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Z-test

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Intro to Econometrics

Definition

A z-test is a statistical test used to determine whether there is a significant difference between the means of two groups, particularly when the sample size is large (typically over 30) and the population variance is known. It helps in hypothesis testing by allowing researchers to evaluate the likelihood that a sample mean comes from a population with a specific mean, using the standard normal distribution. The z-test is commonly applied in various fields, providing a way to make inferences about populations based on sample data.

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5 Must Know Facts For Your Next Test

  1. The z-test is based on the z-score, which measures how many standard deviations an element is from the mean.
  2. It is used when the population standard deviation is known, which distinguishes it from other tests like the t-test.
  3. A z-test can be one-tailed or two-tailed, depending on whether you are testing for a difference in one direction or both directions.
  4. The critical value for a z-test depends on the chosen significance level (commonly 0.05), which indicates the threshold for rejecting the null hypothesis.
  5. In practice, z-tests are often used in quality control and clinical trials to compare sample means with known population parameters.

Review Questions

  • How does a z-test help in hypothesis testing, and what are its key assumptions?
    • A z-test assists in hypothesis testing by allowing researchers to compare sample means against a known population mean to see if there is a statistically significant difference. Key assumptions include having a large sample size (n > 30), knowledge of the population variance, and that the data follows a normal distribution. If these conditions are met, researchers can confidently use the z-test to draw conclusions about their hypotheses.
  • Compare and contrast the z-test and t-test regarding their application and underlying assumptions.
    • The z-test and t-test both serve to test hypotheses about means, but they differ mainly in sample size and variance knowledge. A z-test is applied when the sample size is large and the population variance is known, while a t-test is used for smaller samples where the population variance is unknown. The t-test accounts for additional uncertainty due to smaller sample sizes, leading to different distributions (t-distribution vs. normal distribution) that affect critical values for hypothesis testing.
  • Evaluate how changes in sample size influence the choice between using a z-test or a t-test in research.
    • As sample size increases, researchers are more inclined to use a z-test due to increased accuracy in estimating population parameters and reduced variability in sample means. When the sample size exceeds 30, the central limit theorem suggests that the sampling distribution of the mean approaches normality, justifying the use of a z-test. Conversely, with smaller samples (below 30), using a t-test becomes essential as it compensates for higher variability and provides more reliable confidence intervals and hypothesis testing outcomes.
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