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Chapter 3

Chapter 3. Inferences About Process Quality. 3-1. Statistics and Sampling Distributions. Statistical methods are used to make decisions about a process Is the process out of control? Is the process average you were given the true value? What is the true process variability?.

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Chapter 3

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  1. Chapter 3 Inferences About Process Quality Introduction to Statistical Quality Control, 4th Edition

  2. 3-1. Statistics and Sampling Distributions • Statistical methods are used to make decisions about a process • Is the process out of control? • Is the process average you were given the true value? • What is the true process variability? Introduction to Statistical Quality Control, 4th Edition

  3. 3-1. Statistics and Sampling Distributions • Statistics are quantities calculated from a random sample taken from a population of interest. • The probability distribution of a statistic is called a sampling distribution. Introduction to Statistical Quality Control, 4th Edition

  4. 3-1.1 Sampling from a Normal Distribution • Let X represent measurements taken from a normal distribution. X • Select a sample of size n, at random, and calculate the sample mean, • Then Introduction to Statistical Quality Control, 4th Edition

  5. 3-1.1 Sampling from a Normal Distribution • Probability Example • The life of an automotive battery is normally distributed with mean 900 days and standard deviation 35 days. What is the probability that a random sample of 25 batteries will have an average life of more than 1000 days? Introduction to Statistical Quality Control, 4th Edition

  6. 3-1.1 Sampling from a Normal Distribution • Chi-square (2) Distribution • If x1, x2, …, xn are normally and independently distributed random variables with mean zero and variance one, then the random variable is distributed as chi-square with n degrees of freedom Introduction to Statistical Quality Control, 4th Edition

  7. 3-1.1 Sampling from a Normal Distribution • Chi-square (2) Distribution • Furthermore, the sampling distribution of is chi-square with n – 1 degrees of freedom when sampling from a normal population. Introduction to Statistical Quality Control, 4th Edition

  8. 3-1.1 Sampling from a Normal Distribution • Chi-square (2) Distribution for various degrees of freedom. Introduction to Statistical Quality Control, 4th Edition

  9. 3-1.1 Sampling from a Normal Distribution • t-distribution • If x is a standard normal random variable and if y is a chi-square random variable with k degrees of freedom, then is distributed as t with k degrees of freedom. Introduction to Statistical Quality Control, 4th Edition

  10. 3-1.1 Sampling from a Normal Distribution • F-distribution • If w and y are two independent chi-square random variables with u and v degrees of freedom, respectively, then is distributed as F with u numerator degrees of freedom and v denominator degrees of freedom. Introduction to Statistical Quality Control, 4th Edition

  11. 3-1.2 Sampling from a Bernoulli Distribution • A random variable, x, with probability function is called a Bernoulli random variable. • The sum of a sample from a Bernoulli process has a binomial distribution with parameters n and p. Introduction to Statistical Quality Control, 4th Edition

  12. 3-1.2 Sampling from a Bernoulli Distribution • x1, x2, …, xn taken from a Bernoulli process • The sample mean is a discrete random variable given by • The mean and variance of are Introduction to Statistical Quality Control, 4th Edition

  13. 3-1.3 Sampling from a Poisson Distribution • Consider a random sample of size n, x1, x2, …, xn, taken from a Poisson process with parameter  • The sum, x = x1 + x2 + … + xn is also Poisson with parameter n. • The sample mean is a discrete random variable given by • The mean and variance of are Introduction to Statistical Quality Control, 4th Edition

  14. 3-2. Point Estimation of Process Parameters • Parameters are values representing the population. Ex) The population mean and variance, respectively. • Parameters in reality are often unknown and must be estimated. • Statistics are estimates of parameters. Ex) The sample mean and sample variance, respectively. Introduction to Statistical Quality Control, 4th Edition

  15. 3-2. Point Estimation of Process Parameters Two properties of good point estimators • The point estimator should be unbiased. • The point estimator should have minimum variance. Introduction to Statistical Quality Control, 4th Edition

  16. 3-3. Statistical Inference for a Single Sample Two categories of statistical inference: • Parameter Estimation • Hypothesis Testing Introduction to Statistical Quality Control, 4th Edition

  17. 3-3. Statistical Inference for a Single Sample • A statistical hypothesis is a statement about the values of the parameters of a probability distribution. Introduction to Statistical Quality Control, 4th Edition

