* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Lesson 12-7
Survey
Document related concepts
Transcript
Note for Lesson 12 – 7: Theoretical and Experimental Probability 12-7.1 – Finding Theoretical Probability Vocabulary: Probability – How likely an event is to occur Theoretical Probability – The ratio of the number of favorable outcomes to the total number of possible outcomes Experimental probability – The ratio of the number of times an event actually happens to the number of times the experiment is done Outcome – The result of a single trial in a probability experiment Sample Space – The set of all possible outcomes in a situation Event – Any group of outcomes in a situation involving probability Complement – All possible outcomes that are not in the event Odds – A ratio that compares the number of favorable and unfavorable outcomes An experiment is any activity that is based on chance. In an experiment each attempt is called a trial and the result of that trial is called an outcome. All of the possible outcomes of an experiment is called the sample space. So if you were rolling a die, the sample space would be the numbers 1, 2, 3, 4, 5, and 6 while the outcome would be whatever was rolled on that trial. Examples: Identify the sample space and the outcome shown for each experiment Tossing two coins: Sample space (HH, HT, TH, TT) Spinning a spinner with 4 colors: Sample Space (red, blue, black, and white) When the outcomes in a sample space have the same chance of occurring then we say the outcomes are equally likely. The roll of a die is an example of equally likely results. However, if the die an 2 ones on it and no 6 then the outcomes would not be equally likely because the one would have a greater probability since it occurs twice. Theoretical probability is the probability that something should happen based on outcomes all being equally likely. favorable outcomes Total outcomes Examples: Find the theoretical probability of each event. Theoretical probability can be found by Rolling a 3 on a die: 1 6 3 1 or 6 2 13 1 Picking a heart from a deck of cards: 52 4 12-7.2 – Find the complement of an event. Rolling a number greater than 3: The complement is everything that you do not want. The sum of the probability and its complement is always 1. For example, if there is a 25% chance of drawing a spade from a deck of cards, then there is a 75% chance you will not draw a spade from the deck. Examples: The weather forecaster predicts a 20% chance of rain. What is the probability it will not rain? 100 – 20 = 80 80% chance it will not rain 3 The probability of choosing a red marble is , what is the probability of not drawing a red marble? 4 1–¾=¼ ¼ chance of not drawing a red marble. 12-7.3 – Finding odds Odds are shown as a ratio of good results to bad result. The two numbers given in the odds will add up to the total number of outcomes. 1 If the odds of spinning a 4 on a spinner is 1:3, What is the probability of spinning a 4? Spinning anything 4 3 other than a 4? 4 Examples: The odds the choosing a green marble from a bag are 5:3. What is the probability of choosing a 5 green marble? 8 12-7.4 – Finding Experimental Probability The experimental probability of an experiment is what actually happens. The experimental probability could be different for the same type of experiment run different times. For example, if student A flips a coin 10 times and student B flips a coin 10 times the experimental probability of flipping a head could be different. Number of time an event occurs To find the experimental probability of an event = Number of trials Examples: An experiment consists of spinning a spinner. The results are listed in the table. Find the experimental probability of the following results. Outcome Frequency 8 8 2 Red 7 or a) Spinner lands on blue 7 8 5 20 5 Blue 8 Green 5 78 15 3 or b) Spinner does not land on green 7 8 5 20 4 12-7.5 – Using Experimental Probability We can use the experimental probability to predict what would happen in a future trial. If we find the experimental probability we can multiply it by the number of trials we want to run to predict the results. Example: A manufacturer inspects 800 light bulbs and finds 796 of them have no defects. a) what is the experimental probability that a light bulb chosen has no defect? 796 199 or or 99.5% 800 200 b) If the manufacturer inspects a shipment of 2000 light bulbs. Predict the number of light bulbs that have no defects. 199 * 2000 1990 200