Distributional assumptions of growth mixture models: implications for overextraction of latent trajectory classes.

Growth mixture models are often used to determine if subgroups exist within the population that follow qualitatively distinct developmental trajectories. However, statistical theory developed for finite normal mixture models suggests that latent trajectory classes can be estimated even in the absence of population heterogeneity if the distribution of the repeated measures is nonnormal. By drawing on this theory, this article demonstrates that multiple trajectory classes can be estimated and appear optimal for nonnormal data even when only 1 group exists in the population. Further, the within-class parameter estimates obtained from these models are largely uninterpretable. Significant predictive relationships may be obscured or spurious relationships identified. The implications of these results for applied research are highlighted, and future directions for quantitative developments are suggested.

[1]  D. Nagin,et al.  Trajectories of boys' physical aggression, opposition, and hyperactivity on the path to physically violent and nonviolent juvenile delinquency. , 1999, Child development.

[2]  Kenneth A. Bollen,et al.  An alternative two stage least squares (2SLS) estimator for latent variable equations , 1996 .

[3]  K. Pearson Contributions to the Mathematical Theory of Evolution , 1894 .

[4]  Katherine E. Masyn,et al.  General growth mixture modeling for randomized preventive interventions. , 2001, Biostatistics.

[5]  Jstor Journal of the Royal Statistical Society. Series A (General) , 1987 .

[6]  William Meredith,et al.  Latent curve analysis , 1990 .

[7]  H. Sorenson,et al.  Recursive bayesian estimation using gaussian sums , 1971 .

[8]  K. Roeder,et al.  A SAS Procedure Based on Mixture Models for Estimating Developmental Trajectories , 2001 .

[9]  A. Satorra,et al.  Power of the likelihood ratio test in covariance structure analysis , 1985 .

[10]  L. Chassin,et al.  Binge drinking trajectories from adolescence to emerging adulthood in a high-risk sample: predictors and substance abuse outcomes. , 2002, Journal of consulting and clinical psychology.

[11]  L. Frank The Society for Research in Child Development , 1935 .

[12]  Bengt Muthén,et al.  General Longitudinal Modeling of Individual Differences in Experimental Designs: A Latent Variable Framework for Analysis and Power Estimation , 1997 .

[13]  K. Bollen,et al.  Improper Solutions in Structural Equation Models , 2001 .

[14]  B. Muthén,et al.  Finite Mixture Modeling with Mixture Outcomes Using the EM Algorithm , 1999, Biometrics.

[15]  L. Singh,et al.  Vocabulary growth in late talkers: lexical development from 2;0 to 3;0 , 2000, Journal of Child Language.

[16]  K. Pearson Contributions to the Mathematical Theory of Evolution. II. Skew Variation in Homogeneous Material , 1895 .

[17]  B. Muthén Latent variable modeling in heterogeneous populations , 1989 .

[18]  G. Govaert,et al.  Choosing models in model-based clustering and discriminant analysis , 1999 .

[19]  A. Cohen,et al.  Estimation in Mixtures of Two Normal Distributions , 1967 .

[20]  G. Verbeke,et al.  A Linear Mixed-Effects Model with Heterogeneity in the Random-Effects Population , 1996 .

[21]  Anthony S. Bryk,et al.  Hierarchical Linear Models: Applications and Data Analysis Methods , 1992 .

[22]  M. Escobar,et al.  Bayesian Density Estimation and Inference Using Mixtures , 1995 .

[23]  Paul F. Lazarsfeld,et al.  Latent Structure Analysis. , 1969 .

[24]  A. F. Smith,et al.  Statistical analysis of finite mixture distributions , 1986 .

[25]  Gérard Govaert,et al.  Assessing a Mixture Model for Clustering with the Integrated Completed Likelihood , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[26]  J J McArdle,et al.  Latent growth curves within developmental structural equation models. , 1987, Child development.

[27]  A. Cohen,et al.  Finite Mixture Distributions , 1982 .

[28]  L. Cronbach,et al.  Construct validity in psychological tests. , 1955, Psychological bulletin.

[29]  Clifford C. Clogg,et al.  Handbook of statistical modeling for the social and behavioral sciences , 1995 .

[30]  Raymond B. Cattell,et al.  Handbook of multivariate experimental psychology , 1968 .

[31]  D S Nagin,et al.  Analyzing developmental trajectories of distinct but related behaviors: a group-based method. , 2001, Psychological methods.

[32]  H. Bozdogan Model selection and Akaike's Information Criterion (AIC): The general theory and its analytical extensions , 1987 .

[33]  S. Stigler,et al.  The History of Statistics: The Measurement of Uncertainty before 1900 by Stephen M. Stigler (review) , 1986, Technology and Culture.

[34]  D. Rubin,et al.  Testing the number of components in a normal mixture , 2001 .

[35]  S G West,et al.  Putting the individual back into individual growth curves. , 2000, Psychological methods.

[36]  Jeroen K. Vermunt,et al.  A nonparametric random-coefficients approach : The latest class regression model , 2001 .

[37]  J. B. Ramsey,et al.  Estimating Mixtures of Normal Distributions and Switching Regressions , 1978 .

[38]  J. Vermunt Latent Class Models , 2004 .

[39]  Kristopher J Preacher,et al.  On the practice of dichotomization of quantitative variables. , 2002, Psychological methods.

[40]  Allen I. Fleishman A method for simulating non-normal distributions , 1978 .

[41]  John B. Willett,et al.  Using covariance structure analysis to detect correlates and predictors of individual change over time , 1994 .

