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Chapter 7 - Estimating Parameters and Determining Sample Sizes

7-1 Estimating a Population Proportion

  • Point estimate: the sample proportion is the best point estimate of the population proportion p

  • Confidence interval: we can use a sample proportion to construct a confidence interval estimate of the true value of a population proportion, and we should know how to construct and interpret such confidence intervals

  • Sample size: we should know how to find the sample size necessary to estimate a population proportion

  • Unbiased estimator: we use p hat as the point estimate of p because it is unbiased and it is the most consistent of the estimators that could be used

  • confidence interval is a range of values used to estimate the true value of a population parameter

  • confidence level is the probability 1-alpha that the confidence interval actually does contain the population parameter, assuming that the estimation process is repeated a large number of times

  • How to interpret a CI: "We are __% confident that the interval from ___ to ___ actually does contain the true value of the population proportion p"

  • critical value is the number on the borderline separating sample statistics that are significantly high or low from those that are not significant

  • The difference between the sample proportion p hat and the population proportion p is an error

    • The maximum likely amount of that error is the margin of error, denoted by E

  • p hat = (upper CI limit + lower CI limit) / 2

  • E = (upper CI limit - lower CI limit) / 2

  • The coverage probability of a CI is the actual proportion of such confidence intervals that contain the true population proportion

7-2 Estimating a Population Mean

  • The sample mean x bar is the best point estimate of the population mean mu

  • Requirement of "normality of n>30" means that the distribution should be somewhat symmetric / sample size must be greater than 30

  • A student t distribution is commonly referred to as a t distribution

  • Degrees of freedom for a collection of sample data is the number of sample values that can vary after certain restrictions have been imposed on all data values

    • degrees of freedom = n -1

  • The overlapping of confidence intervals should not be used for making formal / final conclusions about the equality of means

  • When dealing with unknown sigma when finding sample sizes, sigma is about range/4 is a rule of thumb

7-3 Estimating a Population Standard Deviation or Variance

  • When constructing a confidence interval estimate of a population standard deviation, we construct the confidence interval using the X squared distribution

  • The sample statistic X^2 (chi-squared) has a sampling distribution called the chi-square distribution

7-4 Bootstrapping: Using Technology for Estimates

  • Important requirements such that the sample is a simple random sample:

    • CI for proportion: there are at least 5 successes and at least 5 failures

    • CI for mean: the population is normally distributed or n > 30

    • CI for sigma or sigma squared: the population must have normally distributed values, even if the sample is large

  • Nonparametric or distribution-free method means the method does not require the sample to be collected from a normal or any other particular distribution

  • bootstrap sample is another random sample of n values obtained with replacement from the original sample

  • An effective use of the bootstrap method typically requires the use of software to generate 1000 or more bootstrap samples

GJ

Chapter 7 - Estimating Parameters and Determining Sample Sizes

7-1 Estimating a Population Proportion

  • Point estimate: the sample proportion is the best point estimate of the population proportion p

  • Confidence interval: we can use a sample proportion to construct a confidence interval estimate of the true value of a population proportion, and we should know how to construct and interpret such confidence intervals

  • Sample size: we should know how to find the sample size necessary to estimate a population proportion

  • Unbiased estimator: we use p hat as the point estimate of p because it is unbiased and it is the most consistent of the estimators that could be used

  • confidence interval is a range of values used to estimate the true value of a population parameter

  • confidence level is the probability 1-alpha that the confidence interval actually does contain the population parameter, assuming that the estimation process is repeated a large number of times

  • How to interpret a CI: "We are __% confident that the interval from ___ to ___ actually does contain the true value of the population proportion p"

  • critical value is the number on the borderline separating sample statistics that are significantly high or low from those that are not significant

  • The difference between the sample proportion p hat and the population proportion p is an error

    • The maximum likely amount of that error is the margin of error, denoted by E

  • p hat = (upper CI limit + lower CI limit) / 2

  • E = (upper CI limit - lower CI limit) / 2

  • The coverage probability of a CI is the actual proportion of such confidence intervals that contain the true population proportion

7-2 Estimating a Population Mean

  • The sample mean x bar is the best point estimate of the population mean mu

  • Requirement of "normality of n>30" means that the distribution should be somewhat symmetric / sample size must be greater than 30

  • A student t distribution is commonly referred to as a t distribution

  • Degrees of freedom for a collection of sample data is the number of sample values that can vary after certain restrictions have been imposed on all data values

    • degrees of freedom = n -1

  • The overlapping of confidence intervals should not be used for making formal / final conclusions about the equality of means

  • When dealing with unknown sigma when finding sample sizes, sigma is about range/4 is a rule of thumb

7-3 Estimating a Population Standard Deviation or Variance

  • When constructing a confidence interval estimate of a population standard deviation, we construct the confidence interval using the X squared distribution

  • The sample statistic X^2 (chi-squared) has a sampling distribution called the chi-square distribution

7-4 Bootstrapping: Using Technology for Estimates

  • Important requirements such that the sample is a simple random sample:

    • CI for proportion: there are at least 5 successes and at least 5 failures

    • CI for mean: the population is normally distributed or n > 30

    • CI for sigma or sigma squared: the population must have normally distributed values, even if the sample is large

  • Nonparametric or distribution-free method means the method does not require the sample to be collected from a normal or any other particular distribution

  • bootstrap sample is another random sample of n values obtained with replacement from the original sample

  • An effective use of the bootstrap method typically requires the use of software to generate 1000 or more bootstrap samples