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Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-1
Chapter 4
Basic Probability
Statistics for Managers
Using Microsoft®
Excel
4th
Edition
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-2
Chapter Goals
After completing this chapter, you should be
able to:
 Explain basic probability concepts and definitions
 Use contingency tables to view a sample space
 Apply common rules of probability
 Compute conditional probabilities
 Determine whether events are statistically
independent
 Use Bayes’ Theorem for conditional probabilities
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-3
Important Terms
 Probability – the chance that an uncertain event
will occur (always between 0 and 1)
 Event – Each possible type of occurrence or
outcome
 Simple Event – an event that can be described
by a single characteristic
 Sample Space – the collection of all possible
events
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-4
Assessing Probability
 There are three approaches to assessing the probability
of un uncertain event:
1. a priori classical probability
2. empirical classical probability
3. subjective probability
an individual judgment or opinion about the probability of occurrence
outcomeselementaryofnumbertotal
occurcaneventthewaysofnumber
T
X
occurrenceofyprobabilit ==
observedoutcomesofnumbertotal
observedoutcomesfavorableofnumber
occurrenceofyprobabilit =
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-5
Sample Space
The Sample Space is the collection of all
possible events
e.g. All 6 faces of a die:
e.g. All 52 cards of a bridge deck:
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-6
Events
 Simple event
 An outcome from a sample space with one
characteristic
 e.g., A red card from a deck of cards
 Complement of an event A (denoted A’)
 All outcomes that are not part of event A
 e.g., All cards that are not diamonds
 Joint event
 Involves two or more characteristics simultaneously
 e.g., An ace that is also red from a deck of cards
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-7
Visualizing Events
 Contingency Tables
 Tree Diagrams
Red 2 24 26
Black 2 24 26
Total 4 48 52
Ace Not Ace Total
Full Deck
of 52 Cards
Red Card
Black Card
Not an Ace
Ace
Ace
Not an Ace
Sample
Space
Sample
Space2
24
2
24
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-8
Mutually Exclusive Events
 Mutually exclusive events
 Events that cannot occur together
example:
A = queen of diamonds; B = queen of clubs
 Events A and B are mutually exclusive
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-9
Collectively Exhaustive Events
 Collectively exhaustive events
 One of the events must occur
 The set of events covers the entire sample space
example:
A = aces; B = black cards;
C = diamonds; D = hearts
 Events A, B, C and D are collectively exhaustive
(but not mutually exclusive – an ace may also be
a heart)
 Events B, C and D are collectively exhaustive and
also mutually exclusive
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-10
Probability
 Probability is the numerical measure
of the likelihood that an event will
occur
 The probability of any event must be
between 0 and 1, inclusively
 The sum of the probabilities of all
mutually exclusive and collectively
exhaustive events is 1
Certain
Impossible
.5
1
0
0 ≤ P(A) ≤ 1 For any event A
1P(C)P(B)P(A) =++
If A, B, and C are mutually exclusive and
collectively exhaustive
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-11
Computing Joint and
Marginal Probabilities
 The probability of a joint event, A and B:
 Computing a marginal (or simple) probability:
 Where B1, B2, …, Bk are k mutually exclusive and collectively
exhaustive events
outcomeselementaryofnumbertotal
BandAsatisfyingoutcomesofnumber
)BandA(P =
)BdanP(A)BandP(A)BandP(AP(A) k21 +++= 
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-12
Joint Probability Example
P(Red and Ace)
Black
Color
Type Red Total
Ace 2 2 4
Non-Ace 24 24 48
Total 26 26 52
52
2
cardsofnumbertotal
aceandredarethatcardsofnumber
==
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-13
Marginal Probability Example
P(Ace)
Black
Color
Type Red Total
Ace 2 2 4
Non-Ace 24 24 48
Total 26 26 52
52
4
52
2
52
2
)BlackandAce(P)dReandAce(P =+=+=
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-14
P(A1 and B2) P(A1)
TotalEvent
Joint Probabilities Using
Contingency Table
P(A2 and B1)
P(A1 and B1)
Event
Total 1
Joint Probabilities Marginal (Simple) Probabilities
A1
A2
B1 B2
P(B1) P(B2)
P(A2 and B2) P(A2)
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-15
General Addition Rule
P(A or B) = P(A) + P(B) - P(A and B)
General Addition Rule:
If A and B are mutually exclusive, then
P(A and B) = 0, so the rule can be simplified:
P(A or B) = P(A) + P(B)
For mutually exclusive events A and B
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-16
General Addition Rule Example
P(Red or Ace) = P(Red) +P(Ace) - P(Red and Ace)
= 26/52 + 4/52 - 2/52 = 28/52
Don’t count
the two red
aces twice!
