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Inference on the Mean of a Population - Variance Known

Inference on the Mean of a Population - Variance Known. &4-4 (&8-2). H 0 : m = m 0 H 1 : m  m 0 , where m 0 is a specified constant. Sample mean is the unbiased point estimator for population mean. The Reasoning.

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Inference on the Mean of a Population - Variance Known

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  1. Inference on the Mean of a Population-Variance Known &4-4 (&8-2) • H0: m = m0 H1: m m0 , where m0 is a specified constant. • Sample mean is the unbiased point estimator for population mean. Statistics II

  2. The Reasoning • For H0 to be true, the value of Z0 can not be too large or too small. • Recall that 68.3% of Z0 should fall within (-1, +1) 95.4% of Z0 should fall within (-2, +2) 99.7% of Z0 should fall within (-3, +3) • What values of Z0 should we reject H0? (based on a value) What values of Z0 should we conclude that there is not enough evidence to reject H0? Statistics II

  3. Statistics II

  4. Example 8-2 Aircrew escape systems are powered by a solid propellant. The burning rate of this propellant is an important product characteristic. Specifications require that the mean burning rate must be 50 cm/s. We know that the standard deviation of burning rate is 2 cm/s. The experimenter decides to specify a type I error probability or significance level of α = 0.05. He selects a random sample of n = 25 and obtains a sample average of the burning rate of x = 51.3 cm/s. What conclusions should be drawn? Statistics II

  5. Statistics II

  6. Hypothesis Testing on m- Variance Known Statistics II

  7. P-Values in Hypothesis Tests(I) • Where Z0 is the test statistic, and (z) is the standard normal cumulative function. • In example 8-2, Z0 = 3.25, P-Value = 2[1-F(3.25)] = 0.0012 Statistics II

  8. P-Values of Hypothesis Testing on m- Variance Known Statistics II

  9. P-Values in Hypothesis Tests(II) • a-value is the maximum type I error allowed, while P-value is the real type I error calculated from the sample. • a-value is preset, while P-value is calculated from the sample. • When P-value is less than a-value, we can safely make the conclusion “Reject H0”. By doing so, the error we are subjected to (P-value) is less than the maximum error allowed (a-value). Statistics II

  10. Type II Error- Fail to reject H0 while H0 is false Statistics II

  11. How to calculate Type II Error? (I)(H0: m = m0 Vs. H1: mm0) • Under the circumstance of type II error, H0 is false. Supposed that the true value of the mean is m = m0 + d, where  > 0. The distribution of Z0 is: Statistics II

  12. How to calculate Type II Error? (II) - refer to section &4.3 (&8.1) • Type II error occurred when (fail to reject H0 while H0 is false) • Therefore, Statistics II

  13. The Sample Size (I) • Given values of a and d, find the required sample size n to achieve a particular level of b.. Statistics II

  14. The Sample Size (II) • Two-sided Hypothesis Testing • One-sided Hypothesis Testing Statistics II

  15. Example 8-3 Statistics II

  16. The Operating Characteristic Curves- Normal test (z-test) • Use to performing sample size or type II error calculations. • The parameter d is defined as: so that it can be used for all problems regardless of the values of m0 and s. • Chart VI a,b,c,d are for Z-test. Statistics II

  17. Example 8-5 Statistics II

  18. Statistics II

  19. Statistics II

  20. Large Sample Test • If n  30, then the sample variance s2 will be close to s2 for most samples. • Therefore, if population variance s2 is unknown but n  30, we can substitute s with s in the test procedure with little harmful effect. Statistics II

  21. Large Sample Hypothesis Testing on m- Variance Unknown but n  30 Statistics II

  22. Statistical Vs. Practical Significance • Practical Significance = 50.5-50 = 0.5 • Statistical Significance P-Value for each sample size n. Statistics II

  23. Notes • be careful when interpreting the results from hypothesis testing when the sample size is large, because any small departure from the hypothesized value m0 will probably be detected, even when the difference is of little or no practical significance. • In general, two types of conclusion can be drawn: 1. At a = 0.**, we have enough evidence to reject H0. 2. At a = 0.**, we do not have enough evidence to reject H0. Statistics II

  24. Confidence Interval on the Mean (I) • Point Vs. Interval Estimation • The general form of interval estimate is L  m  U in which we always attach a possible error a such that P(L  m  U) = 1-a That is, we have 1-a confidence that the true value of m will fall within [L, U]. • Interval Estimate is also called Confidence Interval (C.I.). Statistics II

