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7.1 The Central Limit Theorem for Sample Means Averages

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in this lesson we are going to talk

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about what's known as the central limit

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theorem for sample means now there are

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different central limit theorems but

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we're going to only focus on the central

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limit theorem for sample means so before

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we get into the actual theorem i want to

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give you some background understanding

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we need to talk about what's known as a

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sampling distribution

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so

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i want you to imagine

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that i find

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a sample i pick a random sample

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i'll call it sample one

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okay and then i find the mean of that

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sample so i'll label that x bar and i'll

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put a little one down here to remind you

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that it's coming from sample one

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then let's say i take another sample

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we'll call it sample

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two and so i find the mean of that

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sample

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and i'll call that x bar two so that we

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know it comes from sample two

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then i take another sample

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we'll call it sample three so i'll

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find the mean of that sample and i'll

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call it x bar three

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now if i continue to do this

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a bunch of times

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and all my samples

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have size n

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okay when i take all of those means out

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so i take this mean

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i take this mean i take this mean i take

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all the means of all of the samples that

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i find

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and i create a new distribution where my

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variable x

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is all of those means

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when i put all those means together and

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i

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assign it to this variable x we have

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what's known as the sampling

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distribution

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so now that we understand what a

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sampling distribution is

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that's

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a new variable that we define

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as the means of each of these random

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samples that we're taking of the same

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size n

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now we can get into now that we

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understand what that means

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we can get into what the central limit

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theorem is

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now the central limit theorem for a

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sample

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if you're talking about specifically the

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mean if you draw repeated samples over

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and over and over again of the same size

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then

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the sampling distribution

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is going to be

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approximately

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normal

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and as the sample size increases

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we'll call it n generically as the

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sample size n increases

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the closer

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the sampling distribution

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gets

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to a normal distribution

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okay so what this means is if i had all

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these samples that i talked about

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previously sample one sample two sample

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three if originally i took sample sizes

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of say 20.

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if i repeat that process

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and i go ahead and take sample sizes of

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30 or 40

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and then i repeat it again and then i

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start taking sample sizes that are 50.

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as those sample sizes that i take are

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bigger and bigger and bigger

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this sampling distribution gets closer

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and closer and closer to that normal

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shape where you have the one mound

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and then it's symmetric

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so let's take a look at our new notation

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okay so if we have some random variable

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with the distribution

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we'll call it just x

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we'll call it any distribution

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and the mean of that distribution is mu

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x

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and the standard deviation let me see

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and the standard deviation of that

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distribution is sigma with your little

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sub x

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then as the sample sizes that you take

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from that distribution over and over

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again if that size

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n

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increases

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then the random

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variable

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x bar

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be normally distributed

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and

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it will have this notation here

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it's normal and it's going to have the

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same mean

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as the distribution that we're talking

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about

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however the standard deviation is going

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to change you're going to take whatever

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the standard deviation of the

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distribution that we're talking about

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and you divide it by the square root of

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n

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that will give you the standard

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deviation of the sampling distribution

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so that's this here

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so this is the standard deviation of the

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sampling distribution

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and then of course if you want to

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standardize it normally before when we

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were talking about in chapter 6 we would

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say

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z is equal to

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your data value

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minus the mean over your standard

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deviation it's basically the same thing

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but the notation is changing a little

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bit because your data value in this case

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your value of x is going to be a mean of

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one of those samples

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your mu is going to be a me the mean of

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your distribution that you're talking

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about and then the standard deviation

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is going to be the same as the

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distribution x but for the sampling

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distribution you have to divide it by

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the square root of n

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so it's almost the same thing with the

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few minor tweaks to it

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okay so now let's go down and walk

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through an example

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because this isn't going to start to

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click until you actually work through

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some examples okay so we have

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um let's see an unknown distribution

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we'll call it x

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and it has a mean of 90. so this is the

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mean of our distribution and the

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standard deviation is 15.

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we're taking samples of size n is 25

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and they're drawn randomly from this

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population

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so if we take samples from this

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distribution we know that it's going to

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be approximately normal

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and that the mean is going to be the

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same

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but the standard deviation is because

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we're talking about a sampling

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distribution is going to be 15 divided

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by the square root of n which in this

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case is 25.

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we don't know if the distribution x is

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normal or not but we do know when we do

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the sampling distribution based on the

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central limit theorem that it should be

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approximately normal and it gets closer

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and closer to being exactly normal

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when the sample sizes get bigger and

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bigger and bigger

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so we can make this approximation now it

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says in part a it says what is the

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probability that the sample mean

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is between 85 and 92

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so here are the key words here to let us

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know that we're looking

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at this distribution we're looking at

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the samples not the x's

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we're looking at the means of the

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samples

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okay so previously

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we would do this we would say the

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probability that x

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is between 85 and 92 but this says we're

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looking for the probability that the

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sample mean is between 85 and 92 so just

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by that one word sample that changes the

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whole problem and instead of putting x

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is between 85 and 92 i'm going to make

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it x bar is between 85 and 92.

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now because we know this is going to be

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    7.1 The Central Limit… - Full Transcript | YouTubeTranscript.dev