尊敬的 微信汇率:1円 ≈ 0.046166 元 支付宝汇率:1円 ≈ 0.046257元 [退出登录]
SlideShare a Scribd company logo
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

More Related Content

What's hot

Bbs11 ppt ch03
Bbs11 ppt ch03Bbs11 ppt ch03
Bbs11 ppt ch03
Tuul Tuul
 
Chap05 discrete probability distributions
Chap05 discrete probability distributionsChap05 discrete probability distributions
Chap05 discrete probability distributions
Uni Azza Aunillah
 
Bbs11 ppt ch06
Bbs11 ppt ch06Bbs11 ppt ch06
Bbs11 ppt ch06
Tuul Tuul
 
Chap09 2 sample test
Chap09 2 sample testChap09 2 sample test
Chap09 2 sample test
Uni Azza Aunillah
 
Chap02 presenting data in chart & tables
Chap02 presenting data in chart & tablesChap02 presenting data in chart & tables
Chap02 presenting data in chart & tables
Uni Azza Aunillah
 
Chap08 fundamentals of hypothesis
Chap08 fundamentals of  hypothesisChap08 fundamentals of  hypothesis
Chap08 fundamentals of hypothesis
Uni Azza Aunillah
 
Numerical Descriptive Measures
Numerical Descriptive MeasuresNumerical Descriptive Measures
Numerical Descriptive Measures
Yesica Adicondro
 
Business statistics (Basics)
Business statistics (Basics)Business statistics (Basics)
Business statistics (Basics)
AhmedToheed3
 
Two-sample Hypothesis Tests
Two-sample Hypothesis Tests Two-sample Hypothesis Tests
Two-sample Hypothesis Tests
mgbardossy
 
Fundamentals of Testing Hypothesis
Fundamentals of Testing HypothesisFundamentals of Testing Hypothesis
Fundamentals of Testing Hypothesis
Yesica Adicondro
 
Bbs11 ppt ch01
Bbs11 ppt ch01Bbs11 ppt ch01
Bbs11 ppt ch01
Tuul Tuul
 
Bbs11 ppt ch12
Bbs11 ppt ch12Bbs11 ppt ch12
Bbs11 ppt ch12
Tuul Tuul
 
chap07.ppt
chap07.pptchap07.ppt
chap07.ppt
Murat Öztürkmen
 
Business Statistics Chapter 6
Business Statistics Chapter 6Business Statistics Chapter 6
Business Statistics Chapter 6
Lux PP
 
Newbold_chap08.ppt
Newbold_chap08.pptNewbold_chap08.ppt
Newbold_chap08.ppt
cfisicaster
 
Business Statistics Chapter 2
Business Statistics Chapter 2Business Statistics Chapter 2
Business Statistics Chapter 2
Lux PP
 
Bbs11 ppt ch10
Bbs11 ppt ch10Bbs11 ppt ch10
Bbs11 ppt ch10
Tuul Tuul
 
LECTURE 1 ONE SAMPLE T TEST.ppt
LECTURE 1 ONE SAMPLE T TEST.pptLECTURE 1 ONE SAMPLE T TEST.ppt
LECTURE 1 ONE SAMPLE T TEST.ppt
KEHKASHANNIZAM
 
Math 102- Statistics
Math 102- StatisticsMath 102- Statistics
Math 102- Statistics
Zahra Zulaikha
 
Business Statistics Chapter 8
Business Statistics Chapter 8Business Statistics Chapter 8
Business Statistics Chapter 8
Lux PP
 

What's hot (20)

Bbs11 ppt ch03
Bbs11 ppt ch03Bbs11 ppt ch03
Bbs11 ppt ch03
 
Chap05 discrete probability distributions
Chap05 discrete probability distributionsChap05 discrete probability distributions
Chap05 discrete probability distributions
 
Bbs11 ppt ch06
Bbs11 ppt ch06Bbs11 ppt ch06
Bbs11 ppt ch06
 
Chap09 2 sample test
Chap09 2 sample testChap09 2 sample test
Chap09 2 sample test
 
