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					Econometrics
Econ. 405
Chapter 3:
Getting the Hang of Statistics
I. What is Special about Random Variables
II. Other Useful Measures
1) Variance
 Variance provides a measure of dispersion (measures
how far a set of random numbers are spread out from
their mean).
 Variance is the average of the squared differences
from the Mean.
 Variance is used to produce standard deviation.
 The variance of a constant is:
Var (a) = 0
3) Covariance
 Covariance uses the difference between the value of
each random variable and its mean to determine how
they vary with one another.
 The Covariance is:
Cov(X, Y) = E {[X - E(X)] [Y - E(Y)]}
Where: E{X} = mean of X
E{Y} = mean of Y
 Covariance of two independent random variables is:
Cov(X, Y) = 0
if f(X\Y)= f(X)
or
f(X,Y)=f(X).f(Y)
 Covariance of two random variables multiplied by a
constant is:
Cov(aX, bY) = ab Cov(X, Y)
 Covariance of a random variable times its self is:
Cov(X, X) = Var(X)
4) Correlation
 It measures the strength of the relationship between
two variables.
 To calculate the correlation coefficient for two
variables (X, Y), we would use the covariance
formula, shown below:
Corr (X, Y) = Cov (X,Y) / Sd(X) Sd(Y)
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