定义旅游研究中情感和心理分析的综合计算方法

IF 3.1 Q2 HOSPITALITY, LEISURE, SPORT & TOURISM
Federica Izzo, Q. Picone
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引用次数: 1

摘要

高性能的计算资源和基于人工智能的工具可以加强旅游研究和营销。然而,在这一领域使用数字技术的正式方法论方法仍然缺失。这项研究工作提出了在旅游研究和营销中定义综合计算方法的初步结果。此外,该论文旨在为利用技术资源和大数据的方法论方法提供指导方针。所提出的研究方法基于在线用户生成内容(UGC)分析,通过基于五大模型、情绪分析和机器学习技术的心理图方法。这项研究得到了高性能计算资源、基于人工智能的工具和用于数据收集、文本分析和心理归因的开源Python软件的支持。结果表明,BFF预测模型具有显著的性能,并证实了个性在游客决策和欣赏景点中的作用。该项目的未来发展包括使用所获得的标记有情感和心理归因的结构化数据集,创建关于旅游细分市场和欣赏的进一步预测模型,作为旅游管理营销战略的一部分。未来的研究应该推动旅游研究和营销中进一步集成和执行基于计算机的方法的发展,利用大量数据和高性能计算技术的潜力。这项研究工作的主要贡献有两方面:定义了通用的BFF/情绪分析方法,并开发了基于旅游研究场景中五大人格特征的在线UGC预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defining an Integrated and Computed Methodology Approach for Sentiment and Psychographic Analysis in Tourism Research
High-performance computational resources and artificial intelligence-based tools can enhance tourism research and marketing. However, a formal methodological approach using digital technologies in this field is still missing. This research work presents the preliminary results of defining an integrated computational methodology in tourism research and marketing. In addition, the paper aims to provide guidelines for a methodological approach leveraging technological resources and Big Data. The proposed research method is based on online User-Generated Content (UGC) analysis through a psychographic approach based on the Big Five Model, Sentiment Analysis, and Machine Learning techniques. The study is supported by high-performance computing resources, artificial intelligence-based tools, and open-source Python-based software for data collection, text analysis, and psychographic attribution. Results show a remarkable performance of the BFF prediction model and confirm the role of personality in the tourists’ decision-making and appreciation of a site. Future developments of this project involve using the acquired structured dataset labeled with sentiment and psychographic attribution to create a further prediction model on tourist segments and appreciation as part of a marketing strategy in tourism management. Future research should push forward the development of further integrated and performing computer-based methodology in tourism research and marketing, leveraging the massive amount of data and the potential of high-performance computing techniques. The main contribution of this research effort is twofold: the definition of a general-purpose BFF/Sentiment Analysis methodology and the development of a prediction model from online UGC based on the Big Five personality traits in the tourism research scenario.
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来源期刊
Journal of Tourism and Services
Journal of Tourism and Services HOSPITALITY, LEISURE, SPORT & TOURISM-
CiteScore
7.80
自引率
16.70%
发文量
14
期刊介绍: Journal of Tourism and Services, established in September 2010, is the international reviewed scientific research journal published by the Center for International Scientific Research of VŠO and VŠPP in cooperation with the following partners. The journal publishes high-quality scientific papers and essays with a focus on tourism and service industry development. Together with the scientific part and in order to promote the exchange of current and innovative ideas and stimulating debate, the Journal also includes Reviews of Existing Work or Short Essays, Research Notes, and Research and Industry sections to address important topics and advance theoretical knowledge or thinking about key areas of tourism and services and to allow researchers to present initial findings and reflections or problems concerning fieldwork and research in general.
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