Chap02 presenting data in chart & tables
Chap02 presenting data in chart & tablesChap02 presenting data in chart & tables
Chap02 presenting data in chart & tables
 
Chap08 fundamentals of hypothesis
Chap08 fundamentals of  hypothesisChap08 fundamentals of  hypothesis
Chap08 fundamentals of hypothesis
 
Numerical Descriptive Measures
Numerical Descriptive MeasuresNumerical Descriptive Measures
Numerical Descriptive Measures
 
Business statistics (Basics)
Business statistics (Basics)Business statistics (Basics)
Business statistics (Basics)
 
Two-sample Hypothesis Tests
Two-sample Hypothesis Tests Two-sample Hypothesis Tests
Two-sample Hypothesis Tests
 
Fundamentals of Testing Hypothesis
Fundamentals of Testing HypothesisFundamentals of Testing Hypothesis
Fundamentals of Testing Hypothesis
 
Bbs11 ppt ch01
Bbs11 ppt ch01Bbs11 ppt ch01
Bbs11 ppt ch01
 
Bbs11 ppt ch12
Bbs11 ppt ch12Bbs11 ppt ch12
Bbs11 ppt ch12
 
chap07.ppt
chap07.pptchap07.ppt
chap07.ppt
 
Business Statistics Chapter 6
Business Statistics Chapter 6Business Statistics Chapter 6
Business Statistics Chapter 6
 
Newbold_chap08.ppt
Newbold_chap08.pptNewbold_chap08.ppt
Newbold_chap08.ppt
 
Business Statistics Chapter 2
Business Statistics Chapter 2Business Statistics Chapter 2
Business Statistics Chapter 2
 
Bbs11 ppt ch10
Bbs11 ppt ch10Bbs11 ppt ch10
Bbs11 ppt ch10
 
LECTURE 1 ONE SAMPLE T TEST.ppt
LECTURE 1 ONE SAMPLE T TEST.pptLECTURE 1 ONE SAMPLE T TEST.ppt
LECTURE 1 ONE SAMPLE T TEST.ppt
 
Math 102- Statistics
Math 102- StatisticsMath 102- Statistics
Math 102- Statistics
 
Business Statistics Chapter 8
Business Statistics Chapter 8Business Statistics Chapter 8
Business Statistics Chapter 8
 

Viewers also liked

Carbohydrate Counting
Carbohydrate CountingCarbohydrate Counting
Carbohydrate Counting
Emily Todhunter
 
Penal code presentation. abduction, assault, criminal force, extortion, force...
Penal code presentation. abduction, assault, criminal force, extortion, force...Penal code presentation. abduction, assault, criminal force, extortion, force...
Penal code presentation. abduction, assault, criminal force, extortion, force...
Mamunur Rashid
 
Probability
ProbabilityProbability
Probability
Hasnain Baber
 
Penal code
Penal codePenal code
Penal code
FAROUQ
 
Probability
ProbabilityProbability
Probability
Mamello Mapena
 
Lecture 1 basic concepts2009
Lecture 1 basic concepts2009Lecture 1 basic concepts2009
Lecture 1 basic concepts2009
barath r baskaran
 
PROBABILITY AND IT'S TYPES WITH RULES
PROBABILITY AND IT'S TYPES WITH RULESPROBABILITY AND IT'S TYPES WITH RULES
PROBABILITY AND IT'S TYPES WITH RULES
Bhargavi Bhanu
 
Discrete Mathematics Presentation
Discrete Mathematics PresentationDiscrete Mathematics Presentation
Discrete Mathematics Presentation
Salman Elahi
 
Probability powerpoint
Probability powerpointProbability powerpoint
Probability powerpoint
Tiffany Deegan
 
Basic Concept Of Probability
Basic Concept Of ProbabilityBasic Concept Of Probability
Basic Concept Of Probability
guest45a926
 
Probability Powerpoint
Probability PowerpointProbability Powerpoint
Probability Powerpoint
spike2904
 
PROBABILITY
PROBABILITYPROBABILITY
PROBABILITY
VIV13
 

Viewers also liked (12)

Carbohydrate Counting
Carbohydrate CountingCarbohydrate Counting
Carbohydrate Counting
 
Penal code presentation. abduction, assault, criminal force, extortion, force...
Penal code presentation. abduction, assault, criminal force, extortion, force...Penal code presentation. abduction, assault, criminal force, extortion, force...
Penal code presentation. abduction, assault, criminal force, extortion, force...
 
