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We will be discussing. The Algebra of Expectation. The Algebra of Variance ... Slide 4a.14. Distributions. Mathematical. Marketing. The Normal Ogive (z) 1.0. 0. zb ... – PowerPoint PPT presentation

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Title: Slide 4a.1


1
Chapter 4 Part a The Expectation and Variance
of Distributions
  • We will be discussing
  • The Algebra of Expectation
  • The Algebra of Variance
  • The Normal Distribution
  • (These topics are needed for Chapter 5)

2
The Expectation of a Discrete Random Variable
Assume we have a random variable, ai. If ai can
take on only certain values 1, 2, , J, then
we have as the definition of Expectation of ai,
or E(ai)
3
The Expectation of a Continuous Variable
Imagine we have a scalar, ai, that can take on
any possible values with probability f(ai), i. e.
f(ai)
ai
By definition, the expectation of that scalar is
4
Three Rules for E()
The Expectation of a Constant is That
Constant E(c) c
The Expectation of a Sum is the Sum of the
Expectations E(a b) E(a) E(b)
In the Expectation of a Linear Combination, a
Constant Matrix Can Pass Through E() E(Da)
DE(a) E(a'F) E(a')F
5
The Variance of a Random Variable
The Variance of the Random Vector a is Given by
6
The Variance of a Mean Centered Vector
If E(a) 0, i. e. a is mean centered, we have
just V(a) E(aa')
NB just because E(a) 0 doesnt mean that
E(aa') 0!
7
The Variance Matrix
For mean centered a, we have V(a) E(aa')
8
Two Rules for V()
Adding a Constant Vector Does Not Change the
Variance V(a c) V(a)
The Variance of a Linear Combination is a
Quadratic Form V(Da) DV(a)D'
Hint The Above Theorem Will Figure Many Many
Times in What Is to Come!
9
The Normal Density Function
Consider a random scalar x. Under the normal
distribution, the probability that x takes on
the value xa is given by the equation
1.0
Pr(x)
x
0
xa
?
10
The Standard Normal Density
If ? 0 and ?2 1, so that z (x - ?) / ? the
expression simplifies to
Note very common notation
11
The Normal Distribution Function
According to the normal distribution function,
the probability that the random scalar x is less
than or equal to some value xb is
1.0
Pr(x)
x
0
xb
12
Other Notational Conventions
For our scalar x that is distributed according to
the normal distribution function, we say x
N(?, ?2).
13
The Standardized Normal Distribution
If we set z (x - ?) / ? then
Again, note the notational convention and that
14
The Normal Ogive
1.0
?(z)
0
zb
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