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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 1 Estimates and Sample Sizes Chapter 6 M A R I O F. T R I O L A Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 2 Chapter 6 Estimate and Sample Sizes 6-1 Overview 6-2 Estimating a Population Mean: Large Samples 6-3 Estimating a Population Mean: Small Samples 6-4 Determining Sample Size 6-5 Estimating a Population Proportion 6-6 Estimating a Population Variance
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 3 6-1 Overview This chapter presents: methods for estimating population means, proportions, and variances methods for determining sample sizes necessary to estimate the above parameters.
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 4 6-2 Estimating a Population Mean: Large Samples
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 5 Definitions Estimator a sample statistic used to approximate a population parameter Estimate a specific value or range of values used to approximate some population parameter Point Estimate a single volume (or point) used to approximate a population parameter
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 6 Definitions Estimator a sample statistic used to approximate a population parameter Estimate a specific value or range of values used to approximate some population parameter Point Estimate a single volue (or point) used to approximate a popular parameter The sample mean x population mean µ. is the best point estimate of the
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 7 Confidence Interval (or Interval Estimate) a range (or an interval) of values likely to contain the true value of the population parameter Lower # < population parameter < Upper #
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 8 Confidence Interval (or Interval Estimate) a range (or an interval) of values likely to contain the true value of the population parameter Lower # < population parameter < Upper # As an example Lower # < µ < Upper #
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 9 Definition Degree of Confidence (level of confidence or confidence coefficient) the probability 1 – (often expressed as the equivalent percentage value) that the confidence interval contains the true value of the population parameter usually 95% or 99% ( = 5%) ( = 1%)
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 10 Confidence Intervals from Different Samples 98.00 98.50 x 98.0898.32 This confidence interval does not contain µ µ = 98.25 (but unknown to us) Figure 6-3
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 11 Definition Critical Value the number on the borderline separating sample statistics that are likely to occur from those that are unlikely to occur. The number z /2 is a critical value that is a z score with the property that it separates an area / 2 in the right tail of the standard normal distribution. There is an area of 1 – between the vertical borderlines at – z /2 and z /2.
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 12 If Degree of Confidence = 95%
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 13 If Degree of Confidence = 95% –z 2 z 2 95%.95.025 2 = 2.5% =.025 = 5%
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 14 If Degree of Confidence = 95% –z 2 z 2 95%.95.025 2 = 2.5% =.025 = 5% Critical Values
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 15 95% Degree of Confidence
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 16 95% Degree of Confidence.4750.025 Use Table A-2 to find a z score of 1.96 = 0.025 = 0.05
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 17 95% Degree of Confidence.025 –1.96 1.96 z 2 = 1.96 .4750.025 Use Table A-2 to find a z score of 1.96 = 0.025 = 0.05
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 18 Definition Margin of Error
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 19 Definition Margin of Error is the maximum likely difference between the observed sample mean, x, and true population mean µ.
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 20 Definition Margin of Error is the maximum likely difference between the observed sample mean, x, and true population mean µ. denoted by E µ x + E x – E
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 21 x – E Definition Margin of Error is the maximum likely difference between the observed sample mean, x, and true population mean µ. denoted by E µ x + E x – E < µ < x + E
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 22 Definition Margin of Error is the maximum likely difference between the observed sample mean, x, and true population mean µ. denoted by E µ x + E x – E x – E < µ < x + E lower limit
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 23 Definition Margin of Error is the maximum likely difference between the observed sample mean, x, and true population mean µ. denoted by E µ x + E x – E x – E < µ < x +E upper limitlower limit
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 24 Calculating the Margin of Error When Is Unknown
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 25 Calculating the Margin of Error When Is known If n > 30, we can replace in Formula 6-1 by the sample standard deviation s. If n 30, the population must have a normal distribution and we must know to use Formula 6-1. E = z /2 Formula 6-1 n
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 26 Confidence Interval 1. If using original data, round to one more decimal place than used in data. Round off Rules
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 27 Confidence Interval 1. If using original data, round to one more decimal place than used in data. 2.If given summary statistics ( n, x, s ), round to same number of decimal places as in x. Round off Rules
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 28 Procedure for Constructing a Confidence Interval for µ ( based on a large sample: n > 30 )
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 29 Procedure for Constructing a Confidence Interval for µ ( based on a large sample: n > 30 ) 1. Find the critical value z 2 that corresponds to the desired degree of confidence.
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 30 Procedure for Constructing a Confidence Interval for µ ( based on a large sample: n > 30 ) 1. Find the critical value z 2 that corresponds to the desired degree of confidence. 2. Evaluate the margin of error E= z 2 n. If the population standard deviation is unknown and n > 30, use the value of the sample standard deviation s.
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 31 Procedure for Constructing a Confidence Interval for µ ( based on a large sample: n > 30 ) 1. Find the critical value z 2 that corresponds to the desired degree of confidence. 2. Evaluate the margin of error E = z 2 n. If the population standard deviation is unknown and n > 30, use the value of the sample standard deviation s. 3. Find the values of x – E and x + E. Substitute those values in the general format of the confidence interval: x – E < µ < x + E
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 32 Procedure for Constructing a Confidence Interval for µ ( based on a large sample: n > 30 ) 1. Find the critical value z 2 that corresponds to the desired degree of confidence. 2. Evaluate the margin of error E= z 2 n. If the population standard deviation is unknown and n > 30, use the value of the sample standard deviation s. 3. Find the values of x – E and x + E. Substitute those values in the general format of the confidence interval: x – E < µ < x + E 4. Round using the confidence intervals round off rules.
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 33 Confidence Intervals from Different Samples
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 34 6-3 Determining Sample Size
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 35 Determining Sample Size
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 36 Determining Sample Size z / 2 E = n
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 37 Determining Sample Size z / 2 E = n (solve for n by algebra)
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 38 Determining Sample Size If n is not a whole number, round it up to the next higher whole number. z / 2 E = n (solve for n by algebra) z / 2 E n = 2 Formula 6-2
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 39 What happens when E is doubled ?
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 40 What happens when E is doubled ? / 2 z 1 n = = 2 1 / 2 ( z ) 2 E = 1 :
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 41 What happens when E is doubled ? Sample size n is decreased to 1/4 of its original value if E is doubled. Larger errors allow smaller samples. Smaller errors require larger samples. / 2 z 1 n = = 2 1 / 2 ( z ) 2 / 2 z 2 n = = 2 4 / 2 ( z ) 2 E = 1 : E = 2 :
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Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 42 What if is unknown ? 1. Use the range rule of thumb to estimate the standard deviation as follows: range / 4 or 2. Calculate the sample standard deviation s and use it in place of . That value can be refined as more sample data are obtained.
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