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Introduction to Hypothesis Testing: One Population Value Chapter 8 Handout.

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Presentation on theme: "Introduction to Hypothesis Testing: One Population Value Chapter 8 Handout."— Presentation transcript:

1 Introduction to Hypothesis Testing: One Population Value Chapter 8 Handout

2 Chapter 8 Summary Hypothesis Testing for One Population Value: 1.Population Mean (  a.  (population standard deviation) is given (known):  Use z/standard normal/bell shaped distribution b.  (pop std dev) is not given but s (sample std dev) is given  Use student’s t distribution 2.Population proportion (  )  Use z/standard normal/bell shaped distribution 3.Population variance (     Use   (Chi-Square) distribution PS: population standard deviation = 

3 A hypothesis is an assumption about the population parameter.  A parameter is a Population mean or proportion  The parameter must be identified before analysis. I assume the mean GPA of this class is 3.5! © 1984-1994 T/Maker Co. What is a Hypothesis?

4 States the Assumption (numerical) to be tested e.g. The average # TV sets in US homes is at least 3 (H 0 :  3) Begin with the assumption that the null hypothesis is TRUE. (Similar to the notion of innocent until proven guilty) The Null Hypothesis, H 0 Refers to the Status Quo Always contains the ‘ = ‘ sign The Null Hypothesis may or may not be rejected.

5 Is the opposite of the null hypothesis e.g. The average # TV sets in US homes is less than 3 (H 1 :  < 3) Challenges the Status Quo Never contains the ‘=‘ sign The Alternative Hypothesis may or may not be accepted The Alternative Hypothesis, H 1 or H A

6 Steps:  State the Null Hypothesis (H 0 :   3)  State its opposite, the Alternative Hypothesis (H 1 :  < 3) Hypotheses are mutually exclusive & exhaustive Sometimes it is easier to form the alternative hypothesis first. Identify the Problem

7 Population Assume the population mean age is 50. (Null Hypothesis) REJECT The Sample Mean Is 20 Sample Null Hypothesis Hypothesis Testing Process No, not likely!

8 Sample Mean  = 50 Sampling Distribution It is unlikely that we would get a sample mean of this value...... if in fact this were the population mean.... Therefore, we reject the null hypothesis that  = 50. 20 H0H0 Reason for Rejecting H 0

9 Defines Unlikely Values of Sample Statistic if Null Hypothesis Is True  Called Rejection Region of Sampling Distribution Designated  (alpha)  Typical values are 0.01, 0.05, 0.10 Selected by the Researcher at the Start Provides the Critical Value(s) of the Test Level of Significance, 

10 Level of Significance,  and the Rejection Region H 0 :   3 H 1 :  < 3 0 0 0 H 0 :   3 H 1 :  > 3 H 0 :   3 H 1 :   3    /2 Critical Value(s) Rejection Regions

11 Type I Error  Reject True Null Hypothesis  Has Serious Consequences  Probability of Type I Error Is  Called Level of Significance Type II Error  Do Not Reject False Null Hypothesis  Probability of Type II Error Is  (Beta) Errors in Making Decisions

12 H 0 : Innocent Jury Trial Hypothesis Test Actual Situation Verdict InnocentGuilty Decision H 0 TrueH 0 False Innocent CorrectError Do Not Reject H 0 1 -  Type II Error (  ) Guilty Error Correct Reject H 0 Type I Error (  ) Power (1 -  ) Result Possibilities

13   Reduce probability of one error and the other one goes up.  &  Have an Inverse Relationship

14 True Value of Population Parameter  Increases When Difference Between Hypothesized Parameter & True Value Decreases Significance Level   Increases When  Decreases Population Standard Deviation   Increases When   Increases Sample Size n  Increases When n Decreases Factors Affecting Type II Error,       n

15 3 Methods for Hypotheses Tests Refer to Figure 8-6 (page 299) for a hypothesis test for means  with  (pop. std. dev.) is given: Method 1: Comparing X   X critical) with  X Method 2: Z test, i.e., comparing Z   critical) with Z (or Z statistics or Z calculated) Method 3: Comparing  significance level) with p-value You can modify those three methods for other cases. For example, if  is unknown, you must use student’s t distribution. If you would like to use Method 2, please compare t   t critical) with t (or t statistics or t calculated). Refer to Figure 8-8 (page 303).

16 You always get: Z   critical) from Z distribution t   t critical) from student’s t distribution.      critical) from   distribution You always get: Z or Z calculated or Z statistics from sample (page 299 and Figure 8-6) t or t calculated or t statistics from sample (Figure 8-8, page 299).   or   calculated or   statistics from sample (Figure 8-19, page 322)

17 Convert Sample Statistic (e.g., ) to Standardized Z Variable Compare to Critical Z Value(s)  If Z test Statistic falls in Critical Region, Reject H 0 ; Otherwise Do Not Reject H 0 Z-Test Statistics (  Known) Test Statistic X

18 Probability of Obtaining a Test Statistic More Extreme  or  ) than Actual Sample Value Given H 0 Is True Called Observed Level of Significance  Smallest Value of a H 0 Can Be Rejected Used to Make Rejection Decision  If p value  Do Not Reject H 0  If p value < , Reject H 0 p Value Test

19 1.State H 0 H 0 :  3 2.State H 1 H 1 :  3.Choose   =.05 4.Choose n n = 100 5.Choose Method: Z Test (Method 2) Hypothesis Testing: Steps Test the Assumption that the true mean # of TV sets in US homes is at least 3.

