Skip to content

The Chi-square Test is one of the most widely used statistical techniques for analyzing categorical data. It helps researchers, students, and businesses determine whether there is a significant relationship between variables or whether observed results differ from expected outcomes. From academic research to market surveys and quality control, the chi-square test plays a critical role in data-driven decision-making.

At Kinza Ashraf, we provide professional statistical analysis services using industry-standard software like SPSS and Microsoft Excel, ensuring accuracy, clarity, and compliance with academic and professional standards.

Chi-square Test
Get Expert Help with Chi-square Test

What Is a Chi-square Test?

It is a non-parametric statistical test used to compare observed frequencies with expected frequencies. It answers questions such as:

  • Is there a relationship between two categorical variables?

  • Does the observed data fit a theoretical distribution?

  • Are differences between groups statistically significant or due to chance?

Because it does not rely on assumptions of normal distribution, the chi-square test is especially useful for categorical and nominal data.

Types of Chi-square Tests

1. Chi-square Test of Independence

This test checks whether two categorical variables are related.

Example use case:

  • Gender vs. product preference

  • Education level vs. employment status

2. Chi-square Goodness of Fit Test

This test determines whether observed data matches an expected distribution.

Example use case:

  • Customer preferences compared to equal distribution

  • Observed defects vs. expected defect rates

Chi Square Table Explained

The chi square table is used to find the critical value of the chi-square statistic based on:

  • Degrees of freedom (df)

  • Significance level (usually 0.05)

If the calculated chi-square value is greater than the table value, the result is statistically significant, and the null hypothesis is rejected.

In practice, professionals often rely on SPSS, Excel, or a chi square calculator, but understanding the chi square table is still important for interpretation and reporting.

How to Find Expected Frequency

One of the most common questions students ask is how to find expected frequency in a chi-square test.

The formula is:

Expected Frequency = (Row Total × Column Total) ÷ Grand Total

Hypothetical Example

Suppose a survey of 200 people records gender and preference for Online vs. Offline shopping.

 OnlineOfflineTotal
Male7030100
Female5050100
Total12080200

Expected frequency for Male & Online:
(100 × 120) ÷ 200 = 60

Expected frequency for Female & Offline:
(100 × 80) ÷ 200 = 40

These expected values are then compared with observed values in the chi-square formula.

Chi-square Test Formula

The chi-square statistic is calculated as:

χ² = Σ (Observed − Expected)² ÷ Expected

Each cell’s value is computed, then summed to get the final chi-square value.

Because manual calculation can be time-consuming and error-prone, we recommend using SPSS, Excel, or a calculator for accuracy.

Chi Square Calculator

A chi square calculator automates calculations by:

  • Computing expected frequencies

  • Calculating chi-square values

  • Providing p-values

However, calculators alone do not interpret results or format reports. That’s where our professional service adds value.

Using Chi-square Test in SPSS

SPSS is one of the most trusted tools for statistical analysis.

Steps in SPSS

  1. Enter categorical data in rows and columns

  2. Go to Analyze → Descriptive Statistics → Crosstabs

  3. Select variables

  4. Click Statistics and choose Chi-square

  5. Run the test

SPSS provides:

  • Chi-square value

  • Degrees of freedom

  • P-value

  • Assumptions check

Our team ensures correct interpretation and reporting according to academic standards.

Using Chi-square Test in Excel

Excel is widely used for basic statistical analysis.

Steps in Excel

  1. Create a contingency table

  2. Calculate expected frequencies

  3. Use the CHISQ.TEST() function

  4. Interpret the p-value

Excel is suitable for simpler projects, while SPSS is preferred for academic research. We support both platforms, depending on your requirements.

Hypothetical Example

Scenario

A company wants to know if customer satisfaction is related to service type.

Service TypeSatisfiedNot SatisfiedTotal
Online451560
In-store301040
Total7525100

After calculating expected frequencies and applying the chi-square formula, suppose:

  • χ² = 0.00

  • p-value = 1.00

Interpretation

Since p > 0.05, there is no significant relationship between service type and satisfaction.

Our service includes:

  • Clear hypothesis testing

  • Professional interpretation

  • Tables and explanations ready for submission

Why Choose Our Analysis Service?

  • Accurate calculations using SPSS and Excel

  • Proper use of chi square table and p-values

  • Clear explanation of results

  • Suitable for assignments, theses, and business reports

  • Plagiarism-free reports (if required)

FAQs

1. What is the purpose of a Chi-square Test?

This test checks whether observed data differs significantly from expected data or whether two categorical variables are related.

Use it when your data is categorical (nominal or ordinal) and you want to test relationships or distributions.

Yes, but calculators only provide numbers. SPSS and Excel allow proper reporting, assumptions checking, and interpretation.

We use SPSS and Microsoft Excel, depending on project requirements.

Placing an order is simple:

  1. Contact us with your dataset or research question

  2. Specify whether you need SPSS or Excel output

  3. Confirm deadline and requirements

  4. Receive professionally analyzed results with interpretation

Conclusion

The Chi-square Test is a powerful statistical tool for analyzing categorical data and testing relationships. Whether you need help understanding the chi square table, using a chi square test calculator, or performing analysis in SPSS or Excel, professional support ensures accuracy and confidence.

📌 Ready to get started?
Order your statistical analysis service today and let experts turn your data into clear, reliable insights.
Index