Probability
ProbabilityProbability
Probability
 
Penal code
Penal codePenal code
Penal code
 
Probability
ProbabilityProbability
Probability
 
Lecture 1 basic concepts2009
Lecture 1 basic concepts2009Lecture 1 basic concepts2009
Lecture 1 basic concepts2009
 
PROBABILITY AND IT'S TYPES WITH RULES
PROBABILITY AND IT'S TYPES WITH RULESPROBABILITY AND IT'S TYPES WITH RULES
PROBABILITY AND IT'S TYPES WITH RULES
 
Discrete Mathematics Presentation
Discrete Mathematics PresentationDiscrete Mathematics Presentation
Discrete Mathematics Presentation
 
Probability powerpoint
Probability powerpointProbability powerpoint
Probability powerpoint
 
Basic Concept Of Probability
Basic Concept Of ProbabilityBasic Concept Of Probability
Basic Concept Of Probability
 
Probability Powerpoint
Probability PowerpointProbability Powerpoint
Probability Powerpoint
 
PROBABILITY
PROBABILITYPROBABILITY
PROBABILITY
 

Similar to Basic Probability

Chap04 basic probability
Chap04 basic probabilityChap04 basic probability
Chap04 basic probability
Fathia Baroroh
 
chap05123111111111111111111111111111111.ppt
chap05123111111111111111111111111111111.pptchap05123111111111111111111111111111111.ppt
chap05123111111111111111111111111111111.ppt
KChit
 
Newbold_chap04.ppt
Newbold_chap04.pptNewbold_chap04.ppt
Newbold_chap04.ppt
cfisicaster
 
Bbs11 ppt ch04
Bbs11 ppt ch04Bbs11 ppt ch04
Bbs11 ppt ch04
Tuul Tuul
 
Probability
ProbabilityProbability
Probability
Sreenivasa Harish
 
chap03--Discrete random variables probability ai and ml R2021.pdf
chap03--Discrete random variables probability ai and ml R2021.pdfchap03--Discrete random variables probability ai and ml R2021.pdf
chap03--Discrete random variables probability ai and ml R2021.pdf
mitopof121
 
Lecture1a data types
Lecture1a data typesLecture1a data types
Lecture1a data types
mbadhi barnabas
 
Chap03 probability
Chap03 probabilityChap03 probability
Chap03 probability
Judianto Nugroho
 
chap06-1.pptx
chap06-1.pptxchap06-1.pptx
chap06-1.pptx
SoujanyaLk1
 
Chap14 multiple regression model building
Chap14 multiple regression model buildingChap14 multiple regression model building
Chap14 multiple regression model building
Uni Azza Aunillah
 
Unit 4--probability and probability distribution (1).pptx
Unit 4--probability and probability distribution (1).pptxUnit 4--probability and probability distribution (1).pptx
Unit 4--probability and probability distribution (1).pptx
akshay353895
 
Chap12 simple regression
Chap12 simple regressionChap12 simple regression
Chap12 simple regression
Uni Azza Aunillah
 
Chap15 time series forecasting & index number
Chap15 time series forecasting & index numberChap15 time series forecasting & index number
Chap15 time series forecasting & index number
Uni Azza Aunillah
 
Chi square using excel
Chi square using excelChi square using excel
Chi square using excel
vermaumeshverma
 
Decision Making in English
Decision Making in EnglishDecision Making in English
Decision Making in English
Yesica Adicondro
 
multiple regression model building
 multiple regression model building multiple regression model building
multiple regression model building
Yesica Adicondro
 
Simple Linear Regression
Simple Linear RegressionSimple Linear Regression
Simple Linear Regression
Yesica Adicondro
 
