It Won’t Happen to Me: An Examination of the Effectiveness of Defensive Attribution in Rape Victim Blaming


Journal article


Caitlin M. Pinciotti, H. Orcutt
Violence against women, 2020

Semantic Scholar DOI PubMed
Cite

Cite

APA   Click to copy
Pinciotti, C. M., & Orcutt, H. (2020). It Won’t Happen to Me: An Examination of the Effectiveness of Defensive Attribution in Rape Victim Blaming. Violence against Women.


Chicago/Turabian   Click to copy
Pinciotti, Caitlin M., and H. Orcutt. “It Won’t Happen to Me: An Examination of the Effectiveness of Defensive Attribution in Rape Victim Blaming.” Violence against women (2020).


MLA   Click to copy
Pinciotti, Caitlin M., and H. Orcutt. “It Won’t Happen to Me: An Examination of the Effectiveness of Defensive Attribution in Rape Victim Blaming.” Violence against Women, 2020.


BibTeX   Click to copy

@article{caitlin2020a,
  title = {It Won’t Happen to Me: An Examination of the Effectiveness of Defensive Attribution in Rape Victim Blaming},
  year = {2020},
  journal = {Violence against women},
  author = {Pinciotti, Caitlin M. and Orcutt, H.}
}

Abstract

Defensive attribution posits that victim blame results from one’s underlying perception of vulnerability. The resulting blame is believed to reduce perceived similarity to the victim and vulnerability to victimization, though extant research has neglected to examine its effectiveness in men and women. The current study employed multigroup analysis structural equation modeling with 618 male and female undergraduates exposed to fictional police reports of a reported rape. The theory was partially supported; among women, defensive attribution of blame effectively reduced perceived vulnerability to sexual victimization, whereas among men, blame had no effect on perceived similarity or vulnerability. Recommendations for interventions to target perceived vulnerability are discussed.


Share



Follow this website


You need to create an Owlstown account to follow this website.


Sign up

Already an Owlstown member?

Log in