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BUSN 352: Statistics Review

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Title: BUSN 352: Statistics Review


1
BUSN 352 Statistics Review
Professor Joseph Szmerekovsky
  • Probability Distributions

2
Probability Concepts
  • Let A be an event. Pr(A) is then the
    probability that A will occur
  • If A never occurs, Pr(A) 0
  • If A is sure to occur, Pr(A) 1

3
Example Find the probability
  • Selecting a black card from the standard deck of
    52 cards
  • Selecting a King
  • Selecting a red King
  • General Pattern Pr(A)

1/2
4/52 1/13
2/52 1/26
4
Example Find probability
  • Throwing two fair dice find the probability that
  • sum of the faces is equal to 2
  • sum of the faces is equal to 4
  • sum of the faces is equal to 7

5
Random Variables
  • A random variable is a rule that assigns a
    numerical value to each possible outcome of an
    experiment.
  • Discrete random variable -- countable number of
    values.
  • Continuous random variable -- assumes values in
    intervals on the real line.

6
The Basics of Random Variables
  • The probability distribution of a discrete
    random variable X gives the probability of each
    possible value of X.
  • The sum of the probabilities must be 1.

7
Example Probability distributions
  • Fair coin toss
  • Two fair coins
  • Find Pr(X?1)
  • Find Pr(X1.5)
  • Find Pr(X?1.5)

8
Expected Value
  • The expected value (mean) of the random variable
    is the sum of the products of x and the
    corresponding probabilities

9
Example Insurance Policy
  • Alice sells Ben a 10,000 insurance policy at an
    annual premium of 460.
  • If Pr(Ben dies next year) .002, what is the
    expected profit of the policy?

E(X) 460(.998) (-9540)(.002) 440
10
Example Debbon Air Seat Release
  • Debbon Air needs to make a decision about Flight
    206 to Myrtle Beach.
  • 3 seats reserved for last-minute customers (who
    pay 475 per seat), but the airline does not know
    if anyone will buy the seats.
  • If they release them now, they know they will be
    able to sell them all for 250 each.

11
Debbon Air Seat Release
  • The decision must be made now, and any number of
    the three seats may be released.
  • Debbon Air counts a 150 loss of goodwill for
    every last-minute customer turned away.
  • Probability distribution for X of
    last-minute customers requesting seats

12
Debbon Air Seat Release
  • What is Debbon Airs expected net revenue
    (revenue minus loss of goodwill) if all three
    seats are released now?
  • X 0 Net Revenue 3(250) 750
  • X 1 Net Rev 3(250) - 150 600

E (Net Revenue)
750(.45) 600(.30) 450(.15) 300(.10)
615.
13
Debbon Air Seat Release
  • How many seats should be released to maximize
    expected net revenue?

Two seats should be released.
14
Variance and Standard Deviation of Random
Variables
  • The variance of a discrete R.V. X is
  • The standard deviation is the square root of the
    variance.

15
Continuous random variables
  • Continuous random variable -- assumes values in
    intervals on the real line.

Total area 1
16
Example Uniform distribution
  • Is this a valid probability density function?

Yes
  • Find Pr(0.2 lt X lt 0.5)

0.31 0.3
  • Find Pr(X gt 0.6)

0.41 0.4
17
The Normal Probability Model
  • Importance of the Normal model
  • Numerous phenomena seem to follow it, or can be
    approximated by it.
  • It provides the basis for classical statistical
    inference through the Central Limit Theorem.
  • It motivates the Empirical Rule.

18
The Normal Probability Model
  • Crucial Properties
  • Bell-shaped, symmetric
  • Measures of central tendency (mean, median) are
    the same.
  • Parameters are mean and standard deviation
    .

19
The Normal Probability Model
  • The Normal probability density function

The Bell Curve
fY(y)
y
20
The Normal Probability Model
This area
0.5
This area
fY(y)
y
a
b
21
The Normal Probability Model Effect of the Mean
22
The Normal Probability Model Effect of the SD
2
1
23
The Normal Probability Model and Empirical Rule
24
The Standard Normal Distribution
Normal with Mean SD
Standard Normal with Mean 0 and SD 1
0
1
2
-1
-2
25
Table A.1 Standard Normal Distribution
  • Standard Normal random variable Z
  • E(Z) 0 and SD(Z) 1
  • Table A.1 gives Standard Normal probabilities to
    four decimal places.

.4332
fZ(z)
z
0
1.50
26
(No Transcript)
27
Practice with Table A.1
.5 - .4332
.0668
Pr(Z gt 0) .5
fZ(z)
.4332
z
0
1.50
28
Practice with Table A.1
.4332 .5
.9332
Pr(Z lt 0) .5
.4332
1.5
0
29
Practice with Table A.1
So k is about 1.645
.4500
.4495
k
0
1.64
30
Z Scores Standardizing Normal Distributions
  • Suppose X is
  • Transformation Formula
  • For a given x, the Z score is the number of SDs
    that x lies away from the mean.

31
Example Tele-Evangelist Donations
  • Money collected daily by a tele-evangelist,
    Y,is Normal with mean 2000, and SD 500.
  • What is the chance that tomorrows donations
    will be less than 1500?

Convert to Z scores
32
Tele-Evangelist Donations
  • Money collected is Normal with mean 2000 and SD
    500.
  • What is the probability that tomorrows
    donations are between 2000 and 3000?
  • Let Y collected tomorrow
  • Y is Normal with mean 2000 and SD 500
  • Need
  • Convert to Z scores

.4772
33
Tele-Evangelist Donations
  • What is the chance that tomorrows donations
    will exceed 3000?
  • Y is still Normal with mean 2000 and SD 500...

Convert to Z scores
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