Descriptor
| Estimation (Mathematics) | 21 |
| Factor Analysis | 21 |
| Maximum Likelihood Statistics | 21 |
| Mathematical Models | 12 |
| Least Squares Statistics | 9 |
| Equations (Mathematics) | 6 |
| Monte Carlo Methods | 6 |
| Algorithms | 5 |
| Statistical Studies | 5 |
| Comparative Analysis | 4 |
| Latent Trait Theory | 4 |
| More ▼ | |
Source
| Psychometrika | 7 |
| Multivariate Behavioral… | 4 |
| Applied Psychological… | 2 |
| Educational and Psychological… | 2 |
| Journal of Education… | 1 |
| Journal of Educational and… | 1 |
| Journal of Experimental… | 1 |
Author
Publication Type
| Journal Articles | 18 |
| Reports - Research | 12 |
| Reports - Evaluative | 8 |
| Reports - Descriptive | 1 |
| Speeches/Meeting Papers | 1 |
Education Level
Audience
Location
Laws, Policies, & Programs
Assessments and Surveys
What Works Clearinghouse Rating
Peer reviewedYung, Yiu-Fai; Bentler, Peter M. – Journal of Educational and Behavioral Statistics, 1999
Using explicit formulas for the information matrix of maximum likelihood factor analysis under multivariate normal theory, gross and net information for estimating the parameters in a covariance structure gained by adding the associated mean structure are defined. (Author/SLD)
Descriptors: Estimation (Mathematics), Factor Analysis, Maximum Likelihood Statistics
Peer reviewedRubin, Donald B.; Thayer, Dorothy T. – Psychometrika, 1983
The authors respond to a criticism of their earlier article concerning the use of the EM algorithm in maximum likelihood factor analysis. Also included are the comments made by the reviewers of this article. (JKS)
Descriptors: Algorithms, Estimation (Mathematics), Factor Analysis, Maximum Likelihood Statistics
Peer reviewedFava, Joseph L.; Velicer, Wayne F. – Educational and Psychological Measurement, 1996
The consequences of underextracting factors and components within and between the methods of maximum likelihood factor analysis and principal components analysis were examined through computer simulation. The principal components score and the factor score estimate (T. W. Anderson and H. Rubin, 1956) tended to become different with…
Descriptors: Computer Simulation, Estimation (Mathematics), Factor Analysis, Factor Structure
Peer reviewedWolins, Leroy – Educational and Psychological Measurement, 1995
From 105 samples of 300 observations each and 87 samples with 3,000 observations each, constrained factor analyses of 96 normally distributed variables in a three-stage hierarchical structure were computed by maximum likelihood and unweighted least squares (ULS). ULS took less time and computer resources and led to better estimates. (SLD)
Descriptors: Estimation (Mathematics), Factor Analysis, Least Squares Statistics, Maximum Likelihood Statistics
Peer reviewedKano, Yutaka – Psychometrika, 1990
Based on the usual factor analysis model, this paper investigates the relationship between improper solutions and the number of factors. The properties of the noniterative estimation method of M. Ihara and Y. Kano in exploratory factor analysis are also discussed. The estimators were compared in a Monte Carlo experiment. (TJH)
Descriptors: Comparative Analysis, Estimation (Mathematics), Factor Analysis, Mathematical Models
Peer reviewedBriggs, Nancy E.; MacCallum, Robert C. – Multivariate Behavioral Research, 2003
Examined the relative performance of two commonly used methods of parameter estimation in factor analysis, maximum likelihood (ML) and ordinary least squares (OLS) through simulation. In situations with a moderate amount of error, ML often failed to recover the weak factor while OLS succeeded. Also presented an example using empirical data. (SLD)
Descriptors: Error of Measurement, Estimation (Mathematics), Factor Analysis, Factor Structure
Peer reviewedIchikawa, Masanori – Psychometrika, 1992
Asymptotic distributions of the estimators of communalities are derived for the maximum likelihood method in factor analysis. It is shown that equating the asymptotic standard error of the communality estimate to the unique variance estimate is not correct for the unstandardized case. Monte Carlo simulations illustrate the study. (SLD)
