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Chapters 9 – 14 Statistics Tutorial
and Introduction
© Holmes Miller 1999
Course theme:
Matching supply with demand
Course motivation:
Firms that are better at matching supply
with demand enjoy a significant
competitive advantage.
Now for a statistics tutorial to prepare you for
some material that lies ahead --
Normal distribution
The density function for the normal
distribution looks like a
(symmetric) ‘bell-shaped’ curve
For the standard normal distribution, the mean (m) is 0 and the SD (s) is 1
Concerning the AREA under the curve, about
68% is within 1 SD of the mean
95% is within 2 SDs
99.7% is within 3 SDs
(AREA is the proportion of observations in an interval)
Density and Cumulative Distribution Functions
For the normal distribution
For Demand F(Q) is Prob {Demand <= Q)
Normal distribution
Standard Normal
General Normal
Mean = 0
Std dev = 1
2
-1
0
1
2
m - 2s
m-s
m
m+s
m + 2s
Sample Problems
The annual precipitation amounts for Allentown are normally distributed
with a mean of 32 in. and a standard deviation of 5 in.
If one year is randomly selected, find the probability that the mean
precipitation in a year is less than 29 in? Less than 40in? Greater than
40 in?
Use two methods
Standardize using formula z = (X – m) / s and use the Excel function:
NORMSDIST(x)
Use the Excel function NORMDIST(X, m, s, 1)
Answers:
less than 29 in? 0.274
Less than 40in? 0.945
Greater than 40 in? 0.055
Expected Value
The expected value of something happening is the “payoff” from each
possible outcome multiplied by the probability of that outcome summed
over all of the outcomes
Mathematically if v(i) is the payoff if event i occurs, and if p(i) is the
probability that it occurs, the expected value is: Si = p(i) * v(i)
Example: From a deck of cards, if you draw a heart you win $100 and if
you draw a diamond you win $70. If you draw a spade you win $50 and if
you draw a club you lose $200. What is your expected payoff?
Answer: (.25)*100 + (.25)*70 +(.25)*50 + (.25)(-200) = $5
Expected Value Problem
Probabilities
Payoffs
Alt 1
Alt
Alt 3
Event A
0.25
100
75
145
Event B
0.45
200
250
275
Event C
0.30
300
275
180
Alt 1
Expected return
205
Alt 2
213.75
Alt 3
214
Another Game Situation
You have won $64,000 and are facing a tough $125,000 question.
You have four choices and are guessing so there is a 25% chance
you will guess right and a 75% chance you will guess wrong.
This means that you will receive $125,000 if you answer the
question correctly. But you will receive only $32,000 if your
answer is wrong. Also, you can walk away with $64,000 if you
decide not to answer the question.
What would be the best strategy to take?
Loss Function
Rolling Dice
The Loss Function L(Q) is the
expected amount that X is
greater than Q
Example: When rolling dice, Loss
Function for rolling more than a
seven
If X is normally distributed, we
can use loss function in appendix
B of the text
(a)
(b)
Roll
Prob
Amount X exceeds 7
(a) * (b)
2
0.0278
0
0
3
0.0556
0
0
4
0.0833
0
0
5
0.1111
0
0
6
0.1389
0
0
7
0.1667
0
0
8
0.1389
1
0.139
9
0.1111
2
0.222
10
0.0833
3
0.250
11
0.0556
4
0.222
12
0.0278
5
0.139
L(7) = Total of last column
0.972
Loss Function Problems
Normal Distribution
Loss Function for -2.21? (2.2147)
Loss function for 1.83? (0.0132)
Loss Function for 2.70?
Loss Function for -0.058?