ANCOVA Regression Algorithm

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An ANCOVA Regression Algorithm is an GLM regression algorithm (with a mixture of continuous random variables and qualitative variables) that fits an ANCOVA Model.



References

2019

2013a

2013b

  1. Howell, D. C. (2009) Statistical methods for psychology (7th ed.). Belmont: Cengage Wadsworth.
  2. Keppel, G. (1991). Design and analysis: A researcher's handbook (3rd ed.). Englewood Cliffs: Prentice-Hall, Inc.
  3. ">Kutner, M. H., Nachtsheim, C. J., Neter, J., & Li, W. (2005). Applied Linear Statistical Models (5th ed.). New York, NY: McGraw-Hill/Irwin.

2010

  • (Seltman, 2010) ⇒ Howard J Seltman. (2010). “Experimental Design and Analysis.” Carnegie Mellon University.
    • QUOTE: An analysis procedure for looking at group effects on a continuous outcome when some other continuous explanatory variable also has an effect on the outcome. …

      The term ANCOVA, analysis of covariance, is commonly used in this setting, although there is some variation in how the term is used. In some sense ANCOVA is a blending of ANOVA and regression.

      The term ANCOVA (analysis of covariance) is used somewhat differently by different analysts and computer programs, but the most common meaning, and the one we will use here, is for a multiple regression analysis in which there is at least one quantitative and one categorical explanatory variable. Usually the categorical variable is a treatment of primary interest, and the quantitative variable is a "control variable" of secondary interest, which is included to improve power (without sacrificing generalizability).

      Consider a particular quantitative outcome and two or more treatments that we are comparing for their effects on the outcome. If we know one or more explanatory variables are suspected to both affect the outcome and to define groups of subjects that are more homogeneous in terms of their outcomes for any treatment, then we know that we can use the blocking principle to increase power. Ignoring the other explanatory variables and performing a simple ANOVA increases [math]\displaystyle{ \sigma^2 }[/math] and makes it harder to detect any real differences in treatment effects.

       ANCOVA extends the idea of blocking to continuous explanatory variables, as long as a simple mathematical relationship (usually linear) holds between the control variable and the outcome.

2008