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Discussion Paper

Translating knowledge into interventions: An ‘individual by context’ approach to bullying

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Pages 245-267 | Received 24 Sep 2018, Accepted 19 Dec 2018, Published online: 17 Jan 2019
 

ABSTRACT

Bullying affects a considerable number of children and adolescents, with serious consequences for school performance, health and emotional well-being. To understand bullying a promising approach is the individual by context approach, which implies that social contexts can either attenuate or exacerbate the effect of individual characteristics on bullying behaviour. Within this interactional framework, the paper reviews studies which lie at the intersection between two research areas, bullying knowledge and anti-bullying interventions research. Specifically, studies that show how the relation between individual vulnerability and bullying is moderated by class norms, peer behaviours and teacher interventions will be discussed. Following these results, translation implications will be analysed focusing on: 1) studies evaluating interventions which aim to change peer behaviours and class norms; 2) studies investigating the circumstances under which an intervention may work or not; and 3) studies focusing on the effectiveness of an intervention in relation to the different target population.

Disclosure statement

No potential conflict of interest was reported by the author.

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