Title of article :
Linear Discriminant Analysis Versus
Logistic Regression: A Comparison of
Classification Errors in the Ikvo-Group Case
Author/Authors :
Pui-Wa Lei، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Abstract :
ABSTRACT. Classification studies are important for practitioners who need to identify
individuals for specialized treatment or intervention. When interventions are
irreversible or misclassifications are costly, information about the proficiency of different
classification procedures becomes invaluable. This study furnishes information
about the relative accuracy of two widely used classification procedures, linear
discriminant analysis and lo&t/c regression, under various commonly encountered
and interacting conditions. Monte Carlo simulation was used to manipulate four factors
under multivariate normality: equality of covariance matrices, degree of group
separation, sample size, and prior probabilities. Three criterion measures were
employed: total, small-group, and large-group classification error. Interactions of
these between factors with two within factors, cut-score and method of classification,
were of primary interest.
Keywords :
Logisticregression , multivariate statistics , discriminant analysis , classification , categorical data analysis
Journal title :
The Journal of Experimental Education
Journal title :
The Journal of Experimental Education