Normal Approximation of the Binomial Distribution

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Normal Approximation of the Binomial Distribution. 50. 30. What is the Probability of getting exactly 30 tails if a coin is tossed 50 times?. X = tails, x = 30 n = 50, p = 0.5. P(X = x) =. (0.5) 30 (1 – 0.5) 50 - 30. = 0.042. Find the probability that tails will occur less than 30 times…. - PowerPoint PPT Presentation

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Normal Approximation of

the Binomial Distribution

What is the Probability of getting exactly 30 tails if a coin is tossed

50 times?X = tails, x = 30n = 50, p = 0.5

P(X = x) = 5030 (0.5)30(1 – 0.5)50 - 30

= 0.042

Find the probability that tails will occur less than 30 times….

The magnitude of the calculation motivates us to determine an easier way…

Notice:The most frequent outcome of

flipping a coin should be 25 tails, then 24/26, then 23/27 and so on….

This structure has already been modeled and studied as a normal distribution!

Therefore

Under certain conditions, we may use the Normal Model to approximate probabilities from a Binomial Distribution!!

Conditions that must be met

1. np > 52. nq > 5

When we will use the Normal distribution to approximate the

Binomial distribution, we have to create a z score

z = x - x

= np(1 – p)

x = E(x) = np

x = given value, but it must be corrected by 0.5 either way (if it is discrete…)

s

s

Ex: If you toss a coin 50 times, estimate the probability that you will get tails less than 30 times.

To approximate, first we will check to see of the conditions

are met

1. Is np > 5 ?

50(0.5) > 5 ?25 > 5 YES!

2. Is nq > 5?

50(0.5) > 5 ?25 > 5 YES!

If these conditions are met, that means there were enough trials so a comparable distribution was created…

Now we need to determine the z score

z = x - xs

Ex: If you toss a coin 50 times, estimate the probability that you will get tails less than 30 times.

Success: tailsn = 50p = 0.5E = x = 50(0.5)

= 25

= 50(0.5)(1 – 0.5)

s = np(1 – p)

= 3.54

Less than 30 tails..

x < 30Imagine the 30 bin

3029.5 30.5

z = x - x

= 29.5 - 253.54

= 1.27P(X < 29.5) = P(z < 1.27)

= 0.8980

s

A bank found that 24% of it’s loans become delinquent. If 200

loans are made, find the probability that at least 60 are

delinquent.

We may analyze this situation as a binomial model because:

1. A loan is either paid back or not

2. The loans are all independent

Check to see if we can approximate…

1. np = (200)(0.24)= 48 (which is greater than 5, so

yes)2. nq = (200)(0.76)= 152 (which is greater than 5, so

yes)

E(X) = x = np= (200)(0.24)= 48

s = (npq)1/2

=[(200)(0.24)(0.76)]1/2

= 6.04

X = 60, then adjust to 59.5

z = 59.5 – 48 6.04

z = 1.90 (97.13% from the chart)

Therefore, the number of delinquent loans is

100% - 97.13% = 2.87%

Sketch this to confirm!

If we were to actually calculate the probability directly, it would come out to 3.07%

Page 449

1,2[odd]3,5,6,8,10

Note: Discrete to Continuouspg 306

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