从大社交数据中提取见解,实现更智能的旅游目的地管理

IF 2.5 Q3 BUSINESS
Gianluca Solazzo, Y. Maruccia, Gianluca Lorenzo, V. Ndou, P. D. Vecchio, G. Elia
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引用次数: 4

摘要

目的本文旨在强调大社会数据(BSD)和分析利用如何帮助目的地管理组织(DMO)了解游客行为、目的地体验和图像。从Flickr和Twitter这两个不同的来源收集数据,使用文本和视觉内容执行不同的分析任务,以深入了解游客行为和目的地形象的情感方面。设计/方法论/方法这项工作采用了一种基于BSD和分析的多模式方法,考虑了多个BSD源,对异构数据类型的不同分析技术,以获得Salento地区(意大利)案例研究的补充结果。发现结果显示,生成的见解使DMO能够获得关于发现未知兴趣点集群的新知识,识别旅游需求的趋势和季节模式,监测主题和情绪,并确定有吸引力的地方。DMO可以利用洞察力来满足其在决策支持方面的需求,以管理和发展目的地,提高目的地吸引力,制定新的营销和沟通策略,以及规划目的地内的游客需求。独创性/价值这项工作的独创性在于使用BSD和分析技术,以深入而广泛的方式为DMO提供关于目的地的具体见解。收集的数据与多模式分析方法一起使用,以构建游客特征、形象、态度和首选目的地属性,这对DMO来说是解决问题、决策、创新和预测的独特手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting insights from big social data for smarter tourism destination management
Purpose This paper aims to highlight how big social data (BSD) and analytics exploitation may help destination management organisations (DMOs) to understand tourist behaviours and destination experiences and images. Gathering data from two different sources, Flickr and Twitter, textual and visual contents are used to perform different analytics tasks to generate insights on tourist behaviour and the affective aspects of the destination image. Design/methodology/approach This work adopts a method based on a multimodal approach on BSD and analytics, considering multiple BSD sources, different analytics techniques on heterogeneous data types, to obtain complementary results on the Salento region (Italy) case study. Findings Results show that the generated insights allow DMOs to acquire new knowledge about discovery of unknown clusters of points of interest, identify trends and seasonal patterns of tourist demand, monitor topic and sentiment and identify attractive places. DMOs can exploit insights to address its needs in terms of decision support for the management and development of the destination, the enhancement of destination attractiveness, the shaping of new marketing and communication strategies and the planning of tourist demand within the destination. Originality/value The originality of this work is in the use of BSD and analytics techniques for giving DMOs specific insights on a destination in a deep and wide fashion. Collected data are used with a multimodal analytic approach to build tourist characteristics, images, attitudes and preferred destination attributes, which represent for DMOs a unique mean for problem-solving, decision-making, innovation and prediction.
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来源期刊
CiteScore
5.70
自引率
4.00%
发文量
25
期刊介绍: Measuring Business Excellence provides international insights into non-financial ways to measure and manage business performance improvements and company’s value creation dynamics. Measuring Business Excellence will enable you to apply best practice, implement innovative thinking and learn how to use different practices. Learn how to use innovative frameworks, approaches and practices for understanding, assessing and managing the strategic value drivers of business excellence. MBE publishes both rigorous academic research and insightful practical experiences about the development and adoption of assessment and management models, tools and approaches to support excellence and value creation of 21st century organizations both private and public.
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