Chapter 4 power point presentation Regression models
Chapter 4 power point presentation Regression modelsChapter 4 power point presentation Regression models
Chapter 4 power point presentation Regression models
JustinXerri
 
chap12.pptx
chap12.pptxchap12.pptx
chap12.pptx
SoujanyaLk1
 
Chap16 decision making
Chap16 decision makingChap16 decision making
Chap16 decision making
Uni Azza Aunillah
 

Similar to Basic Probability (20)

Chap04 basic probability
Chap04 basic probabilityChap04 basic probability
Chap04 basic probability
 
chap05123111111111111111111111111111111.ppt
chap05123111111111111111111111111111111.pptchap05123111111111111111111111111111111.ppt
chap05123111111111111111111111111111111.ppt
 
Newbold_chap04.ppt
Newbold_chap04.pptNewbold_chap04.ppt
Newbold_chap04.ppt
 
Bbs11 ppt ch04
Bbs11 ppt ch04Bbs11 ppt ch04
Bbs11 ppt ch04
 
Probability
ProbabilityProbability
Probability
 
chap03--Discrete random variables probability ai and ml R2021.pdf
chap03--Discrete random variables probability ai and ml R2021.pdfchap03--Discrete random variables probability ai and ml R2021.pdf
chap03--Discrete random variables probability ai and ml R2021.pdf
 
Lecture1a data types
Lecture1a data typesLecture1a data types
Lecture1a data types
 
Chap03 probability
Chap03 probabilityChap03 probability
Chap03 probability
 
chap06-1.pptx
chap06-1.pptxchap06-1.pptx
chap06-1.pptx
 
Chap14 multiple regression model building
Chap14 multiple regression model buildingChap14 multiple regression model building
Chap14 multiple regression model building
 
Unit 4--probability and probability distribution (1).pptx
Unit 4--probability and probability distribution (1).pptxUnit 4--probability and probability distribution (1).pptx
Unit 4--probability and probability distribution (1).pptx
 
Chap12 simple regression
Chap12 simple regressionChap12 simple regression
Chap12 simple regression
 
Chap15 time series forecasting & index number
Chap15 time series forecasting & index numberChap15 time series forecasting & index number
Chap15 time series forecasting & index number
 
Chi square using excel
Chi square using excelChi square using excel
Chi square using excel
 
Decision Making in English
Decision Making in EnglishDecision Making in English
Decision Making in English
 
multiple regression model building
 multiple regression model building multiple regression model building
multiple regression model building
 
Simple Linear Regression
Simple Linear RegressionSimple Linear Regression
Simple Linear Regression
 
Chapter 4 power point presentation Regression models
Chapter 4 power point presentation Regression modelsChapter 4 power point presentation Regression models
Chapter 4 power point presentation Regression models
 
chap12.pptx
chap12.pptxchap12.pptx
chap12.pptx
 
Chap16 decision making
Chap16 decision makingChap16 decision making
Chap16 decision making
 

More from Yesica Adicondro

Strategi Tata Letak
Strategi Tata LetakStrategi Tata Letak
Strategi Tata Letak
Yesica Adicondro
 
Konsep Balanced Score Card
Konsep Balanced Score Card Konsep Balanced Score Card
Konsep Balanced Score Card
Yesica Adicondro
 
Makalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi BakriMakalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi Bakri
Yesica Adicondro
 
Makalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi BakriMakalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi Bakri
Yesica Adicondro
 
Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia
Yesica Adicondro
 
Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia
Yesica Adicondro
 
Makalah kelompok 3 gudang garam
Makalah kelompok 3 gudang garamMakalah kelompok 3 gudang garam
Makalah kelompok 3 gudang garam
Yesica Adicondro
 
Makalah Perusahaan Gudang Garam
Makalah Perusahaan Gudang GaramMakalah Perusahaan Gudang Garam
Makalah Perusahaan Gudang Garam
Yesica Adicondro
 
Makalah kelompok 2 garuda citilink PPT
Makalah kelompok 2 garuda citilink PPTMakalah kelompok 2 garuda citilink PPT
Makalah kelompok 2 garuda citilink PPT
Yesica Adicondro
 
