Lecture Unit 5 Section 5.7 Testing Hypotheses about Means 1.

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Presentation transcript:

Lecture Unit 5 Section 5.7 Testing Hypotheses about Means 1

Sweetness in cola soft drinks Cola manufacturers want to test how much the sweetness of cola drinks is affected by storage. The sweetness loss due to storage was evaluated by 10 professional tasters by comparing the sweetness before and after storage (a positive value indicates a loss of sweetness): Taster Sweetness loss      5 −0.4   7 −1.3    We want to test if storage results in a loss of sweetness, thus: H 0 :  = 0 versus H A :  > 0 where  is the mean sweetness loss due to storage. We also do not know the population parameter , the standard deviation of the sweetness loss.

As in hypothesis tests for p, a hypothesis test for  requires a few steps: 1.State the null and alternative hypotheses (H 0 versus H A ) a)Decide on a one-sided or two-sided test 2.Calculate the test statistic t and determining its degrees of freedom 3.Find the area under the t distribution with the t-table or technology 4.State the P-value (or find bounds on the P-value) and interpret the result

As in hypothesis tests for a population proportion p, a hypothesis test for a population mean  requires a few steps: 1.State the null and alternative hypotheses (H 0 versus H A ) a)Decide on a one-sided or two-sided test H 0 :  =   versus H A :  >   (1 –tail test) H 0 :  =   versus H A :  <   (1 –tail test) H 0 :  =   versus H A :  ≠    –tail test)

We perform a hypothesis test with null hypothesis H :  =  0 using the test statistic where the standard error of is. When the null hypothesis is true, the test statistic follows a t distribution with n-1 degrees of freedom. We use that model to obtain a P-value.

6 The one-sample t-test; P-Values Recall: The P-value is the probability, calculated assuming the null hypothesis H 0 is true, of observing a value of the test statistic more extreme than the value we actually observed. The calculation of the P-value depends on whether the hypothesis test is 1-tailed (that is, the alternative hypothesis is H A :   0 ) or 2-tailed (that is, the alternative hypothesis is H A :  ≠  0 ).

7 P-Values If H A :  >  0, then P-value=P(t > t 0 ) Assume the value of the test statistic t is t 0 If H A :  <  0, then P-value=P(t < t 0 ) If H A :  ≠  0, then P-value=2P(t > |t 0 |)

Sweetening colas (continued) Is there evidence that storage results in sweetness loss in colas? H 0 :  = 0 versus H a :  > 0 (one-sided test) Taster Sweetness loss ___________________________ Average 1.02 Standard deviation Degrees of freedom n − 1 = 9 Conf. Level Two Tail One Tail dfValues of t < t = 2.70 < ; thus 0.01 < P-value < Since P-value <.05, we reject H 0. There is a significant loss of sweetness, on average, following storage.

TDIST(x, degrees_freedom, tails) TDIST = P(t > x) for a random variable t following the t distribution (x positive). Use it in place of t-table to obtain the P-value. ◦ x is the absolute value of the test statistic. ◦ Deg_freedom is an integer indicating the number of degrees of freedom. ◦ Tails specifies the number of distribution tails to return. If tails = 1, TDIST returns the one-tailed P-value. If tails = 2, TDIST returns the two-tailed P-value.

< t = 2.70 < ; thus 0.01 < p <

The NYC Visitors Bureau claims that the average cost of a hotel room is $168 per night. A random sample of 25 hotels resulted in y = $ and s = $ H 0 : μ  = 168 H A : μ  168

 n = 25; df = 24 Do not reject H 0 : not sufficient evidence that true mean cost is different than $ H 0 : μ  = 168 H A : μ  t, 24 df Conf. Level Two Tail One Tail dfValues of t P-value =.158

A popcorn maker wants a combination of microwave time and power that delivers high- quality popped corn with less than 10% unpopped kernels, on average. After testing, the research department determines that power 9 at 4 minutes is optimum. The company president tests 8 bags in his office microwave and finds the following percentages of unpopped kernels: 7, 13.2, 10, 6, 7.8, 2.8, 2.2, 5.2. Do the data provide evidence that the mean percentage of unpopped kernels is less than 10%? H 0 : μ  = 10 H A : μ  10 where μ is true unknown mean percentage of unpopped kernels

 n = 8; df = 7 Reject H 0 : there is sufficient evidence that true mean percentage of unpopped kernels is less than 10%.02 0 H 0 : μ  = 10 H A : μ  t, 7 df Exact P-value =.02 Conf. Level Two Tail One Tail dfValues of t