How to Read the F-Distribution Table | Online Statistics library | StatisticalPoint.com (2024)

This tutorial explains how to read and interpret the F-distribution table.

What is the F-Distribution Table?

TheF-distribution tableis a table that shows the critical values of the F distribution. To use the F distribution table, you only need three values:

  • The numerator degrees of freedom
  • The denominator degrees of freedom
  • The alpha level (common choices are 0.01, 0.05, and 0.10)

The following table shows the F-distribution table for alpha = 0.10. The numbers along the top of the table represent the numerator degrees of freedom (labeled asDF1in the table) and the numbers along the left hand side of the table represent the denominator degrees of freedom (labeled asDF2in the table).

Feel free to click on the table to zoom in.

The critical values within the table are often compared to the F statistic of an F test. If the F statistic is greater than the critical value found in the table, then you can reject the null hypothesis of the F test and conclude that the results of the test are statistically significant.

Examples of How to Use the F-Distribution Table

The F-distribution table is used to find the critical value for an F test. The three most common scenarios in which you’ll conduct an F test are as follows:

  • F test in regression analysis to test for the overall significance of a regression model.
  • F test in ANOVA (analysis of variance) to test for an overall difference between group means.
  • F test to find out if two populations have equal variances.

Let’s walk through an example of how to use the F-distribution table in each of these scenarios.

F Test in Regression Analysis

Suppose we conduct a multiple linear regression analysis usinghours studiedandprepexams takenas predictor variables andfinal exam scoreas the response variable. When we run the regression analysis, we receive the following output:

SourceSSdfMSFP
Regression546.532273.265.090.033
Residual483.13953.68
Total1029.6611

In regression analysis, the f statistic iscalculated as regression MS / residual MS. This statistic indicates whether theregressionmodel provides a better fit to the data than a model that contains noindependent variables. In essence, it tests if the regression model as a whole is useful.

In this example,the F statistic is 273.26 / 53.68 = 5.09.

Suppose we want to know if this F statistic is significant at level alpha = 0.05. Using the F-distribution table for alpha = 0.05, with numerator of degrees of freedom2(df for Regression)and denominator degrees of freedom9(df for Residual), we find that the F critical value is4.2565.

Since our f statistic (5.09) is greater than the F critical value(4.2565), we can conclude that the regression model as a whole is statistically significant.

F test in ANOVA

Suppose we want to know whether or not three different studying techniques lead to different exam scores. To test this, we recruit 60 students. We randomly assign 20 students each to use one of the three studying techniques for one month in preparation for an exam. Once all of the students take the exam, we then conduct a one-way ANOVA to find out whether or not studying technique has an impact on exam scores. The following table shows the results of the one-way ANOVA:

SourceSSdfMSFP
Treatment58.8229.41.740.217
Error202.81216.9
Total261.614

In an ANOVA, the f statistic iscalculated as Treatment MS / Error MS. This statistic indicates whether or not the mean score for all three groups is equal.

In this example,the F statistic is 29.4 / 16.9 = 1.74.

Suppose we want to know if this F statistic is significant at level alpha = 0.05. Using the F-distribution table for alpha = 0.05, with numerator of degrees of freedom2(df for Treatment)and denominator degrees of freedom12(df for Error), we find that the F critical value is3.8853.

Since our f statistic (1.74) is not greater than the F critical value(3.8853), we conclude that there is not a statistically significant difference between the mean scores of the three groups.

F test for Equal Variances of Two Populations

Suppose we want to know whether or not the variances for two populations are equal. To test this, we can conduct an F-test for equal variances in which we take a random sample of 25 observations from each population and find the sample variance for each sample.

The test statistic for this F-Test is defined as follows:

F-statistic=s12/ s22

wheres12 and s22are the sample variances. The further this ratio is from one, the stronger the evidence for unequal population variances.

The critical value for the F-Test is defined as follows:

F Critical Value= the value found inthe F-distribution table with n1-1 and n2-1 degrees of freedom and a significance level ofα.

Suppose the sample variance for sample 1 is 30.5 and the sample variance for sample 2 is 20.5. This means that our test statistic is 30.5 / 20.5 = 1.487. To find out if this test statistic is significant at alpha = 0.10, we can find the critical value in the F-distribution table associated with alpha = 0.10, numerator df = 24, and denominator df = 24. This number turns out to be 1.7019.