Black
Color
Type Red Total
Ace 2 2 4
Non-Ace 24 24 48
Total 26 26 52
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-17
Computing Conditional
Probabilities
 A conditional probability is the probability of one
event, given that another event has occurred:
P(B)
B)andP(A
B)|P(A =
P(A)
B)andP(A
A)|P(B =
Where P(A and B) = joint probability of A and B
P(A) = marginal probability of A
P(B) = marginal probability of B
The conditional
probability of A given
that B has occurred
The conditional
probability of B given
that A has occurred
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-18
 What is the probability that a car has a CD
player, given that it has AC ?
i.e., we want to find P(CD | AC)
Conditional Probability Example
 Of the cars on a used car lot, 70% have air
conditioning (AC) and 40% have a CD player
(CD). 20% of the cars have both.
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-19
Conditional Probability Example
No CDCD Total
AC .2 .5 .7
No AC .2 .1 .3
Total .4 .6 1.0
 Of the cars on a used car lot, 70% have air conditioning
(AC) and 40% have a CD player (CD).
20% of the cars have both.
.2857
.7
.2
P(AC)
AC)andP(CD
AC)|P(CD ===
(continued)
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-20
Conditional Probability Example
No CDCD Total
AC .2 .5 .7
No AC .2 .1 .3
Total .4 .6 1.0
 Given AC, we only consider the top row (70% of the cars). Of these,
20% have a CD player. 20% of 70% is about 28.57%.
.2857
.7
.2
P(AC)
AC)andP(CD
AC)|P(CD ===
(continued)
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-21
Using Decision Trees
Has AC
Does nothave AC
Has CD
Does nothave CD
Has CD
Does nothave CD
P(AC)= .7
P(AC’)= .3
P(AC and CD) = .2
P(AC and CD’) = .5
P(AC’ and CD’) = .1
P(AC’ and CD) = .2
7.
5.
3.
2.
3.
1.
All
Cars
7.
2.
Given AC or
no AC:
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-22
Using Decision Trees
Has CD
Does nothave CD
Has AC
Does nothave AC
Has AC
Does nothave AC
P(CD)= .4
P(CD’)= .6
P(CD and AC) = .2
P(CD and AC’) = .2
P(CD’ and AC’) = .1
P(CD’ and AC) = .5
4.
2.
6.
5.
6.
1.
All
Cars
4.
2.
Given CD or
no CD:
(continued)
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-23
Statistical Independence
 Two events are independent if and only
if:
 Events A and B are independent when the probability
of one event is not affected by the other event
P(A)B)|P(A =
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-24
Multiplication Rules
 Multiplication rule for two events A and B:
P(B)B)|P(AB)andP(A =
P(A)B)|P(A =Note: If A and B are independent, then
and the multiplication rule simplifies to
P(B)P(A)B)andP(A =
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-25
Marginal Probability
 Marginal probability for event A:
 Where B1, B2, …, Bk are k mutually exclusive and
collectively exhaustive events
)P(B)B|P(A)P(B)B|P(A)P(B)B|P(AP(A) kk2211 +++= 
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-26
Bayes’ Theorem
 where:
Bi = ith
event of k mutually exclusive and collectively
exhaustive events
A = new event that might impact P(Bi)
))P(BB|P(A))P(BB|P(A))P(BB|P(A
))P(BB|P(A
A)|P(B
kk2211
ii
i
+++
=

Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-27
Bayes’ Theorem Example
 A drilling company has estimated a 40%
chance of striking oil for their new well.