Makalah kelompok 2 garuda citilink
Makalah kelompok 2 garuda citilinkMakalah kelompok 2 garuda citilink
Makalah kelompok 2 garuda citilink
Yesica Adicondro
 
Dmfi leaflet indonesian
Dmfi leaflet indonesianDmfi leaflet indonesian
Dmfi leaflet indonesian
Yesica Adicondro
 
Dmfi booklet indonesian
Dmfi booklet indonesian Dmfi booklet indonesian
Dmfi booklet indonesian
Yesica Adicondro
 
Makalah kinerja operasi Indonesia PPT
Makalah kinerja operasi Indonesia PPT Makalah kinerja operasi Indonesia PPT
Makalah kinerja operasi Indonesia PPT
Yesica Adicondro
 
Makalah kinerja operasi Indonesia
Makalah kinerja operasi IndonesiaMakalah kinerja operasi Indonesia
Makalah kinerja operasi Indonesia
Yesica Adicondro
 
Business process reengineering PPT
Business process reengineering PPTBusiness process reengineering PPT
Business process reengineering PPT
Yesica Adicondro
 
Business process reengineering Makalah
Business process reengineering Makalah Business process reengineering Makalah
Business process reengineering Makalah
Yesica Adicondro
 
PPT Balanced Scorecard
PPT Balanced Scorecard PPT Balanced Scorecard
PPT Balanced Scorecard
Yesica Adicondro
 
Makalah Balanced Scorecard
Makalah Balanced Scorecard Makalah Balanced Scorecard
Makalah Balanced Scorecard
Yesica Adicondro
 
Analisis Manajemen strategik PT garuda citilink
Analisis Manajemen strategik PT garuda citilinkAnalisis Manajemen strategik PT garuda citilink
Analisis Manajemen strategik PT garuda citilink
Yesica Adicondro
 

More from Yesica Adicondro (20)

Strategi Tata Letak
Strategi Tata LetakStrategi Tata Letak
Strategi Tata Letak
 
Konsep Balanced Score Card
Konsep Balanced Score Card Konsep Balanced Score Card
Konsep Balanced Score Card
 
Makalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi BakriMakalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi Bakri
 
Makalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi BakriMakalah kelompok Analisis Taksi Bakri
Makalah kelompok Analisis Taksi Bakri
 
Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia
 
Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia Makalah Analisis PT Kereta API Indonesia
Makalah Analisis PT Kereta API Indonesia
 
Makalah kelompok 3 gudang garam
Makalah kelompok 3 gudang garamMakalah kelompok 3 gudang garam
Makalah kelompok 3 gudang garam
 
Makalah Perusahaan Gudang Garam
Makalah Perusahaan Gudang GaramMakalah Perusahaan Gudang Garam
Makalah Perusahaan Gudang Garam
 
Makalah kelompok 2 garuda citilink PPT
Makalah kelompok 2 garuda citilink PPTMakalah kelompok 2 garuda citilink PPT
Makalah kelompok 2 garuda citilink PPT
 
Makalah kelompok 2 garuda citilink
Makalah kelompok 2 garuda citilinkMakalah kelompok 2 garuda citilink
Makalah kelompok 2 garuda citilink
 
Dmfi leaflet indonesian
Dmfi leaflet indonesianDmfi leaflet indonesian
Dmfi leaflet indonesian
 
Dmfi booklet indonesian
Dmfi booklet indonesian Dmfi booklet indonesian
Dmfi booklet indonesian
 
Makalah kinerja operasi Indonesia PPT
Makalah kinerja operasi Indonesia PPT Makalah kinerja operasi Indonesia PPT
Makalah kinerja operasi Indonesia PPT
 
Makalah kinerja operasi Indonesia
Makalah kinerja operasi IndonesiaMakalah kinerja operasi Indonesia
Makalah kinerja operasi Indonesia
 
Business process reengineering PPT
Business process reengineering PPTBusiness process reengineering PPT
Business process reengineering PPT
 
Business process reengineering Makalah
Business process reengineering Makalah Business process reengineering Makalah
Business process reengineering Makalah
 
