristics and rules of tourists' behavior, understand the consumption preferences of different tourism groups, develop diversified tourism products, improve the quality of tourism services, and further cater to market segments. This research provides a new idea for tourist attractions and tourism management departments to monitor tourist behavior through big data analysis.
在本研究中,通过咨询、总结和分析大量与旅游消费者行为、旅游大数据、文本数据分析等相关的文献研究,构建了一个旅游消费研究思路框架。利用火车浏览器、NLPIR 等软件包对旅游样本数据进行爬取、预处理和挖掘,运用词频分析、共词分析、内容分析、情感分析、网络分析等方法,分析游客的特征和决策行为。基于行为分析的结果,从旅游营销战略改革与推广、旅游产品与服务质量提升、旅游目的地管理方法改进三个方面提出了旅游发展策略。研究结果表明:(1)对于游客特征,考虑气候和地理位置因素,将国内市场分为四级市场,并根据不同市场特点采用不同的营销策略;(2)对于旅游决策行为,通过词频分析、共词分析和内容分析建立了“推拉阻力”旅游决策模型;(3)对于旅游消费偏好,通过对景点的网络分析,发现了游客偏好的三条旅游线路;(4)对于旅游感知评价行为,基于“认知-情感”模型,从认知形象和情感形象两个维度描述旅游形象。总体而言,游客表现出积极的感知状态。基于 UGC(用户生成内容)数据的旅游消费者行为研究可以帮助景区等旅游企业了解游客行为的特征和规律,了解不同旅游群体的消费偏好,开发多元化的旅游产品,提高旅游服务质量,进一步迎合市场细分。本研究为景区和旅游管理部门通过大数据分析监测游客行为提供了新思路。