 A detailed test has been scheduled for more
information. Historically, 60% of successful
wells have had detailed tests, and 20% of
unsuccessful wells have had detailed tests.
 Given that this well has been scheduled for a
detailed test, what is the probability
that the well will be successful?
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-28
 Let S = successful well
U = unsuccessful well
 P(S) = .4 , P(U) = .6 (prior probabilities)
 Define the detailed test event as D
 Conditional probabilities:
P(D|S) = .6 P(D|U) = .2
 Goal is to find P(S|D)
Bayes’ Theorem Example
(continued)
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-29
667.
12.24.
24.
)6)(.2(.)4)(.6(.
)4)(.6(.
U)P(U)|P(DS)P(S)|P(D
S)P(S)|P(D
D)|P(S
=
+
=
+
=
+
=
Bayes’ Theorem Example
(continued)
Apply Bayes’ Theorem:
So the revised probability of success, given that this well
has been scheduled for a detailed test, is .667
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-30
 Given the detailed test, the revised probability
of a successful well has risen to .667 from the
original estimate of .4
Bayes’ Theorem Example
Event Prior
Prob.
Conditional
Prob.
Joint
Prob.
Revised
Prob.
S (successful) .4 .6 .4*.6 = .24 .24/.36 = .667
U (unsuccessful) .6 .2 .6*.2 = .12 .12/.36 = .333
Sum = .36
(continued)
Statistics for Managers Using
Microsoft Excel, 4e © 2004
Prentice-Hall, Inc. Chap 4-31
Chapter Summary
 Discussed basic probability concepts
 Sample spaces and events, contingency tables, simple
probability, and joint probability
 Examined basic probability rules
 General addition rule, addition rule for mutually exclusive events,
rule for collectively exhaustive events
 Defined conditional probability
 Statistical independence, marginal probability, decision trees,
and the multiplication rule
 Discussed Bayes’ theorem

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Basic Probability

  • 1. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-1 Chapter 4 Basic Probability Statistics for Managers Using Microsoft® Excel 4th Edition
  • 2. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-2 Chapter Goals After completing this chapter, you should be able to:  Explain basic probability concepts and definitions  Use contingency tables to view a sample space  Apply common rules of probability  Compute conditional probabilities  Determine whether events are statistically independent  Use Bayes’ Theorem for conditional probabilities
  • 3. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-3 Important Terms  Probability – the chance that an uncertain event will occur (always between 0 and 1)  Event – Each possible type of occurrence or outcome  Simple Event – an event that can be described by a single characteristic  Sample Space – the collection of all possible events
  • 4. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-4 Assessing Probability  There are three approaches to assessing the probability of un uncertain event: 1. a priori classical probability 2. empirical classical probability 3. subjective probability an individual judgment or opinion about the probability of occurrence outcomeselementaryofnumbertotal occurcaneventthewaysofnumber T X occurrenceofyprobabilit == observedoutcomesofnumbertotal observedoutcomesfavorableofnumber occurrenceofyprobabilit =
  • 5. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-5 Sample Space The Sample Space is the collection of all possible events e.g. All 6 faces of a die: e.g. All 52 cards of a bridge deck:
  • 6. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-6 Events  Simple event  An outcome from a sample space with one characteristic  e.g., A red card from a deck of cards  Complement of an event A (denoted A’)  All outcomes that are not part of event A  e.g., All cards that are not diamonds  Joint event  Involves two or more characteristics simultaneously  e.g., An ace that is also red from a deck of cards
