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CHAPTER 8 SAMPLING DISTRIBUTIONS

CHAPTER 8 SAMPLING DISTRIBUTIONS. Outline Central limit theorem Sampling distribution of the sample mean. CENTRAL LIMIT THEOREM.

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CHAPTER 8 SAMPLING DISTRIBUTIONS

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  1. CHAPTER 8SAMPLING DISTRIBUTIONS Outline • Central limit theorem • Sampling distribution of the sample mean

  2. CENTRAL LIMIT THEOREM Central Limit Theorem: If a random sample is drawn from any population, the sampling distribution of the sample mean is approximately normal for a sufficiently large sample size. The larger the sample size, the more closely the sampling distribution of will resemble a normal distribution.

  3. Distribution of random numbers

  4. Distribution of means of n random numbers, n=4

  5. Distribution of means of n random numbers, n=10

  6. SAMPLING DISTRIBUTION OF THE SAMPLE MEAN • If the sample size increases, the variation of the sample mean decreases. • Where, = Population mean = Population standard deviation = Sample size = Mean of the sample means = Standard deviation of the sample means

  7. CENTRAL LIMIT THEOREM Example 1: An automatic machine in a manufacturing process requires an important sub-component. The lengths of the sub-component are normally distributed with a mean, =120 cm and standard deviation, =5 cm. What does the central limit theorem say about the sampling distribution of the mean if samples of size 4 are drawn from this population?

  8. CENTRAL LIMIT THEOREM Example 2: An automatic machine in a manufacturing process requires an important sub-component. The lengths of the sub-component are normally distributed with a mean, =120 cm and standard deviation, =5 cm. Find the probability that one randomly selected unit has a length greater than 123 cm.

  9. CENTRAL LIMIT THEOREM Example 3: An automatic machine in a manufacturing process requires an important sub-component. The lengths of the sub-component are normally distributed with a mean, =120 cm and standard deviation, =5 cm. Find the probability that, if four units are randomly selected, their mean length exceeds 123 cm.

  10. CENTRAL LIMIT THEOREM Example 4: An automatic machine in a manufacturing process requires an important sub-component. The lengths of the sub-component are normally distributed with a mean, =120 cm and standard deviation, =5 cm. Find the probability that, if four units are randomly selected, all four have lengths that exceed 123 cm.

  11. READING AND EXERCISES • Reading: pp. 289-298 • Exercises: 8.2, 8.4, 8.6

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