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Original Papers

Towards typologies of virtual maltreatment: sport, digital cultures & dark leisure

, &
Pages 783-796 | Received 10 May 2016, Accepted 18 Jul 2016, Published online: 11 Aug 2016
 

Abstract

A changing technological context, specifically that of the growth of social media, is transforming aspects of leisure behaviour, especially in terms of negative interactions between followers of sport and athletes. There is a growing body of research into the maltreatment of adult athletes, exploring issues such as abusive acts or behaviours against the individual, including acts of physical and/or psychological violence to the person. Existing research, however, focuses upon face-to-face behaviours, and to date the nature of abuse in online spaces has been overlooked. It is becoming ever more apparent that virtual environments create optimal climates for abuse to occur due to the ability for individuals to communicate in an instantaneous, uncontrolled and often anonymous manner in virtual worlds. Using a netnographic approach, an analysis of a popular social media platform (Twitter) was conducted to examine the types of abuse present in online environments. This paper presents a conceptual typology, identifying four broad types of abuse in this setting; physical, sexual, emotional and discriminatory; examples of each form are presented. Findings highlight how online environments can pose a significant risk to individual emotional and psychological safety.

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