This document provides guidance on reporting the results of a chi-square test of independence in APA style. It presents an example problem investigating the relationship between heart disease and gender. It then shows the general template for how to report a chi-square test, including reporting the chi-square value, degrees of freedom, and statistical significance. The template example finds a significant relationship between heart disease and gender, with men more likely to have heart disease than women.
Overview of reporting a Chi-Square Test of Independence in APA format, emphasizing the need to check the latest APA manual.
Introduction to a problem investigated using Chi-Square Test of Independence and reporting results in APA style. A general template will be demonstrated.
The analysis focuses on whether heart disease and gender are independent, with reported findings: Chi-Square (χ2(1)=23.80, p<.05), and prevalence rates of 68% for men versus 40% for women.
Reiteration of problem analysis with emphasis on statistical significance, reporting details of the Chi-Square test and its relationship with gender and heart disease.
Reporting a Chi-Square
Test of Independence
in APA
Note – that the reporting format shown in this
learning module is for APA. For other formats
consult specific format guides.
It is also recommended to consult the latest
APA manual to compare what is described in
this learning module with the most updated
formats for APA
3.
Reporting a Chi-Square
Test of Independence
in APA
Note – that the reporting format shown in this
learning module is for APA. For other formats
consult specific format guides.
It is also recommended to consult the latest
APA manual to compare what is described in
this learning module with the most updated
formats for APA
4.
• In thisshort tutorial you will see a problem that can
be investigated using a Chi-Square Test of
Independence.
5.
• In thisshort tutorial you will see a problem that can
be investigated using a Chi-Square Test of
Independence.
• You will then see how the results of the analysis can
be reported using APA style.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68% than women (40%)
8.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68% than women (40%)
9.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68%) than women (40%)
10.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68%) than women (40%)
11.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68%) than women (40%)
Chi-
Square
12.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68%) than women (40%)
Degrees of
Freedom
13.
Problem:
We analyzedwhether heart disease (no=1 and yes =2) and
gender (male = 1 and female = 2) are independent of one
another.
• Here is one general template for reporting a
Chi-Square Test of Independence:
A Chi-square test of independence was calculated
comparing the frequency of heart disease in men and
women. A significant interaction was found (2 (1) =
23.80, p < .05). Men were more likely to get heart
dease (68%) than women (40%)
Statistical
Significance