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In practice, we rarely know the population standard deviation . In the past, when the sample size was large, this did not present a problem to statisticians. They used thesample standard deviation as an estimate for and proceeded as before to calculate a confidence interval with close enough results. However, statisticians ran into problems when the sample size was small. A small sample size caused inaccuracies in theconfidence interval.
William S. Gossett (1876-1937) of the Guinness brewery in Dublin, Ireland ran into this problem. His experiments with hops and barley produced very fewsamples. Just replacing with did not produce accurate results when he tried to calculate a confidence interval. He realized that he could not use a normal distributionfor the calculation; he found that the actual distribution depends on the sample size. This problem led him to "discover" what is called the Student-t distribution . The name comes from the fact that Gosset wrote under the pen name "Student."
Up until the mid 1990s, statisticians used the normal distribution approximation for large sample sizes and only used the Student-t distribution for sample sizes of at most 30.With the common use of graphing calculators and computers, the practice is to use the Student-t distribution whenever is used as an estimate for .
If you draw a simple random sample of size from a population that has approximately a normal distribution with mean and unknown population standard deviation and calculate the t-score , then the t-scores follow a Student-t distribution with degrees of freedom . The t-score has the same interpretation as the z-score . It measures how far is from its mean . For each sample size , there is a different Student-t distribution.
The degrees of freedom , , come from the calculation of the sample standard deviation . In Chapter 2, we used deviations to calculate . Because the sum of the deviations is 0, we can find the last deviation once we know theother deviations. The other deviations can change or vary freely. We call the number the degrees of freedom (df).
Calculators and computers can easily calculate any Student-t probabilities. The TI-83,83+,84+ have a tcdf function to find the probability for given values of t. The grammar for the tcdf command is tcdf(lower bound, upper bound, degrees of freedom). However for confidence intervals, we need to use inverse probability to find the value of t when we know the probability.
For the TI-84+ we will use the invT command on the DISTRibution menu. The invT command works similarly to the invnorm.The invT command requires two inputs: invT(area to the left, degrees of freedom) The output is the t-score that corresponds to the area we specified.
The TI-83 and TI-83+ do not have the invT command but you can download an invT program from your instructor that is easy to use. (The TI-89 has an inverse T command.)
A probability table for the Student-t distribution can also be used. The table gives t-scores that correspond to the confidence level (column) and degrees of freedom (row). (The TI-86 does not have an invT program or command, so if you are using that calculator, you need to use a probability table for the Student-t distribution.) When using t-table, note that some tables are formatted to show the confidence level in the column headings, while the column headings in some tables may show only corresponding area in one or both tails.
If the population standard deviation is not known , the error bound for a population mean is:
Suppose you do a study of acupuncture to determine how effective it is in relieving pain. You measure sensory rates for 15 subjects withthe results given below. Use the sample data to construct a 95% confidence interval for the mean sensory rate for the population (assumed normal) fromwhich you took the data.
To find the confidence interval, you need the sample mean, , and the EBM.
so
The area to the right of is 0.025 and the area to the left of is 1−0.025=0.975
using invT(.975,14) on the TI-84+ calculator.
The 95% confidence interval is (7.30, 9.15) .
We estimate with 95% confidence that the true population average sensory rate is between 7.30 and 9.15.
Note: When calculating the error bound, a probability table for the Student-t distribution can also be used to find the value of t. The table gives t-scores that correspond to the confidence level (column) and degrees of freedom (row); the t-score is found where the row and column intersect in the table.
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