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Name ___________________________________ Date ______________________
Mrs. Labuski & Mrs. Rooney Period _______ 11-2 Experimental Probability


   VOCABULARY                 DEFINITION                EXAMPLE
                            An actvitity
                         involving chance          Flipping a coin
 EXPERIMENT
                           that can have            Rolling a die
                         different results.
                                                   Flipping a coin:
                           The different
                                                    Heads or tails
                          results that can
   OUTCOME
                            occur in an
                                                    Rolling a die:
                            experiment
                                                      1,2,3,4,5,6
                                                   Flipping a coin:
                The set of all
                                                   {Heads or tails}
              possible outcomes.
SAMPLE SPACE
              You can use { } to
                                                    Rolling a die:
             show sample spaces
                                                    {1,2,3,4,5,6}
               The ratio of the                    Flipped a coin
               number of times                         4 times
             the event occurs to                   Heads landed
EXPERIMENTAL
             the total number of                       3 times
 PROBABILITY
                   times the
                                                   Probability ≈ ¾
                experiment is
                  performed
For each experiment, identify the outcome shown and the sample space.




outcome: red                                 outcome: yellow

sample space: {red, blue}                    sample space: {red, blue, yellow}

Kerry has a bag of marbles. He removed one marble, recorded the color, and placed
it back in the bag. He repeated this process 15 times and recorded his results in the
frequency table.
         Color Selected          Red          Blue        Black         Green
          Frequency              3            1             5            6

3. Find the experimental probability that a marble selected from the bag will be
blue. 1
      15
4. Find the experimental probability that a marble selected from the bag will be
black. 5 = 1
        15 3
5. Based on Kerry’s experiment, which color marble is he most likely to select from
the bag? green

6. Based on Kerry’s experiment, which color marble is he least likely to select from
the bag? blue

7. In 10 free throws, Pamela made 3 shots. What is the experimental probability that
Pamela will make her next free throw? 3 = 30%
                                           10
8. Juan tossed a fair coin and it landed heads up. What is the outcome and sample
space of this experiment? outcome: heads
                             sample space: {heads, tails}
For each experiment, identify the outcome shown and the sample space.




outcome: green                                outcome:    2

sample space: {red, blue, green}              sample space: {1,2,3,4,5}

Amanda has a standard deck of playing cards. She picked one card, recorded
the suit, and placed it back in the deck. She repeated this process several times
and recorded her results in the table.




3. Find the experimental probability that a card    5
selected from the deck will be a spade.            24

4. Find the experimental probability that a card    4 =1
selected from the deck will be a diamond.          24 6

5. Based on Amanda’s experiment, which card suit is she most likely to select from
the deck? club

6. Based on Amanda’s experiment, which card suit is she least likely to select from
the deck? diamond

7. In 28 coin tosses, John got tails up 14 times. What is the experimental probability
that John will make get tails up on his next toss? 14 = 1 = 50%
                                                    28 2
Name ___________________________________ Date ______________________
Mrs. Labuski & Mrs. Rooney Period _______ 11-2 Experimental Probability


    VOCABULARY                  DEFINITION                 EXAMPLE



  EXPERIMENT


                                                      Flipping a coin:
    OUTCOME
                                                       Rolling a die:



                                                      Flipping a coin:
SAMPLE SPACE
                                                       Rolling a die:



                                                      Flipped a coin
                                                          4 times
EXPERIMENTAL                                          Heads landed
 PROBABILITY                                              3 times
                                                      Probability ≈


For each experiment, identify the outcome shown and the sample space.
outcome: _______________________             outcome: ______________________

sample space: ____________________           sample space: ___________________

Kerry has a bag of marbles. He removed one marble, recorded the color, and placed
it back in the bag. He repeated this process 15 times and recorded his results in the
frequency table.
         Color Selected          Red          Blue        Black         Green
          Frequency              3            1             5            6

3. Find the experimental probability that a marble selected from the bag will be
blue. __________________________________________________________

4. Find the experimental probability that a marble selected from the bag will be
black. __________________________________________________________

5. Based on Kerry’s experiment, which color marble is he most likely to select from
the bag? __________________________________________________________

6. Based on Kerry’s experiment, which color marble is he least likely to select from
the bag? __________________________________________________________

7. In 10 free throws, Pamela made 3 shots. What is the experimental probability that
Pamela will make her next free throw? ____________________________________

8. Juan tossed a fair coin and it landed heads up. What is the outcome and sample
space of this experiment? outcome: _______________________
                             sample space: ____________________
For each experiment, identify the outcome shown and the sample space.
outcome: _______________________              outcome: ______________________

sample space: ____________________            sample space: ___________________

Amanda has a standard deck of playing cards. She picked one card, recorded
the suit, and placed it back in the deck. She repeated this process several times
and recorded her results in the table.




