Recommender systems for outdoor adventure tourism sports: hiking, running and climbing
Recommender systems for outdoor adventure tourism sports: hiking, running and climbing
Adventure tourism is a popular and growing segment within the tourism industry that involves, but is not limited to, hiking, running, and climbing activities. These activities attract investment from foreign travelers interested in practicing sports while exploring other countries. As a result, many software companies started developing Artificial Intelligence solutions to enhance tourists’ outdoor adventure experience. One of the leading technologies in this field is recommender systems, which provide personalized recommendations to tourists based on their preferences. While this topic is actively being researched in some sports (running and hiking), other adventure sports disciplines have yet to be fully explored. To standardize the development of intelligence-based recommender systems, we conducted a systematic literature review on more than a thousand scientific papers published in decision support system applications in three outdoor adventure sports, such as running, hiking, and sport climbing. Hence, the main focus of this work is, firstly, to summarize the state-of-the-art methods and techniques being researched and developed by scientists in recommender systems in adventure tourism, secondly, to provide a unified methodology for software solutions designed in this domain, and thirdly, to give further insights into open possibilities in this topic. This literature survey serves as a unified framework for the future development of technologies in adventure tourism. Moreover, this paper seeks to guide the development of more effective and personalized recommendation systems.
Ivanova, Iustina
a3c631ce-aed1-4c77-a47e-7df0b8db611f
Wald, Michael
90577cfd-35ae-4e4a-9422-5acffecd89d5
18 July 2023
Ivanova, Iustina
a3c631ce-aed1-4c77-a47e-7df0b8db611f
Wald, Michael
90577cfd-35ae-4e4a-9422-5acffecd89d5
Ivanova, Iustina and Wald, Michael
(2023)
Recommender systems for outdoor adventure tourism sports: hiking, running and climbing.
Human-Centric Intelligent Systems.
(doi:10.1007/s44230-023-00033-3).
Abstract
Adventure tourism is a popular and growing segment within the tourism industry that involves, but is not limited to, hiking, running, and climbing activities. These activities attract investment from foreign travelers interested in practicing sports while exploring other countries. As a result, many software companies started developing Artificial Intelligence solutions to enhance tourists’ outdoor adventure experience. One of the leading technologies in this field is recommender systems, which provide personalized recommendations to tourists based on their preferences. While this topic is actively being researched in some sports (running and hiking), other adventure sports disciplines have yet to be fully explored. To standardize the development of intelligence-based recommender systems, we conducted a systematic literature review on more than a thousand scientific papers published in decision support system applications in three outdoor adventure sports, such as running, hiking, and sport climbing. Hence, the main focus of this work is, firstly, to summarize the state-of-the-art methods and techniques being researched and developed by scientists in recommender systems in adventure tourism, secondly, to provide a unified methodology for software solutions designed in this domain, and thirdly, to give further insights into open possibilities in this topic. This literature survey serves as a unified framework for the future development of technologies in adventure tourism. Moreover, this paper seeks to guide the development of more effective and personalized recommendation systems.
Text
s44230-023-00033-3
- Version of Record
More information
Accepted/In Press date: 20 June 2023
Published date: 18 July 2023
Identifiers
Local EPrints ID: 479884
URI: http://eprints.soton.ac.uk/id/eprint/479884
PURE UUID: 5e165777-d02f-4a24-bd1d-483c5fcd3c00
Catalogue record
Date deposited: 28 Jul 2023 16:39
Last modified: 17 Mar 2024 03:35
Export record
Altmetrics
Contributors
Author:
Iustina Ivanova
Author:
Michael Wald
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics