Modeling body size information within weight labels using probability distributions.

IF 2.2 3区 心理学 Q2 PSYCHOLOGY, EXPERIMENTAL
Thomas Chazelle, Michel Guerraz, Richard Palluel-Germain
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引用次数: 0

Abstract

What images of bodies do we associate with thinness and fatness? Can our representations of weight-related words be described by simple probability distributions? To answer these questions, the present study examined participants' perceptions of a set of weight-related words using a pictural scale. 259 French women indicated the thinnest, fattest, and best-fitting figures for 13 words. We then used their responses to construct PERT probability distributions, simple skewed distributions allowing to visualize what body sizes were associated with each word. In particular, the variability of the distributions showed how different weight labels can have more or less precise meanings. We found some evidence that the lowest body mass index associated with a label shifted towards thinner figures as body dissatisfaction increased. Using the same method, we investigated the boundaries of what participants consider the ideal body, and showed that the inclusion of their own body in these boundaries predicted their levels of body dissatisfaction. We argue that PERT distributions can be a useful, easy-to-use tool in body image research for modeling the representations of weight labels in different populations.

Abstract Image

利用概率分布对体重标签中的体型信息进行建模。
我们将哪些身体形象与瘦和胖联系在一起?我们对体重相关词汇的表征可以用简单的概率分布来描述吗?为了回答这些问题,本研究使用图形量表考察了参与者对一组体重相关词汇的看法。259 名法国女性为 13 个单词标出了最瘦、最胖和最合适的数字。然后,我们利用她们的回答构建了 PERT 概率分布,通过这种简单的倾斜分布可以直观地看出每个词与哪些体型相关。特别是,分布的可变性显示了不同的体重标签可能具有或多或少的精确含义。我们发现有证据表明,随着对身体不满意度的增加,与标签相关的最低体重指数会向更瘦的体型转移。使用同样的方法,我们调查了参与者所认为的理想身材的界限,结果表明,将他们自己的身材纳入这些界限可以预测他们对身体的不满意程度。我们认为,在身体形象研究中,PERT 分布可以作为一种有用且易于使用的工具,用于模拟不同人群中体重标签的表现形式。
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来源期刊
CiteScore
5.10
自引率
8.70%
发文量
137
期刊介绍: Psychological Research/Psychologische Forschung publishes articles that contribute to a basic understanding of human perception, attention, memory, and action. The Journal is devoted to the dissemination of knowledge based on firm experimental ground, but not to particular approaches or schools of thought. Theoretical and historical papers are welcome to the extent that they serve this general purpose; papers of an applied nature are acceptable if they contribute to basic understanding or serve to bridge the often felt gap between basic and applied research in the field covered by the Journal.
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