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A New Perspective on Sexual Mixing among Men Who Have Sex with Men by Body Image

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  • Ka-Kit Leung
  • Horas T H Wong
  • Claire M Naftalin
  • Shui Shan Lee

Abstract

Background: “Casual sex” is seldom as non-selective and random as it may sound. During each sexual encounter, people consciously and unconsciously seek their casual sex partners according to different attributes. Influential to a sexual network, research focusing on quantifying the effects of physical appearance on sexual network has been sparse. Methods: We evaluated the application of Log odds score (LOD) to assess the mixing patterns of 326 men who have sex with men (MSM) in Hong Kong in their networking of casual sex partners by Body Image Type (BIT). This involved an analysis of 1,196 respondents-casual sex partner pairs. Seven BITs were used in the study: Bear, Chubby, Slender, Lean toned, Muscular, Average and Other. Results: A hierarchical pattern was observed in the preference of MSM for casual sex partners by the latter's BIT. Overall, Muscular men were most preferred, followed by Lean toned while the least preferred was Slender, as illustrated by LOD going down along the hierarchy in the same direction. Marked avoidance was found between men who self-identified as Chubby and men of Other body type (within-group-LOD: 1.25–2.89; between-group-LOD:

Suggested Citation

  • Ka-Kit Leung & Horas T H Wong & Claire M Naftalin & Shui Shan Lee, 2014. "A New Perspective on Sexual Mixing among Men Who Have Sex with Men by Body Image," PLOS ONE, Public Library of Science, vol. 9(11), pages 1-5, November.
  • Handle: RePEc:plo:pone00:0113791
    DOI: 10.1371/journal.pone.0113791
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    References listed on IDEAS

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    1. Thomas, Lyn C., 2009. "Consumer Credit Models: Pricing, Profit and Portfolios," OUP Catalogue, Oxford University Press, number 9780199232130.
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