Understanding and Modeling Visitor Behaviours for Enhancing Personalized Cultural Experiences

Author:

Pandolfo Laura1ORCID,Spanu Sara2,Pulina Luca1,Grosso Enrico1

Affiliation:

1. University of Sassari, Sassari, Italy

2. University of Milano Bicocca, Milano, Italy

Abstract

Nowadays, there is an increasing interest in using adaptive technologies in cultural heritage sites to personalize and enhance the user's visit experience. However, personalizing the cultural experiences is still a challenging task that requires a deep knowledge of those user aspects that influence the visit. In order to facilitate the learning process during the visit, adaptive systems should consider differences between individuals for personalizing access to cultural heritage collections. This article calls into question the role that technologies can play both to enhance a user's visit experience and to attract new audiences through personalized interactions with cultural objects. It addresses a specific understanding of visitors' needs and behaviours by means of empirical data collected through a survey questionnaire. Knowing the main factors underlying visitors' styles it allowed formalization of this knowledge into a user model ontology which collects the main visitors' characteristics in the use of cultural heritage contexts.

Publisher

IGI Global

Subject

Human-Computer Interaction,Information Systems

Reference40 articles.

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2. Antoniou, A., Katifori, A., Roussou, M., Vayanou, M., Karvounis, M., Kyriakidi, M., & Pujol-Tost, L. (2016). Capturing the visitor profile for a personalized mobile museum experience: an indirect approach. In Proceedings of the 1st international workshop on human aspects in adaptive and personalized interactive environments (HAPPIE) held in conjunction with ACM UMAP 2016. Academic Press.

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