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Published byThomasina Adams Modified over 9 years ago
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Sample space The set of all possible outcomes of a chance experiment –Roll a dieS={1,2,3,4,5,6} –Pick a cardS={A-K for ♠, ♥, ♣ & ♦} We want to know the size of the sample space and we also want to know if each of the outcomes is equally likely. In the examples above, assuming the die is fair and the cards are shuffled, all outcomes are equally likely.
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Event Any subset of the sample space –Rolling a prime number with a single die –Call the event A. Then A can be defined A= {2,3,5} –Pick a spade from a deck of 52 cards and call that event B. B={A♠, 2♠, 3♠, 4♠, 5♠, 6♠, 7♠, 8♠, 9♠, 10♠, J♠, Q♠, K♠}
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Complement The set of all outcomes that are not contained in the event –From before, the event A is rolling a prime, A = {2,3,5} –Therefore A C = {1,4,6}
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Union A or B The union is the set of all outcomes that are in at least one of the two events –A: Rolling a prime –B: Rolling an even number –Let event E be the union of A and B
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Intersection A and B The intersection of two events is the set of all outcomes that are in both events –A: Rolling a prime –B: Rolling an even number –Let event E be the intersection of A and B:
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Mutually Exclusive Events If two events have no common outcomes they are said to be mutually exclusive or disjoint. are mutually exclusive. –A: Pick a black card from a deck –B: Pick a diamond. –A and B are mutually exclusive. No card is both black and a diamond.
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Probability Denoted by P(A) Equally Likely: This method for calculating probabilities is only appropriate when the outcomes of the sample space are equally likely.
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Experimental Probability The relative frequency at which a chance experiment occurs –Flip a fair coin 30 times & get 17 heads –The experimental probability is 17/30 or about.567. –This is not the same thing as theoretical probability.
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Law of Large Numbers The long-run relative frequency of repeated independent events approaches the true probability as the number of trials increases.
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Basic Rules of Probability Rule 1. Legitimate Values For any event A, 0 < P(A) < 1 P(A) = 0 implies A cannot occur. P(A) = 1 implies A always occurs Rule 2. Something has to happen If S is the sample space, P(S) = 1
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Rule 3. Complement rule For any event A, P(A C ) = 1 – P(A) If there is a probability of making it to class on time of.95, the complements probability is.05. What does this mean?
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Multiplication Rule
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Ex 1) A large auto center sells cars made by many different manufacturers. Three of these are Honda, Nissan, and Toyota. (Note: these are not simple events since there are many types of each brand.) Suppose that P(H) =.25, P(N) =.18, P(T) =.14. Are these disjoint events? P(H or N or T) = P(not (H or N or T) = yes.25 +.18+.14 =.57 1 -.57 =.43
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Ex. 2) Musical styles other than rock and pop are becoming more popular. A survey of college students finds that the probability they like country music is.40. The probability that they liked jazz is.30 and that they liked both is.10. What is the probability that they like country or jazz? P(C or J) =.4 +.3 –.1 =.6
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Ex. 3) A certain brand of light bulbs are defective five percent of the time. You randomly pick a package of two such bulbs off the shelf of a store. What is the probability that both bulbs are defective? Can you assume they are independent? Independence is reasonable. P(both defective) = P(B 1 defective) times P (B 2 defective) =.05(.05)=.0025
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Ex. 3 cont.) Same as before. Each bulb has a 5% chance of being defective. What is the probability that at least one of the bulbs works? Let’s use the complement rule. Define event A = {at least one works}. What is A C ? A C ={neither one works}. We already found P(A C )=.0025. Therefore P(A)=1-.0025=.9975.
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