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In the last video, we came up with a 95% confidence interval
for the mean weight loss between the low-fat group and
the control group.
In this video, I actually want to do a hypothesis test,
really to test if this data makes us believe that the
low-fat diet actually does anything at all.
And to do that let's set up our null and alternative
hypotheses.
So our null hypothesis should be that this
low-fat diet does nothing.
And if the low-fat diet does nothing, that means that the
population mean on our low-fat diet minus the population mean
on our control should be equal to zero.
And this is a completely equivalent statement to saying
that the mean of the sampling distribution of our low-fat
diet minus the mean of the sampling distribution of our
control should be equal to zero.
And that's because we've seen this multiple times.
The mean of your sampling distribution is going to be
the same thing as your population mean.
So this is the same thing is that.
That is the same thing is that.
Or, another way of saying it is, if we think about the mean
of the distribution of the difference of the sample
means, and we focused on this in the last video, that that
should be equal to zero.
Because this thing right over here is the same thing as that
right over there.
So that is our null hypothesis.
And our alternative hypothesis,
I'll write over here.
It's just that it actually does do something.
And let's say that it actually has an improvement.
So that would mean that we have more weight loss.
So if we have the mean of Group One, the population mean
of Group One minus the population mean of Group Two
should be greater then zero.
So this is going to be a one tailed distribution.
Or another way we can view it, is that the mean of the
difference of the distributions, x1 minus x2 is
going to be greater then zero.
These are equivalent statements.
Because we know that this is the same thing as this, which
is the same thing as this, which is what I
wrote right over here.
Now, to do any type of hypothesis test, we have to
decide on a level of significance.
What we're going to do is, we're going to assume that our
null hypothesis is correct.
And then with that assumption that the null hypothesis is
correct, we're going to see what is the probability of
getting this sample data right over here.
And if that probability is below some threshold, we will
reject the null hypothesis in favor of the alternative
hypothesis.
Now, that probability threshold, and we've seen this
before, is called the significance level, sometimes
called alpha.
And here, we're going to decide for a significance
level of 95%.
Or another way to think about it, assuming that the null
hypothesis is correct, we want there to be no more than a 5%
chance of getting this result here.
Or no more than a 5% chance of incorrectly rejecting the null
hypothesis when it is actually true.
Or that would be a type one error.
So if there's less than a 5% probability of this happening,
we're going to reject the null hypothesis.
Less than a 5% probability given the null hypothesis is
true, then we're going to reject the null hypothesis in
favor of the alternative.
So let's think about this.
So we have the null hypothesis.
Let me draw a distribution over here.
The null hypothesis says that the mean of the differences of
the sampling distributions should be equal to zero.
Now, in that situation, what is going to be our critical
region here?
Well, we need a result, so we're going to need some
critical value here.
Because this isn't a normalized normal
distribution.
But there's some critical value here.
The hardest thing is statistics is getting the
wording right.
There's some critical value here that the probability of
getting a sample from this distribution above that value
is only 5%.
So we just need to figure out what this critical value is.
And if our value is larger than that critical value, then
we can reject the null hypothesis.
Because that means the probability of getting this is
less than 5%.
We could reject the null hypothesis and go with the
alternative hypothesis.
Remember, once again, we can use Z-scores, and we can
assume this is a normal distribution because our
sample size is large for either of those samples.
We have a sample size of 100.
And to figure that out, the first step, if we just look at
a normalized normal distribution like this, what
is your critical Z value?
We're getting a result above that Z value,
only has a 5% chance.
So this is actually cumulative.
So this whole area right over here is
going to be 95% chance.
We can just look at the Z table.
We're looking for 95% percent.
We're looking at the one tailed case.
So let's look for 95%.
This is the closest thing.
We want to err on the side of being a little bit maybe to
the right of this.
So let's say 95.05 is pretty good.
So that's 1.65.
So this critical Z value is equal to 1.65.
Or another way to view it is, this distance right here is
going to be 1.65 standard deviations.
I know my writing is really small.
I'm just saying the standard deviation of that
distribution.
So what is the standard deviation of that
distribution?
We actually calculated it in the last video, and I'll
recalculate it here.
The standard deviation of our distribution of the difference
of the sample means is going to be equal to the square root
of the variance of our first population.
Now, the variance of our first population, we don't know it.
But we could estimate it with our sample standard deviation.
If you take your sample standard deviation, 4.67 and
you square it, you get your sample variance.
And so this is the variance.
This is our best estimate of the variance of the
population.
And we want to divide that by the sample size.
And then plus our best estimate of the variance of
the population of group two, which is 4.04 squared.
The sample standard deviation of group two squared.
That gives us variance divided by 100.
I did before in the last. Maybe it's still sitting on my
calculator.
Yes, it's still sitting on the calculator.
It's this quantity right up here.
4.67 squared divided by 100 plus 4.04
squared divided by 100.
So it's 0.617.
So this right here is going to be 0.617.
So this distance right here, is going to
be 1.65 times 0.617.
So let's figure out what that is.
So let's take 0.617 times 1.65.
So it's 1.02.
This distance right here is 1.02.
So what this tells us is, if we assume that the diet
actually does nothing, there's a only a 5% chance of having a
difference between the means of these two samples to have a
difference of more than 1.02.
There's only a 5% chance of that.
Well, the mean that we actually got is 1.91.
So that's sitting out here someplace.
So it definitely falls in this critical region.
The probability of getting this, assuming that the null
hypothesis is correct, is less than 5%.
So it's smaller probability than our significance level.
Actually, let me be very clear.
The significance level, this alpha right
here, needs to be 5%.
Not the 95%.
I think I might have said here.
But I wrote down the wrong number there.
I subtracted it from one by accident.
Probably in my head.
But anyway, the significance level is 5%.
The probability given that the null hypothesis is true, the
probability of getting the result that we got, the
probability of getting that difference, is less than our
significance level.
It is less than 5%.
So based on the rules that we set out for ourselves of
having a significance level of 5%, we will reject the null
hypothesis in favor of the alternative that the diet
actually does make you lose more weight.