  18. 3-3. Statistical Inference for a Single Sample • Steps in Hypothesis Testing • Identify the parameter of interest • State the null hypothesis, H0 and alternative hypotheses, H1. • Choose a significance level • State the appropriate test statistic • State the rejection region • Compare the value of test statistic to the rejection region. Can the null hypothesis be rejected? Introduction to Statistical Quality Control, 4th Edition

  19. 3-3. Statistical Inference for a Single Sample • Example: An automobile manufacturer claims a particular automobile can average 35 mpg (highway). • Suppose we are interested in testing this claim. We will sample 25 of these particular autos and under identical conditions calculate the average mpg for this sample. • Before actually collecting the data, we decide that if we get a sample average less than 33 mpg or more than 37 mpg, we will reject the makers claim. (Critical Values) Introduction to Statistical Quality Control, 4th Edition

  20. 3-3. Statistical Inference for a Single Sample • Example (continued) • H0: H1: • From the sample of 25 cars, the average mpg was found to be 31.5. What is your conclusion? Introduction to Statistical Quality Control, 4th Edition

  21. 3-3. Statistical Inference for a Single Sample Choice of Critical Values • How are the critical values chosen? • Wouldn’t it be easier to decide “how much room for error you will allow” instead of finding the exact critical values for every problem you encounter? OR • Wouldn’t be easier to set the size of the rejection region, rather than setting the critical values for every problem? Introduction to Statistical Quality Control, 4th Edition

  22. 3-3. Statistical Inference for a Single Sample Significance Level • The level of significance,  determines the size of the rejection region. • The level of significance is a probability. It is also known as the probability of a “Type I error” (want this to be small) • Type I error - rejecting the null hypothesis when it is true. • How small? Usually want Introduction to Statistical Quality Control, 4th Edition

  23. 3-3. Statistical Inference for a Single Sample Types of Error • Type I error - rejecting the null hypothesis when it is true. • Pr(Type I error) = . Sometimes called the producer’s risk. • Type II error - not rejecting the null hypothesis when it is false. • Pr(Type II error) = . Sometimes called the consumer’s risk. Introduction to Statistical Quality Control, 4th Edition

  24. 3-3. Statistical Inference for a Single Sample An Engine Explodes H0: An automobile engine explodes when started. H1: An automobile engine does not explode when started. Which error would you take action to avoid? Whose risk is higher, the producer’s or the consumer’s? Introduction to Statistical Quality Control, 4th Edition

  25. 3-3. Statistical Inference for a Single Sample Power of a Test • The Power of a test of hypothesis is given by 1 -  • That is, 1 -  is the probability of correctly rejecting the null hypothesis, or the probability of rejecting the null hypothesis when the alternative is true. Introduction to Statistical Quality Control, 4th Edition

  26. 3-3.1 Inference on the Mean of a Population, Variance Known Hypothesis Testing • Hypotheses: H0: H1: • Test Statistic: • Significance Level,  • Rejection Region: • If Z0 falls into either of the two regions above, reject H0 Introduction to Statistical Quality Control, 4th Edition

  27. 3-3.1 Inference on the Mean of a Population, Variance Known Example 3-1 • Hypotheses: H0: H1: • Test Statistic: • Significance Level,  = 0.05 • Rejection Region: • Since 3.50 > 1.645, reject H0 and conclude that the lot mean pressure strength exceeds 175 psi. Introduction to Statistical Quality Control, 4th Edition

  28. 3-3.1 Inference on the Mean of a Population, Variance Known Confidence Intervals • A general 100(1- )% two-sided confidence interval on the true population mean,  is • 100(1- )% One-sided confidence intervals are: Upper Lower Introduction to Statistical Quality Control, 4th Edition

  29. 3-3.1 Inference on the Mean of a Population, Variance Known Confidence Interval on the Mean with Variance Known • Two-Sided: • See the text for one-sided confidence intervals. Introduction to Statistical Quality Control, 4th Edition

  30. 3-3.1 Inference on the Mean of a Population, Variance Known Example 3-2 • Reconsider Example 3-1. Suppose a 95% two-sided confidence interval is specified. Using Equation (3-28) we compute • Our estimate of the mean bursting strength is 182 psi  3.92 psi with 95% confidence Introduction to Statistical Quality Control, 4th Edition

  31. 3-3.2 The Use of P-Values in Hypothesis Testing • If it is not enough to know if your test statistic, Z0 falls into a rejection region, then a measure of just how significant your test statistic is can be computed - P-value. • P-values are probabilities associated with the test statistic, Z0. Introduction to Statistical Quality Control, 4th Edition