Descriptors: Computer Simulation, Equations (Mathematics), Estimation (Mathematics), Factor Analysis
Peer reviewedHagglund, Gosta – Psychometrika, 1982
Three alternative estimation procedures for factor analysis based on the instrumental variables method are presented. Least squares estimation procedures are compared to maximum likelihood procedures. The conclusion, based on the data used in this study, is that two of the procedures seem to work well. (Author/JKS)
Descriptors: Data Analysis, Error of Measurement, Estimation (Mathematics), Factor Analysis
Peer reviewedBaker, Frank B. – Applied Psychological Measurement, 1988
The form of item log-likelihood surface was investigated under two-parameter and three-parameter logistic models. Results confirm that the LOGIST program procedures used to locate the maximum of the likelihood functions are consistent with the form of the item log-likelihood surface. (SLD)
Descriptors: Estimation (Mathematics), Factor Analysis, Graphs, Latent Trait Theory
Peer reviewedBrown, R. L. – Multivariate Behavioral Research, 1990
A Monte Carlo study was conducted to assess the robustness of the limited information two-stage least squares (2SLS) estimation procedure on a confirmatory factor analysis model with nonnormal distributions. Full information maximum likelihood methods were used for comparison. One hundred model replications were used to generate data. (TJH)
Descriptors: Comparative Analysis, Estimation (Mathematics), Factor Analysis, Least Squares Statistics
Gibbons, Robert D.; And Others – 1990
A plausible "s"-factor solution for many types of psychological and educational tests is one in which there is one general factor and "s - 1" group- or method-related factors. The bi-factor solution results from the constraint that each item has a non-zero loading on the primary dimension "alpha(sub j1)" and at most…
Descriptors: Equations (Mathematics), Estimation (Mathematics), Factor Analysis, Item Analysis
Peer reviewedEtezadi-Amoli, Jamshid; McDonald, Roderick P. – Psychometrika, 1983
Nonlinear common factor models with polynomial regression functions, including interaction terms, are fitted by simultaneously estimating the factor loadings and common factor scores, using maximum likelihood and least squares methods. A Monte Carlo study gives support to a conjecture about the form of the distribution of the likelihood ratio…
Descriptors: Aphasia, Data Analysis, Estimation (Mathematics), Factor Analysis
Peer reviewedBock, R. Darrell; And Others – Applied Psychological Measurement, 1988
A method of item factor analysis is described, which is based on Thurstone's multiple-factor model and implemented by marginal maximum likelihood estimation and the EM algorithm. Also assessed are the statistical significance of successive factors added to the model, provisions for guessing and omitted items, and Bayes constraints. (TJH)
Descriptors: Algorithms, Bayesian Statistics, Equations (Mathematics), Estimation (Mathematics)
Peer reviewedMolenaar, Peter C. M.; Nesselroade, John R. – Multivariate Behavioral Research, 1998
Pseudo-Maximum Likelihood (p-ML) and Asymptotically Distribution Free (ADF) estimation methods for estimating dynamic factor model parameters within a covariance structure framework were compared through a Monte Carlo simulation. Both methods appear to give consistent model parameter estimates, but only ADF gives standard errors and chi-square…
Descriptors: Chi Square, Comparative Analysis, Error of Measurement, Estimation (Mathematics)
Peer reviewedEthington, Corinna A. – Journal of Experimental Education, 1987
This study examined the effect of type of correlation matrix on the robustness of LISREL maximum likelihood and unweighted least squares structural parameter estimates for models with categorical variables. The analysis of mixed matrices produced estimates that closely approximated the model parameters except where dichotomous variables were…
Descriptors: Computer Software, Estimation (Mathematics), Factor Analysis, Least Squares Statistics
Previous Page | Next Page ยป
Pages: 1 | 2

