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					Chapter 6 Introduction to Sampling Distributions © Chapter 6 - Chapter Outcomes After studying the material in this chapter, you should be able to: • Understand the concept of sampling error. • Determine the mean and standard deviation for the sampling distribution of the sample mean. Chapter 6 - Chapter Outcomes (continued) After studying the material in this chapter, you should be able to: • Determine the mean and standard deviation for the sampling distribution of the sample proportion. • Understand the importance of the Central Limit Theorem. • Apply the sampling distributions for both the mean and proportion. Sampling Error SAMPLING ERROR-SINGLE MEAN The difference between a value (a statistic) computed from a sample and the corresponding value (a parameter) computed from a population. Where: Sampling Error  x - x  Sample mean   Population mean Sampling Error -Parameters v. Statistics• A parameter is a measure computed from the entire population • A statistic is a measure computed from a sample that has been selected from a population. Sampling Error POPULATION MEAN x   Where: N  = Population mean x = Values in the population N = Population size Sampling Error (Example 6.1) If  = 158,972 square feet and a sample of n = 5 shopping centers yields x = 155,072 square feet, then the sampling error would be: x    155,072  158,972  3,900 square feet Sampling Errors Useful Fundamental Statistical Concepts: • The size of the sampling error depends on which sample is taken. • The sampling error may be positive or negative. • There is potentially a different value for each possible sample mean. Sampling Error A simple random sample is a sample selected in such a manner that each possible sample of a given size has an equal chance of being selected. Sampling Error SAMPLE MEAN x  x Where: n x = Sample mean x = Sample value selected from the population n = Sample size Sampling Errors POPULATION PROPORTION Where: x  N  = Population proportion x = Number of items having the attribute N = Population size Sampling Errors SAMPLE PROPORTION Where: x p n p = Sample proportion x = Number of items in the sample having the attribute n = sample size Sampling Error SINGLE PROPORTION SAMPLING ERROR Sampling Error  ( p - ) Where: p  Sample proportion   Population proportion Sampling Distributions A sampling distribution is a distribution of the possible values of a statistic for a given size sample selected from a population. Sampling Distribution of the Mean THEOREM 6-1 If a population is normally distributed with a mean  and a standard deviation , the sampling distribution of the sample mean x is also normally distributed with a mean equal to the population mean (  x   ) and a standard deviation equal to the population standard deviation divided by the square-root of the  sample size  x  . n Sampling Distribution of the Mean THEOREM 6-2: THE CENTRAL LIMIT THEREOM For random samples of n observations taken from a population with mean  and standard deviation , regardless of the population’s distribution, provided the sample size is sufficiently large, the distribution of the sample mean x , will be normal with a mean equal to the population mean (  x   ) . Further, the standard deviation will equal the population standard deviation divided by the  square-root of the sample size  x  . n The larger the sample size, the better the approximation to the normal distribution. Sampling Distribution of the Mean z-VALUE FOR SAMPLING DISTRIBUTION OF z where: (x  )  n = Sample mean  = Population mean  = Population standard deviation n = Sample size x x Example of Calculation z-Value for the Sample Mean (Example 6-5) What is the probability that a sample of 100 automobile insurance claim files will yield an average claim of $4,527.77 or less if the average claim for the population is $4,560 with standard deviation of $600? z (x  )  n (4,527.77  4,560)  32.23    0.537 600 60 100 P( z  0.537)  0.5000  0.2054  0.2946 Sampling Distribution of a Proportion SAMPLING DISTRIBUTION OF p Mean   p   and Standard Error   p  where:   (1   ) n = Population proportion p = Sample proportion n = Sample size Sampling Distribution of the Mean z-VALUE FOR PROPORTIONS z where: ( p  ) p z = Number of standard errors p is from p = Sample proportion  p = Standard error of the sampling distribution  p    Mean of sample proportions  Example of Calculation z-Value for Proportion (Example 6-6) What is the probability that a sample of 500 units will contain 18% or more broken items given that observation over time has shown 15% of shipments damaged? z ( p  ) p  0.18  0.15  1.88 (0.15)(0.85) 500 P( p  1.88)  0.5000  0.4699  0.0301 Key Terms • Central Limit Theorem • Finite Population Correction Factor • Parameter • Population Proportion • Sample Proportion • Sampling Distribution • Sampling Error • Simple Random Sample • Statistic • Theorem 6-1
 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                            