20 6. Set Up Critical Value(s) Z = -1.645 7. Collect Data 100 households surveyed 8. Compute Test Statistic Computed Test Stat.= -2 9. Make Statistical Decision Reject Null Hypothesis 10. Express Decision The true mean # of TV set is less than 3 in the US households. Hypothesis Testing: Steps Test the Assumption that the average # of TV sets in US homes is at least 3. (continued)

21 Assumptions  Population Is Normally Distributed  If Not Normal, use large samples  Null Hypothesis Has =, , or  Sign Only Z Test Statistic: One-Tail Z Test for Mean (  Known)

22 Z 0  Reject H 0 Z 0 0  H 0 :  H 1 :  < 0 H 0 :  0 H 1 :  > 0 Must Be Significantly Below  = 0 Small values don’t contradict H 0 Don’t Reject H 0 ! Rejection Region

23 Does an average box of cereal contain more than 368 grams of cereal? A random sample of 25 boxes showed X = 372.5. The company has specified  to be 15 grams. Test at the  0.05 level. 368 gm. Example: One Tail Test H 0 :  368 H 1 :  > 368 _

24 Z.04.06 1.6.4495.4505.4515 1.7.4591.4599.4608 1.8.4671.4678.4686.4738.4750 Z0  Z = 1 1.645.50 -.05.45. 05 1.9.4744 Standardized Normal Probability Table (Portion) What Is Z Given  = 0.05?  =.05 Finding Critical Values: One Tail Critical Value = 1.645

25  = 0.025 n = 25 Critical Value: 1.645 Test Statistic: Decision: Conclusion: Do Not Reject Ho at  =.05 No Evidence True Mean Is More than 368 Z0 1.645.05 Reject Example Solution: One Tail H 0 :  368 H 1 :  > 368

26 Z0 1.50 p Value. 0668 Z Value of Sample Statistic From Z Table: Lookup 1.50.9332 Use the alternative hypothesis to find the direction of the test. 1.0000 -.9332.0668 p Value is P(Z  1.50) = 0.0668 p Value Solution

27 0 1.50 Z Reject (p Value = 0.0668)  (  = 0.05). Do Not Reject. p Value = 0.0668  = 0.05 Test Statistic Is In the Do Not Reject Region p Value Solution

28 Does an average box of cereal contains 368 grams of cereal? A random sample of 25 boxes showed X = 372.5. The company has specified  to be 15 grams. Test at the  0.05 level. 368 gm. Example: Two Tail Test H 0 :  368 H 1 :  368

29  = 0.05 n = 25 Critical Value: ±1.96 Test Statistic: Decision: Conclusion: Do Not Reject Ho at  =.05 No Evidence that True Mean Is Not 368 Z 0 1.96.025 Reject Example Solution: Two Tail -1.96.025 H 0 :  386 H 1 :  386

30 Two tail hypotheses tests = Confidence Intervals For X = 372.5oz,  = 15 and n = 25, The 95% Confidence Interval is: 372.5 - (1.96) 15/ 25 to 372.5 + (1.96) 15/ 25 or 366.62    378.38 If this interval contains the Hypothesized mean (368), we do not reject the null hypothesis. It does. Do not reject Ho. _

31 Assumptions  Population is normally distributed  If not normal, only slightly skewed & a large sample taken Parametric test procedure t test statistic t-Test:  Unknown

32 Example: One Tail t-Test Does an average box of cereal contain more than 368 grams of cereal? A random sample of 36 boxes showed X = 372.5, and  s  15. Test at the  0.01 level. 368 gm. H 0 :  368 H 1 :  368  is not given,

33  = 0.01 n = 36, df = 35 Critical Value: 2.4377 Test Statistic: Decision: Conclusion: Do Not Reject Ho at  =.01 No Evidence that True Mean Is More than 368 Z 0 2.4377.01 Reject Example Solution: One Tail H 0 :  368 H 1 :  368

34 Involves categorical variables Fraction or % of population in a category If two categorical outcomes, binomial distribution  Either possesses or doesn’t possess the characteristic Sample proportion (p) Proportions

35 Example:Z Test for Proportion Problem: A marketing company claims that it receives  = 4% responses from its Mailing. Approach: To test this claim, a random sample of n = 500 were surveyed with x = 25 responses. Solution: Test at the  =.05 significance level.

36  =.05 n = 500, x = 25 p = x/n = 25/500 = 0.05 Do not reject Ho at Do not reject Ho at  =.05 Z Test for Proportion: Solution H 0 :  .04 H 1 :  .04 Critical Values:  1.96 Test Statistic: Decision: Conclusion: We do not have sufficient evidence to reject the company’s claim of 4% response rate. Z  p-   (1 -  ) n =.05-.04.04 (1 -.04) 500 = 1.14 Z0 Reject.025


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