Growth Modeling of Longitudinal Data  
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Growth models examine the development of individuals on one or more outcome variables over time. These outcome variables can be observed variables or continuous latent variables. Observed outcome variables can be continuous, censored, binary, ordered categorical (ordinal), counts, or combinations of these variable types if more than one growth process is being modeled. In growth modeling, random effects are used to capture individual differences in development. In a latent variable modeling framework, the random effects are reconceptualized as continuous latent variables, that is, growth factors.

Mplus takes a multivariate approach to growth modeling such that an outcome variable measured at four occasions, for example, gives rise to a four-variate outcome vector. In contrast, multilevel modeling typically takes a univariate approach to growth modeling where an outcome variable measured at four occasions gives rise to a single outcome for which observations at the different occasions are nested within individuals, resulting in two-level data. Due to the use of the multivariate approach, Mplus does not consider a growth model to be a two-level model as in multilevel modeling but a single-level model. With longitudinal data, the number of levels in Mplus is one less than the number of levels in conventional multilevel modeling programs. The multivariate approach allows flexible modeling of relationships between the outcomes such as correlated residuals over time and regressions among the outcomes over time.

In Mplus, there are two options for handling the relationship between the outcome and time. One approach allows time scores to be parameters in the model so that the growth function can be estimated. This is the approach used in structural equation modeling. The second approach allows time to be a variable that reflects individually-varying times of observations. This variable has a random slope. This is the approach used in multilevel modeling. Random effects in the form of random slopes are also used to represent individual variation in the influence of time-varying covariates on outcomes.
Mplus growth modeling allows the analysis of multiple processes, both parallel and sequential; allows regressions among growth factors and random effects; and allows the growth model to be part of a larger latent variable model.

When observed outcome variables are all continuous, Mplus has seven estimator choices: maximum likelihood (ML), maximum likelihood with robust standard errors and chi-square (MLR, MLF, MLM, MLMV), generalized least squares (GLS), and weighted least squares (WLS) also referred to as ADF. When at least one outcome variable is binary or ordered categorical, Mplus has seven estimator choices: weighted least squares (WLS), robust weighted least squares (WLSM, WLSMV), maximum likelihood (ML), maximum likelihood with robust standard errors and chi-square (MLR, MLF), and unweighted least squares (ULS). When at least one outcome variable is censored, unordered categorical, or a count, Mplus has six estimator choices: weighted least squares (WLS), robust weighted least squares (WLSM, WLSMV), maximum likelihood (ML), and maximum likelihood with robust standard errors and chi-square (MLR, MLF).
Thread (Start New Thread) Last Post Last Poster Posts
Timepoints8-14-08  8:55 amBengt O. Muthen128
Constraining residual variances in growth models with categorical v...4-10-08  2:45 pmLinda K. Muthen18
Meaning of "variance" in LTM when outcome is categorical10-19-02  8:31 ambmuthen6
Regressions Among Random Coefficients10-04-07  1:21 amChuck He10
Computing effect sizes of of growth rates10-29-08  6:52 pmBengt O. Muthen9
Model identification10-15-08  10:38 amLinda K. Muthen32
Growth Models with Censored Data?4-21-08  4:50 pmLinda K. Muthen15
Power Estimation for Intervention Study10-21-08  5:28 pmBengt O. Muthen12
Growth model with time-varying variable6-16-08  6:05 amLinda K. Muthen59
Invariance constraints on factor means11-27-00  9:20 amLinda K. Muthen2
Data interpretation2-04-08  9:12 amLinda K. Muthen12
Multi-level Growth Curve Modeling8-29-08  5:33 pmBengt O. Muthen10
Specifying a reg path from inpt to slope1-31-01  5:19 pmBengt O. Muthen4
Sample size in LGM?3-02-01  9:24 amLinda K. Muthen2
