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1 Sampling Distribution of the Mean. 2 The Sampling Distribution of the Sample Mean Let’s start at a familiar point: the sample mean, which we know as.

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Presentation on theme: "1 Sampling Distribution of the Mean. 2 The Sampling Distribution of the Sample Mean Let’s start at a familiar point: the sample mean, which we know as."— Presentation transcript:

1 1 Sampling Distribution of the Mean

2 2 The Sampling Distribution of the Sample Mean Let’s start at a familiar point: the sample mean, which we know as “x-bar” Any random sample we might select from a population will, in general, have a different sample mean, right? In other words, the sample mean varies from sample to sample...

3 3 The Sample Mean is a Random Variable! Imagine selecting many different samples from one population. Sample 1 Sample 2 Sample 3 Sample j Sample k Unless there’s a miraculous coincidence, we would expect each sample to have a (slightly) different mean

4 4 The Sample Mean is a Random Variable So, x-bar varies from sample to sample. Since the samples are random, x-bar varies due to a random process. That makes x-bar a random variable!

5 5 The Sample Mean is a Random Variable So, to sum up so far: We can think of a descriptive statistic, like the sample mean, as a random variable, since its value depends on the luck of the draw in random sampling. Even though one sample has just one sample mean, this one mean is one of the many possible results of random sampling.

6 6 So what is a “Sampling Distribution?” The distribution of an “Ordinary Random Variable” has S hape C enter S pread The distribution of a descriptive statistic (like x- bar) has S hape C enter S pread Any random variable has a probability distribution or (if it’s continuous) a probability density function

7 7 So what is a “Sampling Distribution?” A sampling distribution is nothing more or less than a special case of a probability distribution. More specifically, if the random variable happens to be a sample statistic, we call its distribution a Sampling Distribution

8 8 Other Terminology In a Sampling Distribution, Sampling Distribution The shape is called the Sampling Distribution (it’s often normal) Mean The center is still called the Mean Standard Error The spread is called the Standard Error The special terms are to keep you from getting confused!?!

9 9 Sampling Distribution of the Sample Mean: SHAPE As we’ll soon see, if samples are large enough, the sampling distribution of the mean is approximately normal. standard error Like any normal distribution, it is defined by its mean and standard deviation, or standard error

10 10 Sampling Distribution of Two Dice A sampling distribution is created by looking at all samples of size n=2 (i.e. two dice) and their means… While there are 36 possible samples of size 2, there are only 11 values for x-bar, and some (e.g. x-bar = 3.5) occur more frequently than others (e.g. x-bar = 1).

11 11 The sampling distribution of x-bar is shown below: Sampling Distribution of Two Dice… P( ) 6/36 5/36 4/36 3/36 2/36 1/36 P( ) 11

12 12 Compare… Compare the distribution of X… …with the sampling distribution of x-bar. As well, note that:

13 13 Sampling Distribution of the Sample Mean: CENTER The mean of the sampling distribution of the sample mean is simply the population mean, μ. In other words, the mean of the “average” sample should be the same as the population mean, 

14 14 Sampling Distribution of the Sample Mean: SPREAD The dispersion of the sampling distribution (in most cases) is given by this formula: We call this the STANDARD ERROR OF

15 15 Central Limit Theorem… The sampling distribution of the mean of a random sample drawn from any population is approximately normal for a sufficiently large sample size. The larger the sample size, the more closely the sampling distribution of x-bar will resemble a normal distribution.

16 16 Central Limit Theorem… If the population is normal, then x-bar is normally distributed for all values of n (n = the number of samples that x-bar is the sample of their means). If the population is non-normal, then x-bar is approximately normal only for larger values of n. In many practical situations, a sample size of 30 may be sufficiently large to allow us to use the normal distribution as an approximation for the sampling distribution of x-bar.

17 Central Limit Theorem

18 18 Example 1 The foreman of a bottling plant has observed that the amount of soda in each “32-ounce” bottle is actually a normally distributed random variable, with a mean of 32.2 ounces and a standard deviation of 0.3 ounce. If a customer buys one bottle, what is the probability that the bottle will contain more than 32 ounces?

19 19 Example 1 We want to find P(X > 32), where x-bar is normally distributed and μ = 32.2 and σ = 0.3 “there is about a 75% chance that a single bottle of soda contains more than 32oz.”

20 20 Example 2 The foreman of a bottling plant has observed that the amount of soda in each “32-ounce” bottle is actually a normally distributed random variable, with a mean of 32.2 ounces and a standard deviation of 0.3 ounce. If a customer buys a carton of four bottles, what is the probability that the mean amount of the four bottles will be greater than 32 ounces?

21 21 We want to find P(x-bar > 32), where X is normally distributed with μ = 32.2 and σ = 0.3 Things we know: 1) X is normally distributed, therefore so will x-bar. 2) = 32.2 oz. 3) Example 2

22 22 Example 2 If a customer buys a carton of four bottles, what is the probability that the mean amount of the four bottles will be greater than 32 ounces? “There is about a 91% chance the mean of the four bottles will exceed 32oz.”

23 23 Graphically Speaking… what is the probability that one bottle will contain more than 32 ounces? what is the probability that the mean of four bottles will exceed 32 oz? mean=32.2

24 24 Example 3 The dean of the School of Business claims that the average salary of the school’s graduates one year after graduation is $800 per week with a standard deviation of $100. A second-year student would like to check whether the claim about the mean is correct. He does a survey of 25 people who graduated one year ago and determines their weekly salary. He discovers the sample mean to be $750. To interpret his finding he needs to calculate the probability that a sample of 25 graduates would have a mean of $750 or less when the population mean is $800 and the standard deviation is $100.

25 25 We want to compute Although X is likely skewed it is likely that x-bar is normally distributed. The mean of x-bar is The standard deviation is Example 3

26 26 Example 3 The probability of observing a sample mean as low as $750 when the population mean is $800 is extremely small. Because the event is quite unlikely, we would conclude that the dean’s claim is not justified.

27 Example 4 Cola bottles are filled so that contents X have a normal distribution with mean = 298 ml and standard deviation sigma = 3 ml. Cola bottles are filled so that contents X have a normal distribution with mean = 298 ml and standard deviation sigma = 3 ml. What proportion of bottles have less than 295 ml? What proportion of bottles have less than 295 ml? Ans: P(X < 295) = P(Z < –1) = 0.1586 Ans: P(X < 295) = P(Z < –1) = 0.1586

28 Example 4 What is the probability of the average of a six pack of bottles being less than 295 ml? Ans: P(x-bar < 295) =

29 Example 4 P(X < 295) =.15, but P(x-bar < 295) = 0.007 As the sample size increases, the variation in the distribution decreases so that a value like 295 ml is very difficult and rare to occur in an average of a six pack or more of bottles, but could quite easily occur in a single bottle. Big point: averages have less variation than individual observations.

30 Assignment p. 247 4.43 - 4.45 p. 248-250 4.46, 4.48 - 4.50, 4.53


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