{smcl} {* Mars 2012}{...} {hline} help for {hi:pcmodel}{right:JFH} {hline} {title:Estimation of the parameters of a Partial Credit Model} {p 8 14 2}{cmd:pcmodel} (varlist) [{cmd:if} {it:exp}], [{cmdab:qual:itatives}({it:varlist}) {cmdab:quant:itatives}({it:varlist}) {cmdab:dif:ficulties}({it:matrix list}) {cmdab:it:erate}(#) {cmdab:ad:apt} {cmdab:ro:bust} {cmdab:f:rom}(matrix)] {title:Description} {p 8 14 2}{cmd:pcmodel} allows estimating the parameters of a random effect partial credit model (the item difficulties, and the potential covariates that may influence the considered latent trait are considered as fixed effects. The individual latent traits are considered as a normally distributed random effect){p_end} {p 14 14 2}Two situations are possible:{p_end} {p 14 14 2}- The item difficulties can be considered as already known. They do not have to be estimated during the analysis.{p_end} {p 14 14 2}- The difficulties are considered as unknowns, and then require to be estimated during the analysis. {p_end} {p 14 14 2}It is possible to include covariates (that can possibly influence the individual latent traits) in the partial credit model. These covariates can either be qualitative or quantitative. {p_end} {p 14 14 2}{cmd:pcmodel} provides assistance for interpreting the estimated effects of covariates (estimation of the type III sum of squares, percentage of variance explained with the introduction of each covariates). {p_end} {p 14 14 2}It is finally possible to thest the fit using {cmd:pcmtest} after estimating parameters of the model with {cmd:pcmodel} {title:Options} {p 4 8 2}{cmdab:qual:itatives} List of the categorical covariates included in the partial credit model {p 4 8 2}{cmdab:quant:itatives} List of the continuous covariates included in the partial credit model {p 4 8 2}{cmd:difficulties} Row vectors containing the considered known values of each item difficulty. A row vector must match with each item, and have the same name as the corresponding item. The item difficulties should be known for all the items. If {cmd:difficulties} is not filled, the dificulties are considered as unknown, and are estimated during the analysis. {p 4 8 2}{cmd:iterate} specifies the (maximum) number of iterations. With the adapt option, use of the iterate(#) option will cause pcmodel to skip the "Newton Raphson" iterations usually performed at the end without updating the quadrature locations. {p 4 8 2}{cmd:adapt} causes adaptive quadrature to be used instead of ordinary quadrature. {p 4 8 2}{cmd:robust} specifies that the Huber/White/sandwich estimator of the covariance matrix of the parameter estimates is to be used. {p 4 8 2}{cmd:from} specifies a row vector to be used for the initial values. Note that the column-names and equation-names do not have to be correct. This line vector must have exactly the number of parameters to be estimated, starting with the difficulties parameters, then the parameters associated with the covariates, and finishing with the estimated standard deviation of the latent trait. {title:Outputs} {p 4 8 2}{cmd:e(lll)}: (marginal) log-likelihood {p 4 8 2}{cmd:e(cn)}: Condition number {p 4 8 2}{cmd:e(N)}: Number of observations {p 4 8 2}{cmd:e(Nit)}: Number of items {p 4 8 2}{cmd:e(Nqual)}: Number of qualitative covariates {p 4 8 2}{cmd:e(Nquant)}: Number of quantitative covariates {p 4 8 2}{cmd:e(items)}: program used to implement {cmdpcmtest} {p 4 8 2}{cmd:e(itest)}: program used to implement {cmdpcmtest} {p 4 8 2}{cmd:e(datatest)}: program used to implement {cmdpcmtest} {p 4 8 2}{cmd:e(mugauss)}: program used to implement {cmdpcmtest} {p 4 8 2}{cmd:e(sdgauss)}: program used to implement {cmdpcmtest} {p 4 8 2}{cmd:e(cmd)}: program used to implement {cmdpcmtest} {p 4 8 2}{cmd:e(sigma)}: Estimated standard deviation of the latent trait {p 4 8 2}{cmd:e(Varsigma)}: Variance of the estimated standard deviation of the latent trait {p 4 8 2}{cmd:e(b)}: coefficient vector of the parameters associated with the latent trait covariates (if no covariate is included in the model, value of the average latent trait). {p 4 8 2}{cmd:e(V)}: Covariance matrix for the latent trait covariates. {p 4 8 2}{cmd:e(delta)}: Estimated difficulty parameters {p 4 8 2}{cmd:e(Vardelta)}: Covariance matrix for the estimated difficulty parameters {title:Author} {p 4 8 2}Jean-François HAMEL{p_end} {title:Also see} {p 4 13 2}Online: help for {help pcmtest}, {help gllamm}, {help simirt}, {help raschtest}.{p_end}