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Consider babies born in the “normal”
a. What is the
b. What is the probability that the birth weight of a randomly selected baby of this type is either less than 2000 g or greater than 5000 g?
c. What is the probability that the birth weight of a randomly selected baby of this type exceeds 7 lb?
d. How would you characterize the most extreme .1% of all birth weights?
e. If X is a random variable with a normal distribution and a is a numerical constant (a ≠ 0), then Y = aX also has a normal distribution. Use this to determine the distribution of birth weight expressed in pounds (shape, mean, and standard deviation), and then recalculate the probability from part (c). How does this compare to your previous answer?
a.
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Find the probabilities that the birth weight of such a baby exceeds 4,000 g and birth weight is between 3,000 g and 4,000 g.
Answer to Problem 49E
The probability that the birth weight of such a baby exceeds 4,000 g is 0.1190.
The probability that the birth weight of a baby is between 3,000 and 4,000 g, is 0.6969.
Explanation of Solution
Given info:
The probability distribution of the birth weight of babies who are born in the normal range of 37 to 43 weeks gestational period in the United States is normal with mean 3,432 g and standard deviation 482 g.
Calculation:
Let X denote the birth weight of a randomly selected baby from such babies as described above. The random variable X is normally distributed with parameters
The probability that the birth weight of such a baby exceeds 4,000 g is:
Use Table A-3 “Standard Normal Curve Areas” to find the required probability.
Procedure:
- Locate the value of z as 1.1 in the first column of the table.
- Move along the corresponding row to obtain the value in that row, which is exactly in the column of .08.
Thus,
As a result,
Hence, the probability that the birth weight of such a baby exceeds 4,000 g is 0.1190.
Theprobability that the birth weight of a baby is between 3,000 and 4,000 g is:
Use Table A-3 “Standard Normal Curve Areas” to find the required probability.
Procedure:
- Locate the value of z as –0.9 in the first column of the table.
- Move along the corresponding row to obtain the value in that row, which is exactly in the column of .00.
Thus,
As a result,
Hence, the probability that the birth weight of a baby is between 3,000 and 4,000 g, is 0.6969.
b.
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Find the probability that the birth weight of a randomly selected baby is either less than 2,000 g or more than 5,000 g.
Answer to Problem 49E
The probability that the birth weight of a randomly selected baby is either less than 2,000 g or more than 5,000 g is 0.0021.
Explanation of Solution
Calculation:
Theprobability that the birth weight of a randomly selected baby is either less than 2,000 g or more than 5,000 g is:
Use Table A-3 “Standard Normal Curve Areas” to find
Procedure:
- Locate the value of z as 3.2 in the first column of the table.
- Move along the corresponding row to obtain the value in that row, which is exactly in the column of .05.
Thus,
Use Table A-3 “Standard Normal Curve Areas” to find
Procedure:
- Locate the value of z as –2.9 in the first column of the table.
- Move along the corresponding row to obtain the value in that row, which is exactly in the column of .07.
Thus,
As a result,
Hence, the probability that the birth weight of a randomly selected baby is either less than 2,000 g or more than 5,000 g is 0.0021.
c.
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Find the probability that the birth of a randomly selected baby exceeds 7 lb.
Answer to Problem 49E
The probability that the birth of a randomly selected baby exceeds 7 lb is 0.7019.
Explanation of Solution
Calculation:
Use the conversion:
Thus,
The probability that the birth of a randomly selected baby exceeds 7 lb is the same as the probability that the birth of a randomly selected baby exceeds 3,178 g:
Use Table A-3 “Standard Normal Curve Areas” to find the required probability.
Procedure:
- Locate the value of z as –0.5 in the first column of the table.
- Move along the corresponding row to obtain the value in that row, which is exactly in the column of .03.
Thus,
As a result,
Hence, the probability that the birth of a randomly selected baby exceeds 7 lb is 0.7019.
d.
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Characterize the most extreme 0.1% of all birth weights.
Answer to Problem 49E
The values that characterize the most extreme 0.1% of the birth weights are 1,846.22 g, which separates the observations from the smallest 0.05% of weights and 5,017.78 g, which separates the observations from the largest 0.05% of weights.
Explanation of Solution
Calculation:
The normal distribution is symmetric. Thus, for any constant k,
The most extreme 0.1% of all birth weights can be characterized by obtaining a value c, such that
Let
As a result,
Here,
Here, let –c and c be the values that separate the middle portion of the distribution, with the smallest and largest 0.1% of the distribution. As a result, 0.05% of all values of the distribution must lie below –c. Moreover, 0.05% of all values must lie above c or
Thus,
Here, c separates the distribution from the largest 0.05% of the values, implying that c is the 99.95th percentile of the distribution. As a result,
Thus, the corresponding percentile is
In Table A-3 “Standard Normal Curve Areas” find the value of the variable which corresponds to the probability 0.9995.
Procedure:
- Locate the probability value 0.9995 in the body of the table.
The exact value 0.9995 is not unique, as itappears in the table for 6 times. Take the lowest z value for which 0.9995 occurs for the first time as follows:
- Move horizontally from the very first occurrence in increasing order of the probability value 0.9995 till the first column is reached and note the value of z as 3.2.
- Move vertically from the probability value 0.9995 till the first rowis reached and note the value of z as .09.
Thus,
Now,
Hence, the 99.95th percentile of the distribution is 5,017.78.
Similarly, –c separates the distribution from the smallest 0.05% of the values, implying that–c is the 0.05th percentile of the distribution. As a result,
Thus, the corresponding percentile is
Now,
It is already shown that
Now,
Hence, the 0.05th percentile of the distribution is 1,846.22.
Thus, the values that characterize the most extreme 0.1% of the birth weights are 1,846.22 g, which separates the observations from the smallest 0.05% of weights and 5,017.78 g, which separates the observations from the largest 0.05% of weights.
e.
![Check Mark](/static/check-mark.png)
Find the birth weight distribution in pound.
Find the probability of part c and compare the two cases- when weight is measured in pounds and when weight is measured in g.
Answer to Problem 49E
Thebirth weight distribution in pound has a normal distribution, with mean7.56 lband standard deviation 1.06 lb.
The probability that the birth of a randomly selected baby exceeds 7 lb is 0.7019.
The probability that the birth weight exceeds 7 lb is the same for when weight is measured in g and when weight is measured in lb.
Explanation of Solution
Calculation:
Consider
As observed in part c,
Thus, the weight in lb, Y, can be expressed as:
Now, the transformation
Here,
Hence,
The probability to be found is theprobability that the birth of a randomly selected baby exceeds 7 lb, which is:
From part c,
As a result,
Hence, the probability that the birth of a randomly selected baby exceeds 7 lb is 0.7019. The probability that the birth weight exceeds 7 lb is the same for when weight is measured in g and when weight is measured in lb.
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Probability and Statistics for Engineering and the Sciences
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