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引用次数: 0
摘要
男性-女性(M-F)统计指数将与性别有关的特征的多变量概况概括为个体差异的单一连续统一体中从男性到女性的位置。这种方法可以追溯到性别差异研究的早期;然而,一直以来都缺乏对其他 M-F 指数(包括它们的含义、相互关系和心理测量学特性)的系统性讨论。在本文中,我提出了男性-女性统计评估的综合理论框架,并为希望将这些方法应用于其数据的研究人员提供了实用指导。我描述了四种基本的男性-女性指数:性别方向性、性别典型性、性别概率和性别中心性。我将详细研究它们的异同,并考虑计算它们的其他方法。接下来,我将讨论测量误差对这些指数有效性的影响,并概述一些可能的补救措施。最后,我选择了一些关于身体形态、大脑形态和性格的真实世界数据集来说明本文提出的概念。我们提供了一个 R 函数,可以轻松地从经验数据中计算出多个 M-F 指数(无论是否修正了测量误差),并绘制出这些指数的个体分布和联合分布的汇总图。
Statistical indices of masculinity-femininity: A theoretical and practical framework.
Statistical indices of masculinity-femininity (M-F) summarize multivariate profiles of sex-related traits as positions on a single continuum of individual differences, from masculine to feminine. This approach goes back to the early days of sex differences research; however, a systematic discussion of alternative M-F indices (including their meaning, their mutual relations, and their psychometric properties) has been lacking. In this paper I present an integrative theoretical framework for the statistical assessment of masculinity-femininity, and provide practical guidance to researchers who wish to apply these methods to their data. I describe four basic types of M-F indices: sex-directionality, sex-typicality, sex-probability, and sex-centrality. I examine their similarities and differences in detail, and consider alternative ways of computing them. Next, I discuss the impact of measurement error on the validity of these indices, and outline some potential remedies. Finally, I illustrate the concepts presented in the paper with a selection of real-world datasets on body morphology, brain morphology, and personality. An R function is available to easily calculate multiple M-F indices from empirical data (with or without correction for measurement error) and draw summary plots of their individual and joint distributions.
期刊介绍:
ACS Applied Energy Materials is an interdisciplinary journal publishing original research covering all aspects of materials, engineering, chemistry, physics and biology relevant to energy conversion and storage. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important energy applications.