ISSN 1671-3710
CN 11-4766/R
主办:中国科学院心理研究所
出版:科学出版社

心理科学进展 ›› 2021, Vol. 29 ›› Issue (8): 1331-1344.doi: 10.3724/SP.J.1042.2021.01331

• 主编特邀 •    下一篇

新世纪20年国内心理统计方法研究回顾

温忠麟1(), 方杰2, 沈嘉琦1, 谭倚天1, 李定欣1, 马益铭1   

  1. 1华南师范大学心理学院/心理应用研究中心, 广州 510631
    2广东财经大学人文与传播学院, 广州 510320
  • 收稿日期:2021-03-11 发布日期:2021-06-25
  • 通讯作者: 温忠麟 E-mail:wenzl@scnu.edu.cn
  • 基金资助:
    国家自然科学基金项目(31771245);国家社会科学基金项目(17BTJ035)

A review of research on psychological statistics in China’s mainland from 2001 to 2020

WEN Zhonglin1(), FANG Jie2, SHEN Jiaqi1, TAN Yitian1, LI Dingxin1, MA Yiming1   

  1. 1Center for Studies of Psychological Application & School of Psychology, South China Normal University, Guangzhou 510631, China
    2School of Humanities and Communication, Guangdong University of Finance & Economics, Guangzhou 510320, China
  • Received:2021-03-11 Published:2021-06-25
  • Contact: WEN Zhonglin E-mail:wenzl@scnu.edu.cn

摘要:

新世纪头20年, 国内心理学11本专业期刊一共发表了213篇统计方法研究论文。研究范围主要包括以下10类(按论文篇数排序):结构方程模型、测验信度、中介效应、效应量与检验力、纵向研究、调节效应、探索性因子分析、潜在类别模型、共同方法偏差和多层线性模型。对各类做了简单的回顾与梳理。结果发现, 国内心理统计方法研究的广度和深度都不断增加, 研究热点在相互融合中共同发展; 但综述类论文比例较大, 原创性研究论文比例有待提高, 研究力量也有待加强。

关键词: 心理统计, 文献计量, 内容分析

Abstract:

A total of 213 articles on psychological statistical methods have been published in 11 journals of psychology in Mainland China from 2001 to 2020. There are mainly 10 areas attractive to researchers (sorted by the number of papers): structural equation models (SEM), test reliability, mediation effect, effect size and testing power, longitudinal study, moderation effect, exploratory factor analysis, latent class analysis, common method bias and hierarchical linear models.
Research on structural equation models (with confirmatory factor analysis model as a special case) explore five major aspects: model fit evaluation, model estimation, item parceling, measurement invariance and the extensions of SEM. The last aspect includes exploratory structural equation modeling, factor mixture modeling, high-order factor modeling as well as bifactor modeling. Articles on exploratory factor analysis focus on factor extraction. Modern reliability analysis is inextricably linked with factor models, including three main topics: distinction between coefficientα and internal consistency or homogeneity, confidence interval estimation of composite reliability and homogeneity coefficient, and reliability of multilevel data and longitudinal data. Common method bias is also based on factor analysis and studied in three aspects: the relationship between common method bias and common method variance, the influence of common method bias, and the comparison of approaches for testing and controlling common method bias.
Studies on mediation effects can be summarized in four topics: testing approaches and their comparison, mediation effect size, mediation effect testing for categorical variables, and the extensions of mediation models. The simple mediation model was extended to multilevel or multiple mediation models, moderated mediation models and mediated moderation models, as well as mediation models of longitudinal data. Articles on moderation effects mainly explore three issues: the development of latent interaction models from those with mean structure to those without mean structure, and the change from latent interaction models with product indicators to those without product indicators, as well as standardized estimates of latent moderating effect models.
Articles on longitudinal data analysis fall into three main groups. The first is the development of models, which includes hierarchical linear models, latent growth models and its mixture models, piecewise growth models and its mixture models, etc. The second is the development of longitudinal data collecting methods, which include intensive longitudinal and accelerated longitudinal design. The last is missing data handing methods of longitudinal data. Hierarchical linear models were studied in three directions: aggregation adequacy testing used in aggregating the ratings of individual level to team level, hierarchical linear model of categorical variables as outcome variables (including multilevel binomial and multilevel multinomial logit models), hierarchical linear modeling of latent variables (i.e., multilevel structural equation model).
Research on latent class models investigates three main topics: the use of latent class analysis, latent profile analysis and Taxometric techniques in probing latent class structure; precision of classification; regression mixture model (i.e., latent class model including covariates).
Both effect size and testing power are closely associated with hypothesis testing, and studies in this area introduce types and characteristics of effect size, calculation of testing power, alternative approaches and their supplements for testing null hypothesis significance.

Key words: psychological statistics, bibliometric analysis, content analysis

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