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1
Unions and Intersections
Compound events---defined as a composition
of two or more other events
They can be formed in two ways:
• Union---the union of two events A and B, denoted
as , is the event that occurs if either A or B or
both occur on a single performance of an
experiment
• Intersection---the intersection of two events A and
B, denoted as , is the event that occurs if both
A and B occur on a single performance of the
experiment
A B
A B
Unions and Intersections
A B
A BA B S
       P A B P A P B P A B    
Formal Addition Rule
1211109876
111098765
10987654
9876543
8765432
1,6
(7)
1,5
(6)
1,4
(5)
1,3
(4)
1,2
(3)
1,1
(2)
1
654321
Roll two standard dice and record the sum of up faces
Define C: {A 5 appears on at least one of the dice
What is P(C)? P(C) = 11/36
What is ?
Unions and Intersections
A B C 
A C
A B
S
C
A C
is empty  P(A and C) = 0
2
What is ?
Unions and Intersections
A B C 
A B
S
C
       
     
 
- - -
P A B C P A P B C
P A B P B C P A C
P A B C
    
  
  
Disjoint and Mutually Exclusive Events
A
S
B
Events A and B are disjoint or mutually exclusive
if they cannot occur at the same time.
Two or more events are mutually exclusive if no two
of them have outcomes in common.
Disjoint and Mutually Exclusive Events
A
S
B
Events A and B are disjoint or mutually exclusive
if they cannot occur at the same time.
Two or more events are mutually exclusive if no two
of them have outcomes in common.
Disjoint and Mutually Exclusive Events
A C
S
B
Events A and B are disjoint or mutually exclusive
if they cannot occur at the same time.
Two or more events are mutually exclusive if no two
of them have outcomes in common.
Three non-mutually
exclusive events
3
Unions and Intersections
Applet with a Venn diagram containing three events. You
can play around with the 3 events—intersecting or not
http://stat-www.berkeley.edu/~stark/Java/Html/Venn3.htm
Lets you visualize various situations and displays
probabilities for the situations. Also includes some
conditional probabilities (definition next time).
Complementary Events
Complement---the complement of event A,
denoted as , is the event that A does not
occur ; the event consisting of all sample points
not in A
Rules:
May be useful for events with large numbers of
possible outcomes
or c
A A
   
   
   
1
1
1
P A P A
P A P A
P A P A
 
 
 
Complementary Events
Example
Toss a coin ten times and record the up face
after each toss. What is the probability of
event
A: {Observe at least one head}?
The list of possible sample points is long:
HHHHHHHHHH, HHHHHHHHHT,
HHHHHHHHTH, HHHHHHHTHH, etc.
How many possible outcomes are there?
10
2 1 024,
Complementary Events
Example
Consider the complement of A,
: {No heads are observed in 10 tosses} =
{TTTTTTTTTT}
What is P( )?
P( ) = 1/1,024
Now, P(A) = 1 – P( ) = 1 – 1/1,024
= 1,023/1,024 = 0.999
A
A
A
A
4
Example
A study of binge alcohol drinking by college
students was published by the Amer. Journal of
Public Health in July ’95. Suppose an
experiment consists of randomly selecting one
of the undergraduate students who participated
in the study.
Consider the following events:
A: {The student is a binge drinker}
B: {The student is a male}
C: {The student lives in a coed dorm}
Describe each of the following events in terms of
unions, intersections and complements
a. The student is male and a binge drinker --
b. The student is not a binge drinker --
c. The student is male or lives in a coed dorm --
d. The student is female and not a binge --
drinker
A
 etc.A B, A B, A, 
A: {The student is a binge drinker}
B: {The student is a male}
C: {The student lives in a coed dorm}
B C
A B
A B

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U n i

  • 1. 1 Unions and Intersections Compound events---defined as a composition of two or more other events They can be formed in two ways: • Union---the union of two events A and B, denoted as , is the event that occurs if either A or B or both occur on a single performance of an experiment • Intersection---the intersection of two events A and B, denoted as , is the event that occurs if both A and B occur on a single performance of the experiment A B A B Unions and Intersections A B A BA B S        P A B P A P B P A B     Formal Addition Rule 1211109876 111098765 10987654 9876543 8765432 1,6 (7) 1,5 (6) 1,4 (5) 1,3 (4) 1,2 (3) 1,1 (2) 1 654321 Roll two standard dice and record the sum of up faces Define C: {A 5 appears on at least one of the dice What is P(C)? P(C) = 11/36 What is ? Unions and Intersections A B C  A C A B S C A C is empty  P(A and C) = 0
  • 2. 2 What is ? Unions and Intersections A B C  A B S C                 - - - P A B C P A P B C P A B P B C P A C P A B C            Disjoint and Mutually Exclusive Events A S B Events A and B are disjoint or mutually exclusive if they cannot occur at the same time. Two or more events are mutually exclusive if no two of them have outcomes in common. Disjoint and Mutually Exclusive Events A S B Events A and B are disjoint or mutually exclusive if they cannot occur at the same time. Two or more events are mutually exclusive if no two of them have outcomes in common. Disjoint and Mutually Exclusive Events A C S B Events A and B are disjoint or mutually exclusive if they cannot occur at the same time. Two or more events are mutually exclusive if no two of them have outcomes in common. Three non-mutually exclusive events
  • 3. 3 Unions and Intersections Applet with a Venn diagram containing three events. You can play around with the 3 events—intersecting or not http://stat-www.berkeley.edu/~stark/Java/Html/Venn3.htm Lets you visualize various situations and displays probabilities for the situations. Also includes some conditional probabilities (definition next time). Complementary Events Complement---the complement of event A, denoted as , is the event that A does not occur ; the event consisting of all sample points not in A Rules: May be useful for events with large numbers of possible outcomes or c A A             1 1 1 P A P A P A P A P A P A       Complementary Events Example Toss a coin ten times and record the up face after each toss. What is the probability of event A: {Observe at least one head}? The list of possible sample points is long: HHHHHHHHHH, HHHHHHHHHT, HHHHHHHHTH, HHHHHHHTHH, etc. How many possible outcomes are there? 10 2 1 024, Complementary Events Example Consider the complement of A, : {No heads are observed in 10 tosses} = {TTTTTTTTTT} What is P( )? P( ) = 1/1,024 Now, P(A) = 1 – P( ) = 1 – 1/1,024 = 1,023/1,024 = 0.999 A A A A
  • 4. 4 Example A study of binge alcohol drinking by college students was published by the Amer. Journal of Public Health in July ’95. Suppose an experiment consists of randomly selecting one of the undergraduate students who participated in the study. Consider the following events: A: {The student is a binge drinker} B: {The student is a male} C: {The student lives in a coed dorm} Describe each of the following events in terms of unions, intersections and complements a. The student is male and a binge drinker -- b. The student is not a binge drinker -- c. The student is male or lives in a coed dorm -- d. The student is female and not a binge -- drinker A  etc.A B, A B, A,  A: {The student is a binge drinker} B: {The student is a male} C: {The student lives in a coed dorm} B C A B A B