A Picture-based Approach to Travel Recommender Systems

Authors: 
Julia Neidhardt
Type: 
Speech without proceedings
Proceedings: 
Publisher: 
Distinguished Speakers: Oxford Women in Computer Science. Department of Computer Science. University of Oxford, Oxford, UK
Pages: 
ISBN: 
Year: 
2020
Abstract: 
http://www.cs.ox.ac.uk/seminars/2331.html<br> <br> Personalized recommendations strongly rely on an accurate model to capture user preferences. Eliciting this information is, in general, a hard problem. In the field of tourism, this initial profiling becomes even more challenging. It has been shown that particularly in the beginning of the travel decision making process, users themselves are often not conscious of their needs and are not able to express them. Aiming at revealing implicitly given user preferences, this work introduces an approach that utilizes a set of travel related pictures to discover users´ travel behavior and in turn, to deliver recommendations. Next, a more general approach based on convolutional neural networks is introduced, where any set of pictures can be used to characterize both travelers and tourism destinations. This talk discusses a stream of studies to quantify intangible user preferences and to provide easy and playful methods to generate inputs/data for recommendation systems.
TU Focus: 
Information and Communication Technology
Reference: 

J. Neidhardt:
"A Picture-based Approach to Travel Recommender Systems";
Vortrag: Distinguished Speakers: Oxford Women in Computer Science. Department of Computer Science. University of Oxford, Oxford, UK (eingeladen); 24.01.2020.

Zusätzliche Informationen

Last changed: 
09.01.2021 06:46:14
TU Id: 
294112
Accepted: 
Accepted
Invited: 
Department Focus: 
Business Informatics
Abstract German: 
Author List: 
J. Neidhardt