Difference between revisions of "Research Area: Recommender Systems in Tourism"

From The IFITT Wiki Platform for eTourism
Jump to: navigation, search
Line 1: Line 1:
<div align="right">''[http://wiki.ifitt.org/index.php/E-tourism_Knowledge_Map <- back to IFITT eTourism Knowledge Map]''</div>
<div align="right">''[http://wiki.ifitt.org/index.php/E-Tourism_Institutions <- e-Tourism Institutions]''</div>  
<div align="right">''[http://wiki.ifitt.org/index.php/E-tourism_research <-- back to overview of e-Tourism research areas]''</div>[[File:IFITT_eTourismKnowledgeMap_LOW-RES_20.jpg|link=http://wiki.ifitt.org/index.php/E-tourism_Knowledge_Map]]
<div align="right">''[http://wiki.ifitt.org/index.php/E-tourism_research <- e-Tourism Research Areas]''</div>
<div align="right">''[http://wiki.ifitt.org/index.php/E-tourism_education <- e-Tourism Education Programs]''</div>[[File:IFITT_eTourismKnowledgeMap_LOW-RES_20.jpg|link=http://wiki.ifitt.org/index.php/E-tourism_Knowledge_Map]]
'''Description of this research area'''
'''Description of this research area'''

Latest revision as of 09:50, 25 September 2015

<- e-Tourism Institutions
<- e-Tourism Research Areas
<- e-Tourism Education Programs
IFITT eTourismKnowledgeMap LOW-RES 20.jpg

Description of this research area

Recommender Systems (RSs) are information search and filtering tools that provide suggestions for items to be of use to a user. They have become common in a large number of Internet applications, helping users to make better choices while searching for news, music, vacations or financial investments. RSs exploit data mining and information retrieval techniques to predict to what extent an item suits the user needs and wants and recommend those items with the largest predicted fit score. Tourism applications have focussed on recommending: destinations, activities, accommodations and routes.



Free University of Bozen


Prof. Dr. Francesco Ricci

Research projects in this research area

RECOM - Recommendation trends and roadmap

Publications published by this institute characterizing this research area

Braunhofer, M., Elahi, M., & Ricci, F. (2015). User Personality and the New User Problem in a Context-Aware Point of Interest Recommender System. In Information and Communication Technologies in Tourism 2015 (pp. 537-549). Springer International Publishing.

Ricci, F. (2010). Mobile recommender systems. Information Technology & Tourism, 12(3), 205-231.

Mahmood, T., Ricci, F., & Venturini, A. (2009). Improving recommendation effectiveness: Adapting a dialogue strategy in online travel planning. Information Technology & Tourism, 11(4), 285-302.