  32. 3-3.2 The Use of P-Values in Hypothesis Testing Definition • The P-value is the smallest level of significance that would lead to rejection of the null hypothesis H0. Introduction to Statistical Quality Control, 4th Edition

  33. 3-3.2 The Use of P-Values in Hypothesis Testing Example • Reconsider Example 3-1. The test statistic was calculated to be Z0 = 3.50 for a right-tailed hypothesis test. The P-value for this problem is then P = 1 - (3.50) = 0.00023 • Thus, H0:  = 175 would be rejected at any level of significance   P = 0.00023 Introduction to Statistical Quality Control, 4th Edition

  34. 3-3.3 Inference on the Mean of a Population, Variance Unknown Hypothesis Testing • Hypotheses: H0: H1: • Test Statistic: • Significance Level,  • Rejection Region: • Reject H0 if Introduction to Statistical Quality Control, 4th Edition

  35. 3-3.3 Inference on the Mean of a Population, Variance Unknown Confidence Interval on the Mean with Variance Unknown • Two-Sided: • See the text for the one-sided confidence intervals. Introduction to Statistical Quality Control, 4th Edition

  36. 3-3.3 Inference on the Mean of a Population, Variance Unknown Computer Output Introduction to Statistical Quality Control, 4th Edition

  37. 3-3.4 Inference on the Variance of a Normal Distribution Hypothesis Testing • Hypotheses: H0: H1: • Test Statistic: • Significance Level,  • Rejection Region: Introduction to Statistical Quality Control, 4th Edition

  38. 3-3.4 Inference on the Variance of a Normal Distribution Confidence Interval on the Variance • Two-Sided: • See the text for the one-sided confidence intervals. Introduction to Statistical Quality Control, 4th Edition

  39. 3-3.5 Inference on a Population Proportion Hypothesis Testing • Hypotheses: H0: p = p0 H1: p  p0 • Test Statistic: • Significance Level,  • Rejection Region: Introduction to Statistical Quality Control, 4th Edition

  40. 3-3.5 Inference on a Population Proportion Confidence Interval on the Population Proportion • Two-Sided: • See the text for the one-sided confidence intervals. Introduction to Statistical Quality Control, 4th Edition

  41. 3-3.6 The Probability of Type II Error Calculation of P(Type II Error) • Assume the test of interest is H0: H1: • P(Type II Error) is found to be • The Power of the test is then 1 -  Introduction to Statistical Quality Control, 4th Edition

  42. 3-3.6 The Probability of Type II Error Operating Characteristic (OC) Curves • Operating Characteristic (OC) curve is a graph representing the relationship between , ,  and n. • OC curves are useful in determining how large a sample is required to detect a specified difference with a particular probability. Introduction to Statistical Quality Control, 4th Edition

  43. 3-3.6 The Probability of Type II Error Operating Characteristic (OC) Curves Introduction to Statistical Quality Control, 4th Edition

  44. 3-3.7 Probability Plotting • Probability plotting is a graphical method for determining whether sample data conform to a hypothesized distribution based on a subjective visual examination of the data. • Probability plotting uses special graph paper known as probability paper. Probability paper is available for the normal, lognormal, and Weibull distributions among others. • Can also use the computer. Introduction to Statistical Quality Control, 4th Edition

  45. 3-3.7 Probability Plotting Example 3-8 Introduction to Statistical Quality Control, 4th Edition

  46. 3-4. Statistical Inference for Two Samples • Previous section presented hypothesis testing and confidence intervals for a single population parameter. • Results are extended to the case of two independent populations • Statistical inference on the difference in population means, Introduction to Statistical Quality Control, 4th Edition

  47. 3-4.1 Inference For a Difference in Means, Variances Known Assumptions • X11, X12, …, X1n1 is a random sample from population 1. • X21, X22, …, X2n2 is a random sample from population 2. • The two populations represented by X1 and X2 are independent • Both populations are normal, or if they are not normal, the conditions of the central limit theorem apply Introduction to Statistical Quality Control, 4th Edition

  48. 3-4.1 Inference For a Difference in Means, Variances Known • Point estimator for is where Introduction to Statistical Quality Control, 4th Edition

  49. 3-4.1 Inference For a Difference in Means, Variances Known Hypothesis Tests for a Difference in Means, Variances Known Null Hypothesis: Test Statistic: Introduction to Statistical Quality Control, 4th Edition

  50. 3-4.1 Inference For a Difference in Means, Variances Known Hypothesis Tests for a Difference in Means, Variances Known Alternative HypothesesRejection Criterion Introduction to Statistical Quality Control, 4th Edition

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