Statisticians use a confidence interval to describe the amount of uncertainty associated with a sample estimate of a population parameter.
How to Interpret Confidence Intervals
Suppose that a 90% confidence interval states that the population mean is greater than 100 and less than 200. How would you interpret this statement?
Some people think this means there is a 90% chance that the population mean falls between 100 and 200. This is incorrect. Like any population parameter, the population mean is a constant, not a random variable. It does not change. The probability that a constant falls within any given range is always 0.00 or 1.00.
The confidence level describes the uncertainty associated with a sampling method. Suppose we used the same sampling method to select different samples and to compute a different interval estimate for each sample. Some interval estimates would include the true population parameter and some would not. A 90% confidence level means that we would expect 90% of the interval estimates to include the population parameter; a 95% confidence level means that 95% of the intervals would include the parameter; and so on.
Confidence Interval Data Requirements
To express a confidence interval, you need three pieces of information.
Confidence level
Statistic
Margin of error
Given these inputs, the range of the confidence interval is defined by the sample statistic + margin of error. And the uncertainty associated with the confidence interval is specified by the confidence level.
Often, the margin of error is not given; you must calculate it. Previously, we described how to compute the margin of error.
How to Construct a Confidence Interval
There are four steps to constructing a confidence interval.
Identify a sample statistic. Choose the statistic (e.g, sample mean, sample proportion) that you will use to estimate a population parameter.
Select a confidence level. As we noted in the previous section, the confidence level describes the uncertainty of a sampling method. Often, researchers choose 90%, 95%, or 99% confidence levels; but any percentage can be used.
Find the margin of error. If you are working on a homework problem or a test question, the margin of error may be given. Often, however, you will need to compute the margin of error, based on one of the following equations.
Margin of error = Critical value * Standard deviation of statistic
Margin of error = Critical value * Standard error of statistic
For guidance, see how to compute the margin of error.
Specify the confidence interval. The uncertainty is denoted by the confidence level. And the range of the confidence interval is defined by the following equation.
Confidence interval = sample statistic + Margin of error
The sample problem in the next section applies the above four steps to construct a 95% confidence interval for a mean score. The next few lessons discuss this topic in greater detail.
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1. What is a confidence interval and how is it used in statistical analysis? |
2. How is the confidence level determined for a confidence interval? |
3. How is the sample size related to the width of a confidence interval? |
4. Can a confidence interval be used to determine statistical significance? |
5. What are some practical applications of confidence intervals? |
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