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Two different approaches to the affective profiles model: median splits (variable-oriented) and cluster analysis (person-oriented)

机译:情感档案模型的两种不同方法:中位数拆分(面向变量)和聚类分析(面向人)

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摘要

>Background. The notion of the affective system as being composed of two dimensions led Archer and colleagues to the development of the affective profiles model. The model consists of four different profiles based on combinations of individuals’ experience of high/low positive and negative affect: self-fulfilling, low affective, high affective, and self-destructive. During the past 10 years, an increasing number of studies have used this person-centered model as the backdrop for the investigation of between and within individual differences in ill-being and well-being. The most common approach to this profiling is by dividing individuals’ scores of self-reported affect using the median of the population as reference for high/low splits. However, scores just-above and just-below the median might become high and low by arbitrariness, not by reality. Thus, it is plausible to criticize the validity of this variable-oriented approach. Our aim was to compare the median splits approach with a person-oriented approach, namely, cluster analysis.>Method. The participants (N = 2, 225) were recruited through Amazons’ Mechanical Turk and asked to self-report affect using the Positive Affect Negative Affect Schedule. We compared the profiles’ homogeneity and Silhouette coefficients to discern differences in homogeneity and heterogeneity between approaches. We also conducted exact cell-wise analyses matching the profiles from both approaches and matching profiles and gender to investigate profiling agreement with respect to affectivity levels and affectivity and gender. All analyses were conducted using the ROPstat software.>Results. The cluster approach (weighted average of cluster homogeneity coefficients = 0.62, Silhouette coefficients = 0.68) generated profiles with greater homogeneity and more distinctive from each other compared to the median splits approach (weighted average of cluster homogeneity coefficients = 0.75, Silhouette coefficients = 0.59). Most of the participants (n = 1,736, 78.0%) were allocated to the same profile (Rand Index = .83), however, 489 (21.98%) were allocated to different profiles depending on the approach. Both approaches allocated females and males similarly in three of the four profiles. Only the cluster analysis approach classified men significantly more often than chance to a self-fulfilling profile (type) and females less often than chance to this very same profile (antitype).>Conclusions. Although the question whether one approach is more appropriate than the other is still without answer, the cluster method allocated individuals to profiles that are more in accordance with the conceptual basis of the model and also to expected gender differences. More importantly, regardless of the approach, our findings suggest that the model mirrors a complex and dynamic adaptive system.
机译:>背景。情感系统由二维构成,这一概念使Archer及其同事开始开发情感档案模型。该模型由四个不同的配置文件组成,这些配置文件基于个人对高/低正面和负面影响的体验的组合:自我实现,低情感,高情感和自我毁灭。在过去的十年中,越来越多的研究使用这种以人为中心的模型作为调查疾病和福祉的个体差异之间和之内的背景。进行此剖析的最常见方法是,使用人群的中位数作为高/低分割的参考,对个人的自我报告的情感得分进行划分。但是,中位数正上方和正下方的分数可能会因任意性而不是现实而变得高低。因此,批评这种面向变量的方法的有效性是合理的。我们的目的是将中位数分裂方法与面向人的方法(即聚类分析)进行比较。>方法。参与者(N = 2,225)是通过亚马逊的Mechanical Turk招募的,并要求他们自我-使用“正面影响”负面影响时间表报告影响。我们比较了配置文件的同质性和Silhouette系数,以发现方法之间同质性和异质性的差异。我们还进行了精确的细胞分析,以匹配两种方法中的配置文件以及匹配的配置文件和性别,以调查关于情感水平,情感和性别的分析协议。所有分析均使用ROPstat软件进行。>结果。聚类方法(聚类均一性系数的加权平均值= 0.62,Silhouette系数= 0.68)所生成的轮廓具有更高的同质性,并且彼此之间的区别也更大。中位数分裂法(群集均一性系数的加权平均值= 0.75,轮廓系数= 0.59)。大多数参与者(n = 1,736,78.0%)被分配到相同的配置文件(兰德指数= .83),但是,根据方法,有489个(21.98%)被分配到不同的配置文件。两种方法在四个配置文件中的三个配置文件中分配女性和男性的比例相似。只有聚类分析方法才将男性分类为自我实现型(类型)的机会多于机会,而将女性分类为同一自我型(反型)的机会则多于机会。>结论。这种方法比另一个仍然没有答案的方法更合适,聚类方法将个人分配给个人资料,这些个人资料更符合模型的概念基础,并且符合预期的性别差异。更重要的是,无论采用哪种方法,我们的发现都表明该模型反映了一个复杂而动态的自适应系统。

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