Interpretation of quadratic factor11-03-08  8:00 amLinda K. Muthen33
Comparing two growth trajectories8-05-08  8:25 amBengt O. Muthen25
Latent Growth Curve without the same observations7-03-08  10:33 amLinda K. Muthen10
Std and StdYX coefficients3-02-05  2:40 pmLinda K. Muthen12
GGMM with categorical indicators of c5-25-01  8:45 amLinda K. Muthen2
Residual variance and R-Square of slope factor in LGM11-19-08  9:13 amLinda K. Muthen20
Interpreting output8-06-08  10:16 amLinda K. Muthen36
Growth models with age-specific indicators 4-16-08  5:56 pmLinda K. Muthen6
Confidence Intervals around Growth Curve Trajectories11-21-01  8:24 ambmuthen2
Longitudinal binary data9-24-08  11:47 amBengt O. Muthen20
Nonlinear LGM6-04-08  2:53 pmBengt O. Muthen23
Growth Mixture Survival Analysis7-19-06  8:03 amLinda K. Muthen13
Residual output for GGMM with covariates5-21-02  11:21 ambmuthen4
Decomposition of variance in growth curve model6-02-02  12:20 pmbmuthen2
Growth modeling with multiple trajectories11-16-07  9:18 amNigel30
Latent Class Growth Analysis6-10-08  10:05 amLinda K. Muthen76
Interpretation and significance of growth factors6-21-04  4:58 pmbmuthen10
Latent growth model with weight variable2-09-07  8:40 amLinda K. Muthen12
Using time-varying predictor of latent class variable4-13-05  11:55 pmBMuthen4
Multiple Indicator Growth Model6-01-08  6:27 pmxrhuang19
Growth modeling with categorical variables7-10-08  9:18 amLinda K. Muthen20
Time scores associated with slope growth factors5-05-03  10:25 ambmuthen4
Time-varying covariates6-01-08  12:52 amBengt O. Muthen14
Regression paths or correlated residuals between intercept and slop...8-28-08  2:58 pmBengt O. Muthen9
Piecewise LGM6-28-04  7:24 ambmuthen6
Log odds in growth modeling with categorical data10-01-04  10:10 amBengt O. Muthen4
Variances of growth factors10-04-08  11:56 amLinda K. Muthen16
INTERPREATION OF LOG ODDS CHANGE WITH NON-LINEAR MODELS11-07-02  2:32 pmbmuthen2
Log odds to odds interpretation with LGM5-21-08  11:21 amBengt O. Muthen4
Modeling the influence of time-varying covariatews in latent curve ...6-28-06  2:23 amLinda K. Muthen7
The RUNALL Utility4-21-08  5:09 pmBengt O. Muthen17
The Delta Method11-25-02  2:01 pmbmuthen6
LGM Power Analysis7-27-06  4:46 pmBengt O. Muthen6
Contrasts for growth-curve effects2-09-03  3:34 pmLarry Kurdek5
Centering10-06-08  5:42 pmDaniel E Bontempo7
Three level LGM with latent variables3-03-03  12:41 pmLinda K. Muthen2
Meaning of the coefficients in penn83-24-03  8:43 ambmuthen4
Complex mixture (multilevel growth mixture model)11-20-03  5:12 pmLinda K. Muthen6
Missing data7-20-06  11:21 amBengt O. Muthen7
Factor scores in Growth Mixture Modeling5-09-06  5:52 amBengt O. Muthen6
Initial Status by Treatment Interaction7-18-05  5:39 pmbmuth4
Negative variance3-14-06  5:52 pmBengt O. Muthen20
Aggregate Data Growth Modeling and Fixed/Random effects models in E...3-06-06  10:45 ampoker casino4119
LGM with two groups8-05-08  7:08 pmBengt O. Muthen11
Monte Carlo Modeling11-14-08  1:21 pmMichelle Finney35
Moderation and monte carlo modeling9-03-03  8:42 amLinda K. Muthen2
Equality constraints in prediction8-16-06  12:36 pmLinda K. Muthen8
Factor analysis of latent slopes?11-09-03  10:29 amLinda K. Muthen2
Modeling error structure in growth model.11-20-05  3:18 pmLinda K. Muthen8
References11-28-03  10:19 ambmuthen2
Growth modeling of latent repeated measures4-15-07  12:15 pmBengt O. Muthen10
Invariance in observed variables across time5-13-08  4:25 pmLinda K. Muthen6
Are slopes hard to predict?1-27-04  5:14 pmBmuthen2
Question of interpreting covariate effects on a non-linear trend2-26-04  4:01 pmbmuthen5
Parallel process for non-time-strucutured data7-05-04  9:31 ambmuthen4
Two group LGM with time invariant covariates7-23-08  11:01 amBengt O. Muthen12
Two group LGM with categorical data7-17-06  12:17 pmLinda K. Muthen6
Multiple cohort5-14-08  7:53 amAmaranta D. de Haan47
Constraint of x4-25-04  7:57 pmbmuthen4
Effect Size5-04-04  10:37 amLinda K. Muthen2
Piecewise7-08-08  8:52 amBengt O. Muthen25
RMSEA5-14-04  9:31 amLinda K. Muthen2
Parameterization for Parallel & Sequential Growth processes3-06-06  10:43 ampoker casino7854
Shape factors5-03-05  2:36 pmbmuthen7
Power calculations in LGM5-26-04  7:44 amLinda K. Muthen2
Random Time3-15-07  4:48 pmBengt O. Muthen10
Experiments, multivlevel data, noncompliance and weights3-06-06  10:26 ampoker casino872