PPT Balanced Scorecard
PPT Balanced Scorecard PPT Balanced Scorecard
PPT Balanced Scorecard
 
Makalah Balanced Scorecard
Makalah Balanced Scorecard Makalah Balanced Scorecard
Makalah Balanced Scorecard
 
Analisis Manajemen strategik PT garuda citilink
Analisis Manajemen strategik PT garuda citilinkAnalisis Manajemen strategik PT garuda citilink
Analisis Manajemen strategik PT garuda citilink
 
analisis PPT PT Japfa
analisis PPT PT Japfaanalisis PPT PT Japfa
analisis PPT PT Japfa
 

Recently uploaded

Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...
Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...
Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...
nainasharmans346
 
machine learning notes by Andrew Ng and Tengyu Ma
machine learning notes by Andrew Ng and Tengyu Mamachine learning notes by Andrew Ng and Tengyu Ma
machine learning notes by Andrew Ng and Tengyu Ma
Vijayabaskar Uthirapathy
 
Pune Call Girls <BOOK> 😍 Call Girl Pune Escorts Service
Pune Call Girls <BOOK> 😍 Call Girl Pune Escorts ServicePune Call Girls <BOOK> 😍 Call Girl Pune Escorts Service
Pune Call Girls <BOOK> 😍 Call Girl Pune Escorts Service
vashimk775
 
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
Do People Really Know Their Fertility Intentions?  Correspondence between Sel...Do People Really Know Their Fertility Intentions?  Correspondence between Sel...
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
Xiao Xu
 
Call Girls Lucknow 8923113531 Independent Call Girl Service in Lucknow
Call Girls Lucknow 8923113531 Independent Call Girl Service in LucknowCall Girls Lucknow 8923113531 Independent Call Girl Service in Lucknow
Call Girls Lucknow 8923113531 Independent Call Girl Service in Lucknow
hiju9823
 
Hyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls Hyderabad
Hyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls HyderabadHyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls Hyderabad
Hyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls Hyderabad
2004kavitajoshi
 
CAP Excel Formulas & Functions July - Copy (4).pdf
CAP Excel Formulas & Functions July - Copy (4).pdfCAP Excel Formulas & Functions July - Copy (4).pdf
CAP Excel Formulas & Functions July - Copy (4).pdf
frp60658
 
Bangalore ℂall Girl 000000 Bangalore Escorts Service
Bangalore ℂall Girl 000000 Bangalore Escorts ServiceBangalore ℂall Girl 000000 Bangalore Escorts Service
Bangalore ℂall Girl 000000 Bangalore Escorts Service
nhero3888
 
MySQL Notes For Professionals sttudy.pdf
MySQL Notes For Professionals sttudy.pdfMySQL Notes For Professionals sttudy.pdf
MySQL Notes For Professionals sttudy.pdf
Ananta Patil
 
Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...
Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...
Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...
mona lisa $A12
 
Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...
Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...
Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...
hanshkumar9870
 
Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...
Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...
Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...
meenusingh4354543
 
AI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOW
AI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOWAI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOW
AI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOW
arash10gamer
 
🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...
🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...
🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...
AK47
 
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
Timothy Spann
 
PCI-DSS-Data Security Standard v4.0.1.pdf
PCI-DSS-Data Security Standard v4.0.1.pdfPCI-DSS-Data Security Standard v4.0.1.pdf
PCI-DSS-Data Security Standard v4.0.1.pdf
incitbe
 
Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...
Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...
Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...
uthkarshkumar987000
 
🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...
🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...
🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...
yuvishachadda
 
Fabric Engineering Deep Dive Keynote from Fabric Engineering Roadshow
Fabric Engineering Deep Dive Keynote from Fabric Engineering RoadshowFabric Engineering Deep Dive Keynote from Fabric Engineering Roadshow
Fabric Engineering Deep Dive Keynote from Fabric Engineering Roadshow
Gabi Münster
 
IBM watsonx.data - Seller Enablement Deck.PPTX
IBM watsonx.data - Seller Enablement Deck.PPTXIBM watsonx.data - Seller Enablement Deck.PPTX
IBM watsonx.data - Seller Enablement Deck.PPTX
EbtsamRashed
 

