Department of Psychology, The Pennsylvania State University, PA, USA.
J Abnorm Psychol. 2012 Aug;121(3):699-706. doi: 10.1037/a0029042. Epub 2012 Jun 25.
This article examines the relationship between personality disorder (PD) symptoms and personality traits using a variety of distributional assumptions. Prior work in this area relies almost exclusively on linear models that treat PD symptoms as normally distributed and continuous. However, these assumptions rarely hold, and thus the results of prior studies are potentially biased. Here we explore the effect of varying the distributions underlying regression models relating PD symptomatology to personality traits using the initial wave of the Longitudinal Study of Personality Disorders (N=250; Lenzenweger, 1999), a university-based sample selected to include PD rates resembling epidemiological samples. PD symptoms were regressed on personality traits. The distributions underlying the dependent variable (i.e., PD symptoms) were variously modeled as normally distributed, as counts (Poisson, Negative-Binomial), and with two-part mixture distributions (zero-inflated, hurdle). We found that treating symptoms as normally distributed resulted in violations of model assumptions, that the negative-binomial and hurdle models were empirically equivalent, but that the coefficients achieving significance often differ depending on which part of the mixture distributions are being predicted (i.e., presence vs. severity of PD). Results have implications for how the relationship between normal and abnormal personality is understood.
本文使用各种分布假设检验人格障碍(PD)症状与人格特质之间的关系。该领域的先前工作几乎完全依赖于将 PD 症状视为正态分布和连续的线性模型。然而,这些假设很少成立,因此先前研究的结果可能存在偏差。在这里,我们使用人格障碍纵向研究的第一波数据(N=250;Lenzenweger,1999)探索了改变与人格特质相关的回归模型中潜在分布对 PD 症状的影响,该研究是基于大学的样本,旨在包括类似于流行病学样本的 PD 发病率。PD 症状被回归到人格特质上。因变量(即 PD 症状)的分布被分别建模为正态分布、计数(泊松、负二项式)和两部分混合分布(零膨胀、障碍)。我们发现,将症状视为正态分布会违反模型假设,负二项式和障碍模型在经验上是等效的,但达成显著水平的系数往往因预测的混合分布部分而异(即 PD 的存在与严重程度)。结果对如何理解正常人格和异常人格之间的关系具有启示意义。