  • 7. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-7 Visualizing Events  Contingency Tables  Tree Diagrams Red 2 24 26 Black 2 24 26 Total 4 48 52 Ace Not Ace Total Full Deck of 52 Cards Red Card Black Card Not an Ace Ace Ace Not an Ace Sample Space Sample Space2 24 2 24
  • 8. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-8 Mutually Exclusive Events  Mutually exclusive events  Events that cannot occur together example: A = queen of diamonds; B = queen of clubs  Events A and B are mutually exclusive
  • 9. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-9 Collectively Exhaustive Events  Collectively exhaustive events  One of the events must occur  The set of events covers the entire sample space example: A = aces; B = black cards; C = diamonds; D = hearts  Events A, B, C and D are collectively exhaustive (but not mutually exclusive – an ace may also be a heart)  Events B, C and D are collectively exhaustive and also mutually exclusive
  • 10. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-10 Probability  Probability is the numerical measure of the likelihood that an event will occur  The probability of any event must be between 0 and 1, inclusively  The sum of the probabilities of all mutually exclusive and collectively exhaustive events is 1 Certain Impossible .5 1 0 0 ≤ P(A) ≤ 1 For any event A 1P(C)P(B)P(A) =++ If A, B, and C are mutually exclusive and collectively exhaustive
  • 11. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-11 Computing Joint and Marginal Probabilities  The probability of a joint event, A and B:  Computing a marginal (or simple) probability:  Where B1, B2, …, Bk are k mutually exclusive and collectively exhaustive events outcomeselementaryofnumbertotal BandAsatisfyingoutcomesofnumber )BandA(P = )BdanP(A)BandP(A)BandP(AP(A) k21 +++= 
  • 12. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-12 Joint Probability Example P(Red and Ace) Black Color Type Red Total Ace 2 2 4 Non-Ace 24 24 48 Total 26 26 52 52 2 cardsofnumbertotal aceandredarethatcardsofnumber ==
  • 13. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-13 Marginal Probability Example P(Ace) Black Color Type Red Total Ace 2 2 4 Non-Ace 24 24 48 Total 26 26 52 52 4 52 2 52 2 )BlackandAce(P)dReandAce(P =+=+=
  • 14. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-14 P(A1 and B2) P(A1) TotalEvent Joint Probabilities Using Contingency Table P(A2 and B1) P(A1 and B1) Event Total 1 Joint Probabilities Marginal (Simple) Probabilities A1 A2 B1 B2 P(B1) P(B2) P(A2 and B2) P(A2)
  • 15. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-15 General Addition Rule P(A or B) = P(A) + P(B) - P(A and B) General Addition Rule: If A and B are mutually exclusive, then P(A and B) = 0, so the rule can be simplified: P(A or B) = P(A) + P(B) For mutually exclusive events A and B
  • 16. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-16 General Addition Rule Example P(Red or Ace) = P(Red) +P(Ace) - P(Red and Ace) = 26/52 + 4/52 - 2/52 = 28/52 Don’t count the two red aces twice! Black Color Type Red Total Ace 2 2 4 Non-Ace 24 24 48 Total 26 26 52
  • 17. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-17 Computing Conditional Probabilities  A conditional probability is the probability of one event, given that another event has occurred: P(B) B)andP(A B)|P(A = P(A) B)andP(A A)|P(B = Where P(A and B) = joint probability of A and B P(A) = marginal probability of A P(B) = marginal probability of B The conditional probability of A given that B has occurred The conditional probability of B given that A has occurred
  • 18. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-18  What is the probability that a car has a CD player, given that it has AC ? i.e., we want to find P(CD | AC) Conditional Probability Example  Of the cars on a used car lot, 70% have air conditioning (AC) and 40% have a CD player (CD). 20% of the cars have both.