  25. Confidence Interval on the Mean (II) • L is called the lower-confidence limit and U is the upper-confidence limit. • Two-sided C.I. Vs. One-sided C.I. Statistics II

  26. Construction of the C.I. • From Central Limit Theory, • Use standardization and the properties of Z, Statistics II

  27. Formula for C.I. on the Mean with Variance Known • Used when 1. Variance known 2. n  30, use s to estimate s. Statistics II

  28. Example 8-6 Consider the rocket propellant problem in Example 8-2. Find a 95% C.I. on the mean burning rate? 95% C.I => a = 0.05, za/2 = z0.025 = 1.96 Statistics II

  29. Notes - C.I. • Relationship between Hypothesis Testing and C.I.s • Confidence level (1-a) and precision of estimation (C.I. * 1/2) • Sample size and C.I.s Statistics II

  30. Choice of Sample Size to Achieve Precision of Estimation Statistics II

  31. Example 8-7 Statistics II

  32. One-Sided C.I.s on the Mean Statistics II

  33. Inference on the Mean of a Population-Variance Unknown &4-5 (&8-3) • H0: m = m0 H1: m m0 , where m0 is a specified constant. • Variance unknown, therefore, use s instead of s in the test statistic. • If n is large enough ( 30), we can use the test procedure in &4-4 (&8-2). However, n is usually small. In this case, T0 will not follow the standard normal distribution. Statistics II

  34. Inference on the Mean of a Population-Variance Unknown • Let X1, X2, …, Xn be a random sample for a normal distribution with unknown mean m and unknown variance s2. The quantity has a t distribution with n - 1 degrees of freedom. Statistics II

  35. Statistics II

  36. The Reasoning • For H0 to be true, the value of T0 can not be too large or too small. • What values of T0 should we reject H0? (based on a value) What values of T0 should we conclude that there is not enough evidence to reject H0? • Although when n  30, we can use Z0 in section &8-2 to perform the testing instead. We prefer using T0 to more accurately reflect the real testing result if t-table is available. Statistics II

  37. Statistics II

  38. Example 8-8 Statistics II

  39. Statistics II

  40. Testing for Normality (Example 8-8)- t-test assumes that the data are a random sample from a normal population (1) Box Plot (2) Normality Probability Plot Statistics II

  41. Hypothesis Testing on m- Variance Unknown Statistics II

  42. Finding P-Values • Steps: 1. Find the degrees of freedom (k = n-1)in the t-table. 2. Compare T0 to the values in that row and find the closest one. 3. Look the a value associated with the one you pick. The p-value of your test is equal to this a value. • In example 8-8, T0 = 4.90, k = n-1 = 21, P-Value < 0.0005 because the t value associated with (k = 21, a = 0.0005) is 3.819. Statistics II

  43. P-Values of Hypothesis Testing on m- Variance Unknown Statistics II

  44. The Operating Characteristic Curves- t-test • Use to performing sample size or type II error calculations. • The parameter d is defined as: so that it can be used for all problems regardless of the values of m0 and s. • Chart VI e,f,g,h are used in t-test. (pp. A14-A15) Statistics II

  45. Example 8-9 • In example 8-8, if the mean load at failure differs from 10 MPa by as much as 1 MPa, is the sample size n = 22 adequate to ensure that H0 will be rejected with probability at least 0.8? s = 3.55, therefore, d = 1.0/3.55 = 0.28. Appendix Chart VI g, for d = 0.28, n = 22 => b = 0.68 The probability of rejecting H0: m = 10 if the true mean exceeds this by 1.0 MPa (reject H0 while H0 is false) is approximately 1 - b = 0.32, which is too small. Therefore n = 22 is not enough. At the same chart, d = 0.28, b = 0.2 (1-b=0.8) => n = 75 Statistics II

  46. Statistics II

  47. Construction of the C.I. on the Mean - Variance Unknown • In general, the distribution of is t with n-1 d.f. • Use the properties of t with n-1 d.f., Statistics II

  48. Formula for C.I. on the Mean with Variance Unknown Statistics II

  49. Example 8-10 Reconsider the tensile adhesive problem in Example 8-8. Find a 95% C.I. on the mean? • N = 22, sample mean = 13.71, s = 3.55, ta/2,n-1 = t0.025,21 = 2.080 13.71 - 2.080 (3.55) / 22  m  13.71 + 2.080 (3.55) / 22 13.71 - 1.57  m  13.71 + 1.57 12.14  m  15.28 The 95% C.I. On the mean is [12.14, 15.28] Statistics II

  50. Final Note for the Inference on the Mean Statistics II

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