Two-Condition Within-Participant Statistical Mediation Analysis: A Path-Analytic Framework

被引:728
作者
Montoya, Amanda K. [1 ]
Hayes, Andrew F. [1 ]
机构
[1] Ohio State Univ, Dept Psychol, 1827 Neil Ave Mall, Columbus, OH 43210 USA
基金
美国国家科学基金会;
关键词
mediation; indirect effect; path analysis; within-participant design; resampling methods; MODERATED MEDIATION; CONFIDENCE-LIMITS; TESTING MEDIATION; LONGITUDINAL DATA; MODELS; PRODUCT; PERFORMANCE; DEPRESSION; REGRESSION; NUTRITION;
D O I
10.1037/met0000086
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
Researchers interested in testing mediation often use designs where participants are measured on a dependent variable Y and a mediator M in both of 2 different circumstances. The dominant approach to assessing mediation in such a design, proposed by Judd, Kenny, and McClelland (2001), relies on a series of hypothesis tests about components of the mediation model and is not based on an estimate of or formal inference about the indirect effect. In this article we recast Judd et al.' s approach in the path-analytic framework that is now commonly used in between-participant mediation analysis. By so doing, it is apparent how to estimate the indirect effect of a within-participant manipulation on some outcome through a mediator as the product of paths of influence. This path-analytic approach eliminates the need for discrete hypothesis tests about components of the model to support a claim of mediation, as Judd et al.' s method requires, because it relies only on an inference about the product of paths-the indirect effect. We generalize methods of inference for the indirect effect widely used in between-participant designs to this within-participant version of mediation analysis, including bootstrap confidence intervals and Monte Carlo confidence intervals. Using this path-analytic approach, we extend the method to models with multiple mediators operating in parallel and serially and discuss the comparison of indirect effects in these more complex models. We offer macros and code for SPSS, SAS, and Mplus that conduct these analyses.
引用
收藏
页码:6 / 27
页数:22
相关论文
共 70 条
[1]  
[Anonymous], 2000, MULT APPL BK SER
[2]   THE MODERATOR MEDIATOR VARIABLE DISTINCTION IN SOCIAL PSYCHOLOGICAL-RESEARCH - CONCEPTUAL, STRATEGIC, AND STATISTICAL CONSIDERATIONS [J].
BARON, RM ;
KENNY, DA .
JOURNAL OF PERSONALITY AND SOCIAL PSYCHOLOGY, 1986, 51 (06) :1173-1182
[3]   Conceptualizing and testing random indirect effects and moderated mediation in multilevel models: New procedures and recommendations [J].
Bauer, Daniel J. ;
Preacher, Kristopher J. ;
Gil, Karen M. .
PSYCHOLOGICAL METHODS, 2006, 11 (02) :142-163
[4]   Assessing Mediational Models: Testing and Interval Estimation for Indirect Effects [J].
Biesanz, Jeremy C. ;
Falk, Carl F. ;
Savalei, Victoria .
MULTIVARIATE BEHAVIORAL RESEARCH, 2010, 45 (04) :661-701
[5]  
Bollen K.A., 1990, SOCIOL METHODOL, V20, P15, DOI 10.2307/271084
[6]   A commentary on current practice in mediating variable analyses in behavioural nutrition and physical activity [J].
Cerin, Ester ;
MacKinnon, David P. .
PUBLIC HEALTH NUTRITION, 2009, 12 (08) :1182-1188
[7]   Investigation of mediational processes using parallel process latent growth curve modeling [J].
Cheong, J ;
MacKinnon, DP ;
Khoo, ST .
STRUCTURAL EQUATION MODELING-A MULTIDISCIPLINARY JOURNAL, 2003, 10 (02) :238-262
[8]   Ambient Belonging: How Stereotypical Cues Impact Gender Participation in Computer Science [J].
Cheryan, Sapna ;
Plaut, Victoria C. ;
Davies, Paul G. ;
Steele, Claude M. .
JOURNAL OF PERSONALITY AND SOCIAL PSYCHOLOGY, 2009, 97 (06) :1045-1060
[9]   Testing mediational models with longitudinal data: Questions and tips in the use of structural equation modeling [J].
Cole, DA ;
Maxwell, SE .
JOURNAL OF ABNORMAL PSYCHOLOGY, 2003, 112 (04) :558-577
[10]   Instrumentality Boosts Appreciation: Helpers Are More Appreciated While They Are Useful [J].
Converse, Benjamin A. ;
Fishbach, Ayelet .
PSYCHOLOGICAL SCIENCE, 2012, 23 (06) :560-566