Skip to content
Home » Blog » ANOVA Table Explained with Examples

ANOVA Table Explained with Examples

The ANOVA table is one of the most important outputs in statistical analysis, especially when comparing the means of multiple groups. Whether you are a student, researcher, or data analyst using SPSS, understanding the ANOVA table helps you make correct decisions based on data rather than guesswork.

This article explains the ANOVA table in simple language, covers ANOVA assumptions, types of ANOVA, how to interpret ANOVA results, and includes practical ANOVA test examples, including one-way and two-way ANOVA in SPSS.

ANOVA Table
ANOVA Table Explained with Examples

What Is an ANOVA Table?

An ANOVA table (Analysis of Variance table) summarizes the results of an ANOVA test. It breaks down the total variability in data into different sources and helps determine whether group means are statistically different.

The ANOVA table typically contains the following columns:

Source of VariationSum of Squares (SS)dfMean Square (MS)F-valueSig. (p-value)

Each of these values plays a key role in hypothesis testing.

Key Components of an ANOVA Table

1. Sum of Squares (SS)

Sum of Squares measures variation.

  • Between Groups SS: Variation due to differences between group means

  • Within Groups SS: Variation within each group

  • Total SS: Overall variation in the data

2. Degrees of Freedom (df)

Degrees of freedom depend on sample size and number of groups.

  • Between groups: k − 1

  • Within groups: N − k

  • Total: N − 1

Where k = number of groups, N = total observations.

3. Mean Square (MS)

Mean Square is calculated as:

 
MS = SS / df

4. F-Statistic

The F-value compares variance between groups to variance within groups.

 
F = MS_between / MS_within

5. Significance (p-value)

If p < 0.05, the result is statistically significant, meaning at least one group mean differs.

ANOVA Assumptions

Before interpreting an ANOVA table, you must check ANOVA assumptions. Violating these assumptions can lead to incorrect conclusions.

1. Independence of Observations

Each observation must be independent of others.

2. Normality

The dependent variable should be approximately normally distributed in each group.

3. Homogeneity of Variance

Variances across groups should be equal.
In SPSS, this is tested using Levene’s Test.

If assumptions are violated, you may need non-parametric alternatives like the Kruskal-Wallis test.

Understanding the types of ANOVA helps you choose the correct method.

1. One-Way ANOVA

Used when comparing three or more groups based on one independent variable.

Example: Comparing test scores of students taught using three different teaching methods.

2. Two-Way ANOVA

Used when there are two independent variables.

Example: Effect of teaching method and gender on test scores.

3. Repeated Measures ANOVA

Used when the same subjects are measured multiple times.

ANOVA Test Example

Let’s walk through a simple ANOVA test example.

Problem

Three groups of students are taught using different methods. Their test scores are recorded.

Group AGroup BGroup C
707585
727888
687490

Step 1: Hypotheses

  • H₀: All group means are equal

  • H₁: At least one group mean is different

Step 2: ANOVA Table (Simplified)

SourceSSdfMSFp
Between560228014.00.004
Within120620  
Total6808   

Step 3: Decision

Since p = 0.004 < 0.05, reject the null hypothesis.
The teaching methods significantly affect test scores.

How to Interpret ANOVA Results

Understanding how to interpret ANOVA results is critical.

  1. Check the p-value

    • p < 0.05 → significant difference exists

    • p ≥ 0.05 → no significant difference

  2. ANOVA Does Not Tell Which Groups Differ
    You must run post hoc tests (Tukey, Bonferroni).

  3. Effect Size Matters
    Statistical significance does not always mean practical importance.

One-Way ANOVA vs T Test

A common question is one way ANOVA vs t test.

FeatureT-TestOne-Way ANOVA
Number of groups23 or more
Type I error riskLowControlled
Outputt-valueF-value

If you compare only two groups, a t-test is fine.
For three or more groups, one-way ANOVA is the correct choice.

ANOVA SPSS: How to Run It

Steps for One-Way ANOVA in SPSS

  1. Go to Analyze → Compare Means → One-Way ANOVA

  2. Move the dependent variable to Dependent List

  3. Move the group variable to Factor

  4. Click Options → check Descriptive and Homogeneity

  5. Click Post Hoc (Tukey recommended)

  6. Click OK

SPSS automatically generates the ANOVA table.

Two Way ANOVA in SPSS

Two way ANOVA in SPSS analyzes the effect of two factors and their interaction.

Example

  • Factor 1: Teaching Method (A, B)

  • Factor 2: Gender (Male, Female)

  • Dependent variable: Test Score

Steps in SPSS

  1. Analyze → General Linear Model → Univariate

  2. Add dependent variable

  3. Add both factors as fixed factors

  4. Click Model → Full factorial

  5. Click OK

SPSS provides:

  • Main effects

  • Interaction effects

  • ANOVA table for each effect

Interpreting Two-Way ANOVA Results

When reading the ANOVA table in two-way ANOVA:

  • Main Effect 1: Effect of factor A

  • Main Effect 2: Effect of factor B

  • Interaction Effect: Whether factor A’s effect depends on factor B

If the interaction term is significant, interpret it before main effects.

Common Mistakes When Reading an ANOVA Table

  • Ignoring ANOVA assumptions

  • Assuming ANOVA shows which group differs

  • Misinterpreting non-significant results

  • Confusing correlation with causation

Avoid these mistakes for accurate analysis.

Final Thoughts

The ANOVA table is a powerful statistical tool that helps compare group means scientifically. By understanding its components, assumptions, and interpretation, you can confidently analyze data using SPSS or manual calculations.

From ANOVA test examples to two way ANOVA in SPSS, mastering the ANOVA table ensures better research decisions and clearer data insights.

Leave a Reply

Your email address will not be published. Required fields are marked *

Index