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1 STAT 500 – Statistics for Managers STAT 500 Statistics for Managers.

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1 1 STAT 500 – Statistics for Managers STAT 500 Statistics for Managers

2 2 STAT 500 – Statistics for Managers Estimation Confidence Intervals

3 3 STAT 500 – Statistics for Managers Learning Objectives Define a probability interval. Calculate and interpret a probability interval for a specific random variable. Define a confidence interval. Calculate and interpret a confidence interval for the population mean.

4 4 STAT 500 – Statistics for Managers Learning Objectives (cont.) Calculate and interpret one-sided confidence intervals, and Apply confidence intervals to understand the mean of 0,1 population

5 5 STAT 500 – Statistics for Managers Factors Affecting Interval Width Data dispersion –Measured by  Sample size   X =  /  n Level of confidence (1 -  ) –Affects Z Intervals extend from  X - Z   X to  X + Z   X © 1984-1994 T/Maker Co.

6 Confidence Interval Mean (  Unknown) Assumptions –Population standard deviation is unknown –Population must be normally distributed Use Student’s t distribution Confidence interval estimate

7 Student’s t Distribution 0 t (df = 5) Standard normal t (df = 13) Bell- shaped Symmetric ‘Fatter’ tails Note: As d.f. approach 120, Z and t become very similar

8 Student’s t Table Assume: n = 3 df= n - 1 = 2  =.10  /2 =.05 2.920 t values  / 2.05

9 Degrees of Freedom Number of observations that are free to vary after sample statistic has been calculated Example –Sum of 3 numbers is 6 X 1 = 1 (or any number) X 2 = 2 (or any number) X 3 = 3 (cannot vary) Sum = 6 degrees of freedom = n -1 = 3 -1 = 2

10 Estimation Example Mean (  Unknown) A random sample of n = 25 has  X = 50 & S = 8. Set up a 95% confidence interval estimate for .

11 11 STAT 500 – Statistics for Managers You’re a time study analyst in manufacturing. You’ve recorded the following task times (min.): 3.6, 4.2, 4.0, 3.5, 3.8, 3.1. What is the 90% confidence interval estimate of the population mean task time?

12 12 STAT 500 – Statistics for Managers  X = 3.7 S = 3.8987 n = 6, df = n - 1 = 6 - 1 = 5 S /  n = 3.8987 /  6 = 1.592 t.05,5 = 2.0150 3.7 - (2.015)(1.592)  3.7 + (2.015)(1.592) 0.492  6.908

13 Confidence Interval for the Mean The Middle of the C.I. is the Sample Mean The Width of the C.I. is Determined by: –The Confidence Desired Higher Confidence  Wider Interval -z.025 z.025  -z.005 z.005 

14 14 STAT 500 – Statistics for Managers Confidence Interval for the Mean The Middle of the C.I. is the Sample Mean The Width of the C.I. is Determined by: –The Confidence Desired Higher Confidence  Wider Interval –The Variability of the Data: Standard Deviation Greater Variability  Wider Interval

15 15 STAT 500 – Statistics for Managers Confidence Interval for the Mean The Middle of the C.I. is the Sample Mean The Width of the C.I. is Determined by: –The Confidence Desired Higher Confidence  Wider Interval –The Variability of the Data: Standard Deviation Greater Variability  Wider Interval –The Sample Size, n Larger Sample Size  Narrower Interval

16 16 STAT 500 – Statistics for Managers Two Common Interpretations If many samples were taken and a 95% confidence interval computed from each, the population mean would be contained in about 95% of them. With 95% confidence, the population mean lies within the 95% confidence interval endpoints.

17 17 STAT 500 – Statistics for Managers Confidence Interval for the Proportion

18 18 STAT 500 – Statistics for Managers How to compute a confidence interval for a population proportion

19 19 STAT 500 – Statistics for Managers Pre-Election Poll in Anywhere, USA For prop 1565% Against prop 1535% What is the percentage of all voters who favor Prop 15 ? How much uncertainty is there in the estimated percentage ?

20 20 STAT 500 – Statistics for Managers Population Parameter p  = ??? 1 Inductive Inference

21 21 STAT 500 – Statistics for Managers Population Parameter Sample Statistic p = ??? p s =.55 1 2 Inductive Inference

22 Population Parameter Sample Statistical Analysis Statistic Inference p  = ??? p s =.55 1 2 3 Inductive Inference

23 Binomial Probabilities : Application to Opinion Polling Assumptions n independent repeatable trials one of two mutually exclusive outcomes p = Pr(success) remains constant (the same) on each trial (Population Size is VERY Large) k = # of successes in the n trials Chance Situation or “Trial” Repeated n Times

24 24 STAT 500 – Statistics for Managers Central Limit Theorem for Binomial Proportions If Independent Observations Sample Size is Sufficiently Large Then

25 Confidence Interval Derivation z-z 1-  0

26 1. Estimate p : Confidence Interval for a Proportion

27 1. Estimate p : 2. Estimate SE : Confidence Interval for a Proportion

28 1. Estimate p : 2. Estimate SE : 3. Obtain the z Value (Normal Table) e.g. 95% Confidence Interval, z = 1.96 Confidence Interval for a Proportion

29 1. Estimate p : 2. Estimate SE : 3. Obtain the z Value (Normal Table) e.g. 95% Confidence Interval, z = 1.96 4. Calculate Confidence Interval for a Proportion

30 30 STAT 500 – Statistics for Managers Latest Poll Suppose n = 1,500 and p s =.55 95% Confidence Interval

31 31 STAT 500 – Statistics for Managers THANK YOU


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