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Williams, John D. – Multiple Linear Regression Viewpoints, 1977
Using a recent innovation described by Pedhazur, a simpler regression solution to the repeated measures design is shown. Use of the techniques is described and an example is presented. (Author/JKS)
Descriptors: Analysis of Variance, Multiple Regression Analysis, Research Design
Peer reviewed Peer reviewed
Cohen, Patricia – Multiple Linear Regression Viewpoints, 1978
Commentary is presented on the preceding articles in this issue of the journal. Critical commentary is made article by article, and some general recommendations are made. (See TM 503 664 through 670). (JKS)
Descriptors: Data Analysis, Mathematical Models, Multiple Regression Analysis, Research Design
Peer reviewed Peer reviewed
Williams, John D. – Multiple Linear Regression Viewpoints, 1980
Multiple comparisons involve the examination of which group or groups are actually different from other group(s) in analysis of variance results. Such comparisons usually involve one-way analysis of variance. This monograph discusses designs more complex than one-way designs. (JKS)
Descriptors: Analysis of Variance, Data Analysis, Hypothesis Testing, Research Design
Peer reviewed Peer reviewed
Williams, John D.; Wali, Mohan K. – Multiple Linear Regression Viewpoints, 1979
An experimental sampling procedure for communities on which coal had been surface-mined yielded missing cells and caused the number of degrees of freedom to be N instead of the usual N minus one. The apparent discrepancy is explained, and a solution to the problem is presented. (Author/JKS)
Descriptors: Analysis of Variance, Research Design, Research Problems, Sampling
Peer reviewed Peer reviewed
Black, Ken; Brookshire, William K. – Multiple Linear Regression Viewpoints, 1980
Three methods of handling disproportionate cell frequencies in two-way analysis of variance are examined. A Monte Carlo approach was used to study the method of expected frequencies and two multiple regression approaches to the problem as disproportionality increases. (Author/JKS)
Descriptors: Analysis of Variance, Monte Carlo Methods, Multiple Regression Analysis, Research Design
Peer reviewed Peer reviewed
Newman, Isadore; Fraas, John – Multiple Linear Regression Viewpoints, 1979
Issues in the application of multiple regression analysis as a data analytic tool are discussed at some length. Included are discussions on component regression, factor regression, ridge regression, and systems of equations. (JKS)
Descriptors: Correlation, Factor Analysis, Multiple Regression Analysis, Research Design
Peer reviewed Peer reviewed
Huitema, Bradley E. – Multiple Linear Regression Viewpoints, 1978
Issues in analysis of covariance, multiple regression analysis, and the analysis of variance such as the assumption of independence and directional hypotheses are discussed. (JKS)
Descriptors: Analysis of Covariance, Analysis of Variance, Data Analysis, Multiple Regression Analysis
Peer reviewed Peer reviewed
Mouw, John T.; Nu, View – Multiple Linear Regression Viewpoints, 1979
Repeated measures designs often involve dichotomization of a continuous variable in order to be amenable to the analysis of variance nature of such designs. An alternative to that approach wherein the independent variable is kept continuous is presented. (JKS)
Descriptors: Analysis of Covariance, Analysis of Variance, Hypothesis Testing, Multiple Regression Analysis
Peer reviewed Peer reviewed
Williams, John D. – Multiple Linear Regression Viewpoints, 1977
The problems of two way analysis of variance designs with unequal and disproportionate cell sizes are discussed. A variety of solutions are discussed and a new solution is presented. (JKS)
Descriptors: Analysis of Variance, Hypothesis Testing, Mathematical Models, Matrices
Peer reviewed Peer reviewed
Rosenthal, William; Spaner, Steven D. – Multiple Linear Regression Viewpoints, 1978
A data set from the area of clinical psychology was used to show how multiple regression analysis could be used where analysis of variance might more commonly be used. (JKS)
Descriptors: Analysis of Variance, Clinical Psychology, Computer Programs, Data Analysis
Peer reviewed Peer reviewed
Woehlke, Paula L.; And Others – Multiple Linear Regression Viewpoints, 1978
Recent criticism in the literature of the use of inferential statistics in educational research is refuted. The authors focus on the defense of multiple regression analysis. (JKS)
Descriptors: Analysis of Variance, Correlation, Data Analysis, Educational Research
Peer reviewed Peer reviewed
Mouw, John T.; Vu, Nu Viet – Multiple Linear Regression Viewpoints, 1979
Repeated measures designs often involve dichotomization of a continuous variable in order to be amenable to the analysis of variance nature of such designs. An alternative to that approach wherein the independent variable is kept continuous is presented. (JKS)
Descriptors: Analysis of Covariance, Analysis of Variance, Hypothesis Testing, Multiple Regression Analysis
Peer reviewed Peer reviewed
Vasu, Ellen Storey – Multiple Linear Regression Viewpoints, 1978
The construction and interpretation of confidence intervals for the prediction of new cases in multiple regression analysis is explained. An example is provided. (JKS)
Descriptors: Computer Programs, Data Analysis, Goodness of Fit, Multiple Regression Analysis
Peer reviewed Peer reviewed
Fraas, John W.; Newman, Isadore – Multiple Linear Regression Viewpoints, 1978
Problems associated with the use of gain scores, analysis of covariance, multicollinearity, part and partial correlation, and the lack of rectilinearity in regression are discussed. Particular attention is paid to the misuse of statistical techniques. (JKS)
Descriptors: Achievement Gains, Analysis of Covariance, Correlation, Data Analysis
Peer reviewed Peer reviewed
Wolfle, Lee M. – Multiple Linear Regression Viewpoints, 1979
With even the simplest bivariate regression, least-squares solutions are inappropriate unless one assumes a priori that reciprocal effects are absent, or at least implausible. While this discussion is limited to bivariate regression, the issues apply equally to multivariate regression, including stepwise regression. (Author/CTM)
Descriptors: Analysis of Variance, Correlation, Data Analysis, Least Squares Statistics
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