Since our f statistic (1.487) is not greater than the F critical value(1.7019), we conclude that there is not a statistically significant difference between the variances of these two populations.

Additional Resources

For a complete set of F-distribution tables for alpha values 0.001, 0.01, 0.025, 0.05, and 0.10, check out this page.

How to Read the F-Distribution Table | Online Statistics library | StatisticalPoint.com (2024)

FAQs

How to read the F statistic? ›

If the F value is smaller than the critical value in the F table, then the model is not significant. If the F value is larger, then the model is significant. Remember that the statistical meaning of significant is slightly different from its everyday usage.

How do you explain F distribution? ›

The F-distribution is derived from a ratio involving two populations. There is a sample from each of these populations and thus there are degrees of freedom for both of these samples. In fact, we subtract one from both of the sample sizes to determine our two numbers of degrees of freedom.

What is df1 and df2 in F test? ›

The F distribution has two different degrees of freedom: df1 and df2. The formula for df1 is the following: d f 1 = g − 1 where g is the amount of groups. The formula for df2 is the following: d f 2 = N − g where N is the sample size of all groups combined and g is the number of groups.

What F value is significant? ›

If the F statistic is higher than the critical value (the value of F that corresponds with your alpha value, usually 0.05), then the difference among groups is deemed statistically significant.

How to interpret F value and p-value? ›

A big F, with a small p-value, means that the null hypothesis is discredited, and we would assert that the means are significantly different (while a small F, with a big p-value indicates that they are not significantly different).

How do you interpret F statistic in Excel? ›

The F statistic is a ratio of the variances of the two samples. The F statistic is compared with the F critical value to determine whether the null hypothesis may be supported or rejected. If the F value is greater than the F critical value, the null hypothesis is rejected.

How do you interpret F statistic in linear regression? ›

F-statistic can be used to understand if the given set of predictor variables are significant in explaining the variance of the dependent variable. If the F-statistic > F-critical or if the Prob (F-statistic) is approximately 0 then we reject the null hypothesis. In other words, the given regression makes sense.

What is the conclusion of the F distribution? ›

Hypothesis Testing using the F-Distribution

If the F-statistic is greater than the critical value, then we reject the null hypothesis and conclude tthat the means of the populations are significantly different from each other.

What does the F ratio tell you? ›

The F-ratio is the ratio of the between group variance to the within group variance. It can be compared to a critical F-ratio, which is determined by rejecting or accepting the null hypothesis, which determines whether or not there are no differences between groups.

What is F distribution used for best answer? ›

A . The F Distribution is primarily used for comparing the variances of two populations. More specifical...

How to read F tables? ›

The following table shows the F-distribution table for alpha = 0.10. The numbers along the top of the table represent the numerator degrees of freedom (labeled as DF1 in the table) and the numbers along the left hand side of the table represent the denominator degrees of freedom (labeled as DF2 in the table).

What does the F-test tell you? ›

F test is a statistical test that is used in hypothesis testing to check whether the variances of two populations or two samples are equal or not. In an f test, the data follows an f distribution. This test uses the f statistic to compare two variances by dividing them.

How do you compare F-test results? ›

If the p-value is large (greater than α) then the first model is statistically better than the second. If the p-value is small (less than 1-α) then the second model is statistically better than the first.

How do you read a probability distribution table? ›

The first is that, in general, the first column on the left will be the x variable or the different outcomes. The column to the right will then contain the probability that each of the outcomes will occur. Step 2: A probability distribution should show all of the probabilities of each outcome.

How do you interpret F value in ANOVA table? ›

The F ratio is the ratio of two mean square values. If the null hypothesis is true, you expect F to have a value close to 1.0 most of the time. A large F ratio means that the variation among group means is more than you'd expect to see by chance.

How do you read a normal probability distribution table? ›

To find P(x>1.46) we want just the part to the right of the shaded area. We get this by taking 0.5000 and subtracting the to the table value. To find P(x>1.46) the graph and table give it directly. To find P(x<1.46) we use the symmetry of the distribution to realize that P(x<1.46)=1.000 – P(x<1.46).

How do you read a critical value table in t distribution? ›

How to Use the Table:
  1. Find your degrees of freedom in the df column and use that row. to find the next smaller number.
  2. Read the probability in the top row. ...
  3. If your t is to the right of all numbers, then P < 0.0005 (good!)
  4. Remember that P < 0.05 is the arbitrary value that is generally accepted to be significant.

References

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