Random times of observations for two variables6-10-04  6:04 amLinda K. Muthen2
Two parallel processes growth model7-11-08  10:19 amLinda K. Muthen17
Significant Digits for Printed Output6-14-04  6:48 amLinda K. Muthen2
BINARY MULTIPLE INDICATORS6-18-04  9:22 ambmuthen2
Effect of correlations between growth parameters6-28-04  10:13 ambmuthen9
Graphing growth curves10-15-08  5:52 pmBengt O. Muthen27
LGM and within person correlations1-12-07  9:42 amLinda K. Muthen6
Reading data from ascii file5-29-08  9:10 amLinda K. Muthen4
Two groups analysis in growth models5-27-08  8:13 amLinda K. Muthen9
Added Growth LGM10-23-07  4:08 pmLinda K. Muthen12
The old quadratic issue8-08-08  4:11 pmBengt O. Muthen4
Piecewise Growth With Individually Varying Times of Meas.9-24-04  10:32 amJ. Cheadle1
Fitting LGMs and MLMs and comparing results10-15-04  10:16 amLinda K. Muthen10
Cutpoints in Monte Carlo Simulation10-20-04  2:16 pmLinda K. Muthen2
About "individually-varying times of observation"10-05-07  6:12 amLinda K. Muthen33
No. of decimal places3-06-06  10:21 ampoker casino303
Error structure in multilevel models11-18-04  3:56 pmLinda K. Muthen4
Cohort-sequential design with missing data 11-14-04  12:43 pmbmuthen2
Testing the threshold assumption in LGC analysis11-19-04  6:06 amLinda K. Muthen4
GEE11-28-05  4:13 pmLinda K. Muthen6
Dual trajectory model4-26-07  5:37 amLinda K. Muthen9
Logistic Growth Trajectories12-01-04  11:30 amBrett Foley3
Interaction Model and Fit Indices7-31-06  7:52 amLinda K. Muthen6
Interpretation of coefficients in growth model4-20-05  2:54 pmLinda K. Muthen6
Reciprocal effects between slopes2-26-05  5:51 pmbmuthen4
Survival analysis with latent independent variables5-01-08  9:28 amLinda K. Muthen4
An identifiability issue in the EM algorithm1-12-05  4:41 pmBMuthen2
PLOT3 adjusted by covariates 2-08-08  8:51 amMplususer 12
Simple constraints on multigroup mean structure LGM2-28-05  8:22 amAnonymous3
Decision on Growth Mixture Model3-06-05  9:09 amAnonymous3
Using Means in LCGA models3-07-05  7:01 amLinda K. Muthen4
Warning messages in GGMM1-16-07  1:53 pmLinda K. Muthen17
LCGA and Zero-Inflated Poisson Model3-11-08  4:08 pmBengt O. Muthen23
Can Mplus mimic a HLM growth curve trick - setting scores to 0 at ...3-19-05  4:27 pmbmuthen6
Levels of analysis in latent growth modeling 3-21-05  7:21 ambmuthen2
Questions on LGC3-22-05  2:43 pmbmuthen6
A flat slope issue?3-24-05  1:37 pmbmuthen2
Intercept factor loadings3-26-05  7:20 amLinda K. Muthen2
Insufficient memory error message4-07-05  12:44 pmThuy Nguyen2
Regression to the mean in LGM4-15-05  1:51 amBMuthen2
Multivariate longitudinal analysis4-20-05  9:19 amBMuthen4
Equality constraints on the level-1 residual variances with random ...11-12-05  6:28 pmBMuthen5
Standardizing the dependent variables - or not!5-07-05  6:24 pmShige5
Question about RMSEA5-13-05  8:09 ambmuthen2
Very basic question 11-13-08  6:14 amLinda K. Muthen18
Slopes as Indicators5-17-05  2:54 pmMichael J. Zyphur3
Constraining growth curves and interpreting quadratic curves6-30-08  7:02 amLinda K. Muthen5
Negative error variance5-19-05  10:00 amLinda K. Muthen2
LGCM and cross-lagged5-26-05  5:34 amLinda K. Muthen4
Mplus 2 vs Mplus 36-06-05  9:36 amLinda K. Muthen2
MAR instead of censored analyses?3-16-08  10:50 amLinda K. Muthen13
Fixed effects and sem growth models6-22-05  12:12 amLinda K. Muthen2
Significace of non-linear slopes6-26-05  2:11 amBMuthen2
Estimation of saturated model for LRT7-02-05  6:11 pmbmuthen2
Growth models with varying time of intervention3-06-06  10:32 ampoker casino174
Multinomial regression with slope as predictor7-04-05  11:13 ambmuthen2
Growth of latent variable construct measured by multiple indicators9-18-07  4:38 amLinda K. Muthen10
Multiple group parallel process GLM10-25-05  7:09 amLinda K. Muthen6
Interactions: cross-product vs. multiple group7-20-05  11:29 ambmuthen2
Sample size for LGM with missing data option8-01-05  11:15 amDaniel3
Binary case / Growth Curve Analysis8-08-05  2:28 pmbmuthen2
Individually varying times8-09-05  10:23 amLinda K. Muthen2
Growth modeling about Binary Responses8-09-05  2:58 pmLinda K. Muthen2
Convergence8-24-05  2:40 pmLinda K. Muthen2
Growth modeling and latent growth curve analysis8-10-08  10:00 amBengt O. Muthen8
Suggestion for Mplus 4 Documentation9-11-05  7:02 amLinda K. Muthen