• 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
  • Pages
    25
  • From page
    25
  • To page
    49
  • 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
  • Serial Year
    2003
  • Journal title
    The Journal of Experimental Education
  • Record number

    708664