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The mean monthly return on a sample of small stocks is 4.56% with a standard deviation of 3.56%. What is the coefficient of variation?
A)
78%.
B)
128%.
C)
84%.



The coefficient of variation expresses how much dispersion exists relative to the mean of a distribution and is found by CV = s / mean. 3.56 / 4.56 = 0.781, or 78%.

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If stock X's expected return is 30% and its expected standard deviation is 5%, Stock X's expected coefficient of variation is:
A)
0.167.
B)
6.0.
C)
1.20.



The coefficient of variation is the standard deviation divided by the mean: 5 / 30 = 0.167.

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What is the coefficient of variation for a distribution with a mean of 10 and a variance of 4?
A)
40%.
B)
25%.
C)
20%.




Coefficient of variation, CV = standard deviation / mean. The standard deviation is the square root of the variance, or 4½ = 2. So, CV = 2 / 10 = 20%.

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If the historical mean return on an investment is 2.0% and the standard deviation is 8.8%, what is the coefficient of variation (CV)?
A)
1.76.
B)
6.80.
C)
4.40.



The CV = the standard deviation of returns / mean return or 8.8% / 2.0% = 4.4.

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Consider the following graph of a distribution for the prices for various bottles of California-produced wine. Which of the following statements about this distribution is least accurate?
A)
Approximately 68% of observations fall within one standard deviation of the mean.
B)
The graph could be of the sample $16, $12, $15, $12, $17, $30 (ignore graph scale).
C)
The distribution is positively skewed.



This statement is true for the normal distribution. The above distribution is positively skewed. Note: for those tempted to use Chebyshev’s inequality to determine the percentage of observations falling within one standard deviation of the mean, the formula is valid only for k > 1.
The other statements are true. When we order the six prices from least to greatest: $12, $12, $15, $16, $17, $30, we observe that the mode (most frequently occurring price) is $12, the median (middle observation) is $15.50 [(15 + 16)/2], and the mean is $17 (sum of all prices divided by number in the sample). Time-Saving Note: Just by ordering the distribution, we can see that it is positively skewed (there are large, positive outliers). By definition, mode < median < mean describes a positively skewed distribution.

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A distribution with a mode of 10 and a range of 2 to 25 would most likely be:
A)
positively skewed.
B)
normally distributed.
C)
negatively skewed.



The distance to the left from the mode to the beginning of the range is 8. The distance to the right from the mode to the end of the range is 15. Therefore, the distribution is skewed to the right, which means that it is positively skewed.

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Which of the following statements regarding skewness is least accurate?
A)
A distribution that is not symmetrical has skew not equal to zero.
B)
A positively skewed distribution is characterized by many small losses and a few extreme gains.
C)
In a skewed distribution, 95% of all values will lie within plus or minus two standard deviations of the mean.



For a normal distribution, the mean will be equal to its median and 95% of all observations will fall within plus or minus two standard deviations of the mean. For a skewed distribution, because it is not symmetrical, this may not be the case. Chebyshev’s inequality tells us that at least 75% of observations will lie within plus or minus two standard deviations from the mean.

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If a distribution is skewed:
A)
the magnitude of positive deviations from the mean is different from the magnitude of negative deviations from the mean.
B)
it will be more or less peaked reflecting a greater or lesser concentration of returns around the mean.
C)
each side of a return distribution is the mirror image of the other.



Skewness is caused by the magnitude of positive deviations from the mean being either larger or smaller than the magnitude of negative deviations from the mean. Each side of a skewed distribution is not a mirror image of the other. Peakedness of a distribution is measured by kurtosis.

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Which of the following statements concerning skewness is least accurate? A distribution with:
A)
a distribution with skew equal to 1 is not symmetrical.
B)
positive skewness has a long left tail.
C)
negative skewness has a large number of outliers on its left side.



A distribution with positive skewness has long right tails.

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Which of the following statements concerning kurtosis is least accurate?
A)
A distribution that is more peaked than a normal distribution is leptokurtic.
B)
A leptokurtic distribution has fatter tails than a normal distribution.
C)
A leptokurtic distribution has excess kurtosis less than zero.



A leptokurtic distribution is more peaked than normal and has fatter tails. However, the excess kurtosis is greater than zero.

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