Chi-Square Test of Independence

Test whether two categorical variables are independent of each other

Chi-Square Test of Independence

The Chi-Square Test of Independence determines whether there is a significant association between two categorical variables. It compares the observed frequencies in each category to the frequencies we would expect if the variables were independent.

χ² = Σ [ (O - E)² / E ]

Where O is the observed frequency, E is the expected frequency, and the summation is over all cells in the contingency table.

Contingency Table Input

Enter your observed values in the table below. You can add more rows and columns as needed.

Observed Frequencies
Column 1 Column 2 Column 3
Row 1
Row 2
Row 3

Chi-Square Test Results

Chi-Square Statistic

Test statistic

P-Value

Significance level

Degrees of Freedom

(rows - 1) × (columns - 1)

Result

Hypothesis test

Interpretation

Expected Frequencies

Column 1 Column 2 Column 3

Chi-Square Test Examples in Industrial Engineering

Quality Control Example

Test whether defect rates are independent of production shifts.

Shifts: Morning, Afternoon, Night

Defect Types: Minor, Major, Critical

Example data:

Minor Major Critical
Morning 15 8 2
Afternoon 12 10 4
Night 18 14 7

Supplier Evaluation Example

Test whether product quality is independent of suppliers.

Suppliers: A, B, C

Quality Levels: Excellent, Good, Fair, Poor

Example data:

Excellent Good Fair Poor
Supplier A 25 40 20 5
Supplier B 30 35 25 10
Supplier C 20 30 35 15

Machine Performance Example

Test whether machine performance is independent of maintenance schedule.

Maintenance: Weekly, Bi-weekly, Monthly

Performance: Optimal, Acceptable, Needs Attention

Example data:

Optimal Acceptable Needs Attention
Weekly 18 10 2
Bi-weekly 12 15 8
Monthly 5 12 13