[42]  W. Bukowski,et al.  Developmental profiles of peer social preference over the course of elementary school: associations with trajectories of externalizing and internalizing behavior. , 2001, Developmental psychology.

[43]  Linda M. Collins,et al.  New methods for the analysis of change , 2001 .

[44]  Gerhard Arminger,et al.  Mixtures of conditional mean- and covariance-structure models , 1999 .

[45]  S. Buyske,et al.  Parental modeling and parenting behavior effects on offspring alcohol and cigarette use. A growth curve analysis. , 2000, Journal of substance abuse.

[46]  Ana Ivelisse Avilés,et al.  Linear Mixed Models for Longitudinal Data , 2001, Technometrics.

[47]  G. McLachlan On Bootstrapping the Likelihood Ratio Test Statistic for the Number of Components in a Normal Mixture , 1987 .

[48]  M. Browne Asymptotically distribution-free methods for the analysis of covariance structures. , 1984, The British journal of mathematical and statistical psychology.

[49]  W. DeSarbo,et al.  Finite-Mixture Structural Equation Models for Response-Based Segmentation and Unobserved Heterogeneity , 1997 .

[50]  Alan C. Acock,et al.  Latent Growth Modeling of Longitudinal Data: A Finite Growth Mixture Modeling Approach , 2001 .

[51]  Herbert Robbins,et al.  Mixture of Distributions , 1948 .

[52]  T. Moffitt Adolescence-limited and life-course-persistent antisocial behavior: a developmental taxonomy. , 1993, Psychological review.

[53]  Jacob Cohen The Cost of Dichotomization , 1983 .

[54]  J. Mcardle Dynamic but Structural Equation Modeling of Repeated Measures Data , 1988 .

[55]  B. Muthén,et al.  Integrating person-centered and variable-centered analyses: growth mixture modeling with latent trajectory classes. , 2000, Alcoholism, clinical and experimental research.

[56]  B R Flay,et al.  Identifying trajectories of adolescent smoking: an application of latent growth mixture modeling. , 2001, Health psychology : official journal of the Division of Health Psychology, American Psychological Association.

[57]  Gérard Govaert,et al.  An improvement of the NEC criterion for assessing the number of clusters in a mixture model , 1999, Pattern Recognit. Lett..

[58]  W. DeSarbo,et al.  An Empirical Pooling Approach for Estimating Marketing Mix Elasticities with PIMS Data , 1993 .

[59]  P. Rivers Alcohol and addictive behavior. , 1986, Nebraska Symposium on Motivation. Nebraska Symposium on Motivation.

[60]  Murray Aitkin,et al.  Statistical Modelling of Data on Teaching Styles , 1981 .

[61]  W. R. Buckland,et al.  Contributions to Probability and Statistics , 1960 .

[62]  Phillip L. Ackerman,et al.  Abilities, motivation, and methodology : the Minnesota Symposium on Learning and Individual Differences , 1989 .

[63]  Yiu-Fai Yung,et al.  Finite mixtures in confirmatory factor-analysis models , 1997 .

[64]  G. Celeux,et al.  An entropy criterion for assessing the number of clusters in a mixture model , 1996 .

[65]  Peter M. Bentler,et al.  EQS : structural equations program manual , 1989 .

[66]  F. Krauss Latent Structure Analysis , 1980 .

[67]  Sanford Weisberg,et al.  Computing science and statistics : proceedings of the 30th Symposium on the Interface, Minneapolis, Minnesota, May 13-16, 1998 : dimension reduction, computational complexity and information , 1998 .

[68]  J. Tukey A survey of sampling from contaminated distributions , 1960 .

[69]  R. Zucker The four alcoholisms: a developmental account of the etiologic process. , 1986, Nebraska Symposium on Motivation. Nebraska Symposium on Motivation.

[70]  L. Wasserman,et al.  Practical Bayesian Density Estimation Using Mixtures of Normals , 1997 .

[71]  D Kaplan,et al.  A Study of the Sampling Variability and z-Values of Parameter Estimates From Misspecified Structural Equation Models. , 1989, Multivariate behavioral research.

[72]  Harvey Goldstein,et al.  MULTILEVEL MODELLING NEWSLETTER , 2002 .

[73]  T. Micceri The unicorn, the normal curve, and other improbable creatures. , 1989 .

[74]  T. Ferguson BAYESIAN DENSITY ESTIMATION BY MIXTURES OF NORMAL DISTRIBUTIONS , 1983 .

[75]  L. Johnston,et al.  Getting drunk and growing up: trajectories of frequent binge drinking during the transition to young adulthood. , 1996, Journal of studies on alcohol.

[76]  M. Appelbaum,et al.  Developmental changes in mental performance. , 1973, Monographs of the Society for Research in Child Development.

[77]  C. D. Vale,et al.  Simulating multivariate nonnormal distributions , 1983 .

[78]  R. Catalano,et al.  Early adult outcomes of adolescent binge drinking: person- and variable-centered analyses of binge drinking trajectories. , 2000, Alcoholism, clinical and experimental research.

[79]  A. Satorra,et al.  Corrections to test statistics and standard errors in covariance structure analysis. , 1994 .

[80]  Bengt Muthén,et al.  Second-generation structural equation modeling with a combination of categorical and continuous latent variables: New opportunities for latent class–latent growth modeling. , 2001 .

[81]  Daniel S. Nagin,et al.  Analyzing developmental trajectories: A semiparametric, group-based approach , 1999 .