# Z-test- definition, formula, examples, uses, z-test vs t-test

## z-test definition

z-test is a statistical tool used for the comparison or determination of the significance of several statistical measures, particularly the mean in a sample from a normally distributed population or between two independent samples.

• Like t-tests, z tests are also based on normal probability distribution.
• Z-test is the most commonly used statistical tool in research methodology, with it being used for studies where the sample size is large (n>30).
• In the case of the z-test, the variance is usually known.
• Z-test is more convenient than t-test as the critical value at each significance level in the confidence interval is the sample for all sample sizes.
• A z-score is a number indicating how many standard deviations above or below the mean of the population is. ## z-test formula

For the normal population with one sample: where   is the mean of the sample, and µ is the assumed mean, σ is the standard deviation, and n is the number of observations.

z-test for the difference in mean: where 1 and 2 are the means of two samples, σ is the standard deviation of the samples, and n1 and n2 are the numbers of observations of two samples.

### One sample z-test (one-tailed z-test)

• One sample z-test is used to determine whether a particular population parameter, which is mostly mean, significantly different from an assumed value.
• It helps to estimate the relationship between the mean of the sample and the assumed mean.
• In this case, the standard normal distribution is used to calculate the critical value of the test.
• If the z-value of the sample being tested falls into the criteria for the one-sided tets, the alternative hypothesis will be accepted instead of the null hypothesis.
• A one-tailed test would be used when the study has to test whether the population parameter being tested is either lower than or higher than some hypothesized value.
• A one-sample z-test assumes that data are a random sample collected from a normally distributed population that all have the same mean and same variance.
• This hypothesis implies that the data is continuous, and the distribution is symmetric.
• Based on the alternative hypothesis set for a study, a one-sided z-test can be either a left-sided z-test or a right-sided z-test.
• For instance, if our H0: µ0 = µ and Ha: µ < µ0, such a test would be a one-sided test or more precisely, a left-tailed test and there is one rejection area only on the left tail of the distribution.
• However, if H0: µ = µ0 and Ha: µ > µ0, this is also a one-tailed test (right tail), and the rejection region is present on the right tail of the curve.

### Two sample z-test (two-tailed z-test)

• In the case of two sample z-test, two normally distributed independent samples are required.
• A two-tailed z-test is performed to determine the relationship between the population parameters of the two samples.
• In the case of the two-tailed z-test, the alternative hypothesis is accepted as long as the population parameter is not equal to the assumed value.
• The two-tailed test is appropriate when we have H0: µ = µ0 and Ha: µ ≠ µ0 which may mean µ > µ0 or µ < µ0
• Thus, in a two-tailed test, there are two rejection regions, one on each tail of the curve.

## z-test examples

If a sample of 400 male workers has a mean height of 67.47 inches, is it reasonable to regard the sample as a sample from a large population with a mean height of 67.39 inches and a standard deviation of 1.30 inches at a 5% level of significance?

Taking the null hypothesis that the mean height of the population is equal to 67.39 inches, we can write:

H0 : µ = 67.39

Ha: µ ≠ 67.39

= 67.47“, σ = 1.30“, n = 400

Assuming the population to be normal, we can work out the test statistic z as under: As Ha is two-sided in the given question, we shall be applying a two-tailed test for determining the rejection regions at a 5% level of significance which comes to as under, using normal curve area table:

R : | z | > 1.96

The observed value of t is 1.231 which is in the acceptance region since R: | z | > 1.96, and thus, H0 is accepted.

## z-test applications

• Z-test is performed in studies where the sample size is larger, and the variance is known.
• It is also used to determine if there is a significant difference between the mean of two independent samples.
• The z-test can also be used to compare the population proportion to an assumed proportion or to determine the difference between the population proportion of two samples.

## Z-test vs T-test (8 major differences)

 Basis for comparison T-test Z-test Definition The t-test is a test in statistics that is used for testing hypotheses regarding the mean of a small sample taken population when the standard deviation of the population is not known. z-test is a statistical tool used for the comparison or determination of the significance of several statistical measures, particularly the mean in a sample from a normally distributed population or between two independent samples. Sample size The t-test is usually performed in samples of a smaller size (n≤30). z-test is generally performed in samples of a larger size (n>30). Type of distribution of population t-test is performed on samples distributed on the basis of t-distribution. z-tets is performed on samples that are normally distributed. Assumptions A t-test is not based on the assumption that all key points on the sample are independent. z-test is based on the assumption that all key points on the sample are independent. Variance or standard deviation Variance or standard deviation is not known in the t-test. Variance or standard deviation is known in z-test. Distribution The sample values are to be recorded or calculated by the researcher. In a normal distribution, the average is considered 0 and the variance as 1. Population parameters In addition, to the mean, the t-test can also be used to compare partial or simple correlations among two samples. In addition, to mean, z-test can also be used to compare the population proportion. Convenience t-tests are less convenient as they have separate critical values for different sample sizes. z-test is more convenient as it has the same critical value for different sample sizes.

## References and Sources

• C.R. Kothari (1990) Research Methodology. Vishwa Prakasan. India.
• https://ncss-wpengine.netdna-ssl.com/wp-content/themes/ncss/pdf/Procedures/PASS/One-Sample_Z-Tests.pdf
• https://www.wallstreetmojo.com/z-test-vs-t-test/
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