  • 19. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-19 Conditional Probability Example No CDCD Total AC .2 .5 .7 No AC .2 .1 .3 Total .4 .6 1.0  Of the cars on a used car lot, 70% have air conditioning (AC) and 40% have a CD player (CD). 20% of the cars have both. .2857 .7 .2 P(AC) AC)andP(CD AC)|P(CD === (continued)
  • 20. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-20 Conditional Probability Example No CDCD Total AC .2 .5 .7 No AC .2 .1 .3 Total .4 .6 1.0  Given AC, we only consider the top row (70% of the cars). Of these, 20% have a CD player. 20% of 70% is about 28.57%. .2857 .7 .2 P(AC) AC)andP(CD AC)|P(CD === (continued)
  • 21. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-21 Using Decision Trees Has AC Does nothave AC Has CD Does nothave CD Has CD Does nothave CD P(AC)= .7 P(AC’)= .3 P(AC and CD) = .2 P(AC and CD’) = .5 P(AC’ and CD’) = .1 P(AC’ and CD) = .2 7. 5. 3. 2. 3. 1. All Cars 7. 2. Given AC or no AC:
  • 22. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-22 Using Decision Trees Has CD Does nothave CD Has AC Does nothave AC Has AC Does nothave AC P(CD)= .4 P(CD’)= .6 P(CD and AC) = .2 P(CD and AC’) = .2 P(CD’ and AC’) = .1 P(CD’ and AC) = .5 4. 2. 6. 5. 6. 1. All Cars 4. 2. Given CD or no CD: (continued)
  • 23. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-23 Statistical Independence  Two events are independent if and only if:  Events A and B are independent when the probability of one event is not affected by the other event P(A)B)|P(A =
  • 24. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-24 Multiplication Rules  Multiplication rule for two events A and B: P(B)B)|P(AB)andP(A = P(A)B)|P(A =Note: If A and B are independent, then and the multiplication rule simplifies to P(B)P(A)B)andP(A =
  • 25. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-25 Marginal Probability  Marginal probability for event A:  Where B1, B2, …, Bk are k mutually exclusive and collectively exhaustive events )P(B)B|P(A)P(B)B|P(A)P(B)B|P(AP(A) kk2211 +++= 
  • 26. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-26 Bayes’ Theorem  where: Bi = ith event of k mutually exclusive and collectively exhaustive events A = new event that might impact P(Bi) ))P(BB|P(A))P(BB|P(A))P(BB|P(A ))P(BB|P(A A)|P(B kk2211 ii i +++ = 
  • 27. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-27 Bayes’ Theorem Example  A drilling company has estimated a 40% chance of striking oil for their new well.  A detailed test has been scheduled for more information. Historically, 60% of successful wells have had detailed tests, and 20% of unsuccessful wells have had detailed tests.  Given that this well has been scheduled for a detailed test, what is the probability that the well will be successful?
  • 28. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-28  Let S = successful well U = unsuccessful well  P(S) = .4 , P(U) = .6 (prior probabilities)  Define the detailed test event as D  Conditional probabilities: P(D|S) = .6 P(D|U) = .2  Goal is to find P(S|D) Bayes’ Theorem Example (continued)
  • 29. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-29 667. 12.24. 24. )6)(.2(.)4)(.6(. )4)(.6(. U)P(U)|P(DS)P(S)|P(D S)P(S)|P(D D)|P(S = + = + = + = Bayes’ Theorem Example (continued) Apply Bayes’ Theorem: So the revised probability of success, given that this well has been scheduled for a detailed test, is .667
  • 30. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-30  Given the detailed test, the revised probability of a successful well has risen to .667 from the original estimate of .4 Bayes’ Theorem Example Event Prior Prob. Conditional Prob. Joint Prob. Revised Prob. S (successful) .4 .6 .4*.6 = .24 .24/.36 = .667 U (unsuccessful) .6 .2 .6*.2 = .12 .12/.36 = .333 Sum = .36 (continued)
  • 31. Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 4-31 Chapter Summary  Discussed basic probability concepts  Sample spaces and events, contingency tables, simple probability, and joint probability  Examined basic probability rules  General addition rule, addition rule for mutually exclusive events, rule for collectively exhaustive events  Defined conditional probability  Statistical independence, marginal probability, decision trees, and the multiplication rule  Discussed Bayes’ theorem