Recently uploaded (20)

Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...
Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...
Hot Call Girls In Bangalore 🔥 9352988975 🔥 Real Fun With Sexual Girl Availabl...
 
machine learning notes by Andrew Ng and Tengyu Ma
machine learning notes by Andrew Ng and Tengyu Mamachine learning notes by Andrew Ng and Tengyu Ma
machine learning notes by Andrew Ng and Tengyu Ma
 
Pune Call Girls <BOOK> 😍 Call Girl Pune Escorts Service
Pune Call Girls <BOOK> 😍 Call Girl Pune Escorts ServicePune Call Girls <BOOK> 😍 Call Girl Pune Escorts Service
Pune Call Girls <BOOK> 😍 Call Girl Pune Escorts Service
 
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
Do People Really Know Their Fertility Intentions?  Correspondence between Sel...Do People Really Know Their Fertility Intentions?  Correspondence between Sel...
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
 
Call Girls Lucknow 8923113531 Independent Call Girl Service in Lucknow
Call Girls Lucknow 8923113531 Independent Call Girl Service in LucknowCall Girls Lucknow 8923113531 Independent Call Girl Service in Lucknow
Call Girls Lucknow 8923113531 Independent Call Girl Service in Lucknow
 
Hyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls Hyderabad
Hyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls HyderabadHyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls Hyderabad
Hyderabad Call Girls Service 🔥 9352988975 🔥 High Profile Call Girls Hyderabad
 
CAP Excel Formulas & Functions July - Copy (4).pdf
CAP Excel Formulas & Functions July - Copy (4).pdfCAP Excel Formulas & Functions July - Copy (4).pdf
CAP Excel Formulas & Functions July - Copy (4).pdf
 
Bangalore ℂall Girl 000000 Bangalore Escorts Service
Bangalore ℂall Girl 000000 Bangalore Escorts ServiceBangalore ℂall Girl 000000 Bangalore Escorts Service
Bangalore ℂall Girl 000000 Bangalore Escorts Service
 
MySQL Notes For Professionals sttudy.pdf
MySQL Notes For Professionals sttudy.pdfMySQL Notes For Professionals sttudy.pdf
MySQL Notes For Professionals sttudy.pdf
 
Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...
Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...
Delhi Call Girls Karol Bagh 👉 9711199012 👈 unlimited short high profile full ...
 
Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...
Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...
Mumbai Call Girls service 9920874524 Call Girl service in Mumbai Mumbai Call ...
 
Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...
Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...
Erotic Call Girls Hyderabad🫱9352988975🫲 High Quality Call Girl Service Right ...
 
AI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOW
AI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOWAI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOW
AI WITH THE HELP OF NAGALAND CAN WIN. DOWNLOAD NOW
 
🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...
🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...
🔥Book Call Girls Lucknow 💯Call Us 🔝 6350257716 🔝💃Independent Lucknow Escorts ...
 
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
 
PCI-DSS-Data Security Standard v4.0.1.pdf
PCI-DSS-Data Security Standard v4.0.1.pdfPCI-DSS-Data Security Standard v4.0.1.pdf
PCI-DSS-Data Security Standard v4.0.1.pdf
 
Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...
Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...
Independent Call Girls In Bangalore 9024918724 Just CALL ME Book Beautiful Gi...
 
🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...
🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...
🔥Night Call Girls Pune 💯Call Us 🔝 7014168258 🔝💃Independent Pune Escorts Servi...
 
Fabric Engineering Deep Dive Keynote from Fabric Engineering Roadshow
Fabric Engineering Deep Dive Keynote from Fabric Engineering RoadshowFabric Engineering Deep Dive Keynote from Fabric Engineering Roadshow
Fabric Engineering Deep Dive Keynote from Fabric Engineering Roadshow
 
IBM watsonx.data - Seller Enablement Deck.PPTX
IBM watsonx.data - Seller Enablement Deck.PPTXIBM watsonx.data - Seller Enablement Deck.PPTX
IBM watsonx.data - Seller Enablement Deck.PPTX
 

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
  翻译: