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13.1: Introduction to ANOVA

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    Learning Objectives

    • What null hypothesis is tested by ANOVA
    • Describe the uses of ANOVA

    Analysis of Variance (ANOVA) is a statistical method used to test differences between two or more means. It may seem odd that the technique is called "Analysis of Variance" rather than "Analysis of Means." As you will see, the name is appropriate because inferences about means are made by analyzing variance.

    ANOVA is used to test general rather than specific differences among means. This can be seen best by example. In the case study "Smiles and Leniency," the effect of different types of smiles on the leniency shown to a person was investigated. Four different types of smiles (neutral, false, felt, miserable) were investigated. The chapter "All Pairwise Comparisons among Means" showed how to test differences among means. The results from the Tukey HSD test are shown in Table \(\PageIndex{1}\).

    Table \(\PageIndex{1}\): Six Pairwise Comparisons
    Comparison Mi-Mj Q p
    False - Felt 0.46 1.65 0.649
    False - Miserable 0.46 1.65 0.649
    False - Neutral 1.25 4.48 0.010
    Felt - Miserable 0.00 0.00 1.000
    Felt - Neutral 0.79 2.83 0.193
    Miserable - Neutral 0.79 2.83 0.193

    Notice that the only significant difference is between the False and Neutral conditions.

    ANOVA tests the non-specific null hypothesis that all four population means are equal. That is,

    \[\mu _{false} = \mu _{felt} = \mu _{miserable} = \mu _{neutral}\]

    This non-specific null hypothesis is sometimes called the omnibus null hypothesis. When the omnibus null hypothesis is rejected, the conclusion is that at least one population mean is different from at least one other mean. However, since the ANOVA does not reveal which means are different from which, it offers less specific information than the Tukey HSD test. The Tukey HSD is therefore preferable to ANOVA in this situation. Some textbooks introduce the Tukey test only as a follow-up to an ANOVA. However, there is no logical or statistical reason why you should not use the Tukey test even if you do not compute an ANOVA.

    You might be wondering why you should learn about ANOVA when the Tukey test is better. One reason is that there are complex types of analysis that can be done with ANOVA and not with the Tukey test. A second is that ANOVA is by far the most commonly-used technique for comparing means, and it is important to understand ANOVA in order to understand research reports.

    This page titled 13.1: Introduction to ANOVA is shared under a Public Domain license and was authored, remixed, and/or curated by David Lane via source content that was edited to the style and standards of the LibreTexts platform; a detailed edit history is available upon request.

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