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ARTICLES

A conceptual model for nostalgia in the context of sport tourism: re-classifying the sporting past

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Pages 145-167 | Received 25 Aug 2014, Accepted 20 Mar 2015, Published online: 05 May 2015
 

Abstract

The concept of nostalgia is complex and difficult to measure, in part because of its diverse emotional perspectives. Various authors have attempted to classify aspects of nostalgia to further describe this phenomenon and understand its broader application. However, the nostalgia that sports fans experience, particularly in a tourist context, appears to be unique from its other types and forms. This difference is in part because the relationship between sport – and, by extension, sport-related travel – and nostalgia appears to be distinct. To address this issue, this paper provides a classification and a conceptual model to clarify the concept of nostalgia in the context of sport tourism. Specifically, this research suggests a four-way classification of nostalgia in sport tourism: (1) experience, (2) socialization, (3) personal identity, and (4) group identity. In addition, the conceptual model shows the process of the development of nostalgia by emphasizing the importance of the types of experience. The classification and model suggested in this paper are important for future empirical research to accurately measure the concept of nostalgia and to understand it in the context of sport tourism.

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