3. Find the experimental probability that a card selected from the deck will be a
spade. _________________________________________________________

4. Find the experimental probability that a card selected from the deck will be a
diamond. _________________________________________________________

5. Based on Amanda’s experiment, which card suit is she most likely to select from
the deck? _________________________________________________________

6. Based on Amanda’s experiment, which card suit is she least likely to select from
the deck? _________________________________________________________

7. In 28 coin tosses, John got tails up 14 times. What is the experimental probability
that John will make get tails up on his next toss? ___________________________

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Lesson 11 2 experimental probability

  • 1. Name ___________________________________ Date ______________________ Mrs. Labuski & Mrs. Rooney Period _______ 11-2 Experimental Probability VOCABULARY DEFINITION EXAMPLE An actvitity involving chance Flipping a coin EXPERIMENT that can have Rolling a die different results. Flipping a coin: The different Heads or tails results that can OUTCOME occur in an Rolling a die: experiment 1,2,3,4,5,6 Flipping a coin: The set of all {Heads or tails} possible outcomes. SAMPLE SPACE You can use { } to Rolling a die: show sample spaces {1,2,3,4,5,6} The ratio of the Flipped a coin number of times 4 times the event occurs to Heads landed EXPERIMENTAL the total number of 3 times PROBABILITY times the Probability ≈ ¾ experiment is performed
  • 2. For each experiment, identify the outcome shown and the sample space. outcome: red outcome: yellow sample space: {red, blue} sample space: {red, blue, yellow} Kerry has a bag of marbles. He removed one marble, recorded the color, and placed it back in the bag. He repeated this process 15 times and recorded his results in the frequency table. Color Selected Red Blue Black Green Frequency 3 1 5 6 3. Find the experimental probability that a marble selected from the bag will be blue. 1 15 4. Find the experimental probability that a marble selected from the bag will be black. 5 = 1 15 3 5. Based on Kerry’s experiment, which color marble is he most likely to select from the bag? green 6. Based on Kerry’s experiment, which color marble is he least likely to select from the bag? blue 7. In 10 free throws, Pamela made 3 shots. What is the experimental probability that Pamela will make her next free throw? 3 = 30% 10 8. Juan tossed a fair coin and it landed heads up. What is the outcome and sample space of this experiment? outcome: heads sample space: {heads, tails}
  • 3. For each experiment, identify the outcome shown and the sample space. outcome: green outcome: 2 sample space: {red, blue, green} sample space: {1,2,3,4,5} Amanda has a standard deck of playing cards. She picked one card, recorded the suit, and placed it back in the deck. She repeated this process several times and recorded her results in the table. 3. Find the experimental probability that a card 5 selected from the deck will be a spade. 24 4. Find the experimental probability that a card 4 =1 selected from the deck will be a diamond. 24 6 5. Based on Amanda’s experiment, which card suit is she most likely to select from the deck? club 6. Based on Amanda’s experiment, which card suit is she least likely to select from the deck? diamond 7. In 28 coin tosses, John got tails up 14 times. What is the experimental probability that John will make get tails up on his next toss? 14 = 1 = 50% 28 2
  • 4. Name ___________________________________ Date ______________________ Mrs. Labuski & Mrs. Rooney Period _______ 11-2 Experimental Probability VOCABULARY DEFINITION EXAMPLE EXPERIMENT Flipping a coin: OUTCOME Rolling a die: Flipping a coin: SAMPLE SPACE Rolling a die: Flipped a coin 4 times EXPERIMENTAL Heads landed PROBABILITY 3 times Probability ≈ For each experiment, identify the outcome shown and the sample space.
  • 5. outcome: _______________________ outcome: ______________________ sample space: ____________________ sample space: ___________________ Kerry has a bag of marbles. He removed one marble, recorded the color, and placed it back in the bag. He repeated this process 15 times and recorded his results in the frequency table. Color Selected Red Blue Black Green Frequency 3 1 5 6 3. Find the experimental probability that a marble selected from the bag will be blue. __________________________________________________________ 4. Find the experimental probability that a marble selected from the bag will be black. __________________________________________________________ 5. Based on Kerry’s experiment, which color marble is he most likely to select from the bag? __________________________________________________________ 6. Based on Kerry’s experiment, which color marble is he least likely to select from the bag? __________________________________________________________ 7. In 10 free throws, Pamela made 3 shots. What is the experimental probability that Pamela will make her next free throw? ____________________________________ 8. Juan tossed a fair coin and it landed heads up. What is the outcome and sample space of this experiment? outcome: _______________________ sample space: ____________________ For each experiment, identify the outcome shown and the sample space.
  • 6. outcome: _______________________ outcome: ______________________ sample space: ____________________ sample space: ___________________ Amanda has a standard deck of playing cards. She picked one card, recorded the suit, and placed it back in the deck. She repeated this process several times and recorded her results in the table. 3. Find the experimental probability that a card selected from the deck will be a spade. _________________________________________________________ 4. Find the experimental probability that a card selected from the deck will be a diamond. _________________________________________________________ 5. Based on Amanda’s experiment, which card suit is she most likely to select from the deck? _________________________________________________________ 6. Based on Amanda’s experiment, which card suit is she least likely to select from the deck? _________________________________________________________ 7. In 28 coin tosses, John got tails up 14 times. What is the experimental probability that John will make get tails up on his next toss? ___________________________