Equation for Attractiveness: Integrating Multidimensional Factors Through Computational Neuroaesthetics.

IF 2 3区 医学 Q2 SURGERY Aesthetic Plastic Surgery Pub Date : 2024-08-26 DOI:10.1007/s00266-024-04304-7
Eqram Rahman, Shabnam Sadeghi Esfahlani, Parinitha Rao, William Richard Webb
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Abstract

Background: Understanding the multifaceted nature of attractiveness (A), which encompasses physical beauty (PB), genuineness (GEN), self-confidence (SC), and prior experience (RE), is crucial for various domains, including psychology and clinical aesthetics. Previous studies have often isolated specific elements, failing to capture their intricate interplay. This study aims to develop a comprehensive equation for attractiveness using computational neuroaesthetics.

Method: The study began with a pilot study involving 250 participants (50 experts and 200 laypersons) who prerated 500 facial images on a Likert scale for traits such as physical beauty, genuineness, self-confidence, and perceived prior experience. Following the pilot, the main study recruited 11,780 participants through diverse media channels to rate a new set of 1,000 facial images. Advanced computational techniques, including multiple linear regression and Bayesian hierarchical modelling, were employed to analyse the data and formulate an attractiveness equation.

Results: The analysis identified genuineness as the most significant factor, followed by physical beauty, self-confidence, and prior experience. The proposed equation for attractiveness, refined through Bayesian modelling, is: A = β 0 + ( β 1 · PB + β 2 · GEN + β 3 · SC + β 4 · PE ) + ϵ A = 1.82 + ( 0.34 · PB + 0.44 · GEN + 0.26 · SC + 0.16 · PE ) + ϵ 0 is the intercept; β1, β2, β3, β4 are the coefficients for each factor; and ϵ is the error term) CONCLUSION: The findings underscore the paramount importance of psychological traits in attractiveness assessments, suggesting a shift from purely physical enhancements to holistic interventions in clinical settings. This model provides a robust framework for understanding attractiveness and has potential applications in psychology, marketing, and AI.

Level of evidence iv: This journal requires that authors assign a level of evidence to each article. For a full description of these Evidence-Based Medicine ratings, please refer to the Table of Contents or the online Instructions to Authors www.springer.com/00266 .

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吸引力方程:通过计算神经美学整合多维因素。
背景:吸引力(A)包括外貌美(PB)、真诚(GEN)、自信(SC)和先前经验(RE),了解吸引力(A)的多面性对包括心理学和临床美学在内的各个领域都至关重要。以往的研究往往将特定元素孤立开来,无法捕捉到它们之间错综复杂的相互作用。本研究旨在利用计算神经美学建立一个全面的吸引力方程:本研究首先进行了一项试验性研究,250 名参与者(50 名专家和 200 名普通人)按照李克特量表对 500 张面部图像的外貌美、真实性、自信心和感知的先前经验等特征进行了评分。试点研究结束后,主要研究通过各种媒体渠道招募了 11,780 名参与者,对一组新的 1,000 张面部图像进行评分。研究采用了先进的计算技术,包括多元线性回归和贝叶斯分层模型,对数据进行分析,并制定了吸引力方程:分析结果表明,真诚是最重要的因素,其次是外貌美、自信和先前的经验。通过贝叶斯模型改进后的吸引力方程为 A = β 0 + ( β 1 - PB + β 2 - GEN + β 3 - SC + β 4 - PE ) + ϵ A = 1.82 + ( 0.34 - PB + 0.44 - GEN + 0.26 - SC + 0.16-PE)+ ϵ(β0 为截距;β1、β2、β3、β4 为各因子系数;ϵ 为误差项)结论:研究结果强调了心理特征在吸引力评估中的极端重要性,表明在临床环境中,应从纯粹的身体提升转向全面干预。该模型为理解吸引力提供了一个强大的框架,并有可能应用于心理学、市场营销和人工智能领域。证据级别iv:本期刊要求作者为每篇文章指定一个证据级别。有关这些循证医学等级的完整描述,请参阅目录或在线作者须知 www.springer.com/00266 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.40
自引率
25.00%
发文量
479
审稿时长
3 months
期刊介绍: Aesthetic Plastic Surgery is a publication of the International Society of Aesthetic Plastic Surgery and the official journal of the European Association of Societies of Aesthetic Plastic Surgery (EASAPS), Società Italiana di Chirurgia Plastica Ricostruttiva ed Estetica (SICPRE), Vereinigung der Deutschen Aesthetisch Plastischen Chirurgen (VDAPC), the Romanian Aesthetic Surgery Society (RASS), Asociación Española de Cirugía Estética Plástica (AECEP), La Sociedad Argentina de Cirugía Plástica, Estética y Reparadora (SACPER), the Rhinoplasty Society of Europe (RSE), the Iranian Society of Plastic and Aesthetic Surgeons (ISPAS), the Singapore Association of Plastic Surgeons (SAPS), the Australasian Society of Aesthetic Plastic Surgeons (ASAPS), the Egyptian Society of Plastic and Reconstructive Surgeons (ESPRS), and the Sociedad Chilena de Cirugía Plástica, Reconstructiva y Estética (SCCP). Aesthetic Plastic Surgery provides a forum for original articles advancing the art of aesthetic plastic surgery. Many describe surgical craftsmanship; others deal with complications in surgical procedures and methods by which to treat or avoid them. Coverage includes "second thoughts" on established techniques, which might be abandoned, modified, or improved. Also included are case histories; improvements in surgical instruments, pharmaceuticals, and operating room equipment; and discussions of problems such as the role of psychosocial factors in the doctor-patient and the patient-public interrelationships. Aesthetic Plastic Surgery is covered in Current Contents/Clinical Medicine, SciSearch, Research Alert, Index Medicus-Medline, and Excerpta Medica/Embase.
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