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Conditional Probability: Independent Events Finite 7-5 example: • Toss a balanced die once and record the number on the top face. • Let E be the event that a 1 shows on the top face. • Let F be the event that the number on the top face is odd. – What is P(E)? – What is the Probability of the event E if we are told that the number on the top face is odd, that is, we know that the event F has occurred? Conditional Probability • Key idea: The original sample space no longer applies. • The new or reduced sample space is S={1, 3, 5} • Notice that the new sample space consists only of the outcomes in F. • P(E occurs given that F occurs) = 1/3 • Notation: P(E|F) = 1/3 Conditional Probability • Def. The conditional probability of E given F is the probability that an event, E, will occur given that another event, F, has occurred P( E F ) P( E | F ) P( F ) if P( F ) 0 Conditional Probability P( A B) P( A B) P( B) A B S Conditional Probability • If the outcomes of an experiment are equally likely, then number of outcomes in E F P( E | F ) number of outcomes in F Conditional Probability • Example: Earned degrees in the United States in recent year Female Male Total B 616 529 1145 M 194 171 365 P 30 44 74 D 16 26 42 Total 856 770 1626 529 P( Male | B) 0.4620 1145 770 P( Male ) 0.4735 1626 Conditional Probability The academy awards is soon to be shown. For a specific married couple the probability that the husband watches the show is 80%, the probability that his wife watches the show is 65%, while the probability that they both watch the show is 60%. If the husband is watching the show, what is the probability that his wife is also watching the show Example The academy awards is soon to be shown. Let B = the event that the husband watches the show P[B]= 0.80 Let A = the event that his wife watches the show P[A]= 0.65 and P[A ∩ B]= 0.60 P A B P A B P B 0.60 0.75 0.80 Example P( E F ) P( E | F ) P( F ) Conditional Probability can be rewritten as follows P( E F ) P( E | F ) * P( F ) Conditional Probability Example: E: dollar falls in value against the yen F: supplier demands renegotiation of contract P( E ) 0.40 P( F | E ) 0.8 Find P( E F ) P( E F ) 0.8 * 0.4 0.32 Conditional Probability mutually exclusive Two mutually exclusive events are independent only in the special case where P A 0 and P B 0. (also P A B 0 A B Mutually exclusive events are highly dependent otherwise. A and B cannot occur simultaneously. If one event occurs the other event does not occur. Difference between independence and mutually exclusive P A B P A P B or S P A B P B P A P A P S B A A B The ratio of the probability of the set A within B is the same as the ratio of the probability of the set A within the entire sample S. Difference between independence and mutually exclusive P A P B A if P A 0 P A B P B P A B if P B 0 and P A B P A P B if A and B are independent. The multiplicative rule of probability If the probability of the occurrence of event A is the same regardless of whether or not an outcome B occurs, then the outcomes A and B are said to be independent of one another. Symbolically, if P( A | B) P( A) then A and B are independent events. Independent Events P( A B) P( A | B) P( B) then we can also state the following relationship for independent events: P( A B) P( A) P( B) if and only if A and B are independent events. Independent Events • A coin is tossed and a single 6-sided die is rolled. Find the probability of getting a head on the coin and a 3 on the die. • Probabilities: P(head) = 1/2 P(3) = 1/6 P(head and 3) = 1/2 * 1/6 = 1/12 Example • Example: If E, F, and G are independent, then P( E F G) P( E ) * P( F ) * P(G) Independence Formula –3 events • If E, F, and G are independent given that an event H has occurred, then P( E F G | H ) P( E | H ) * P( F | H ) * P(G | H ) The Notion of Independence applied to Conditional Probability • Independent Events vs. Mutually Exclusive Events (Disjoint Events) • If two events are Independent, P( A | B) P( A) P( A B) P( A) P( B) • If two events are Mutually Exclusive Events then they do not share common outcomes Important Summary of the Rules of Probability P[A B] = P[A] + P[B] – P[A B] and P[A B] = P[A] + P[B] if P[A B] = f The Additive Rule for any event E P E 1 P E The Rule for Complements P A B P A B P B Conditional probability P A P B A if P A 0 P A B P B P A B if P B 0 and P A B P A P B if A and B are independent. This is the definition of independent The multiplicative rule of probability • you have a box with 3 blue marbles, 2 red marbles, and 4 yellow marbles. You are going to pull out one marble, record its color, put it back in the box and draw another marble. What is the probability of pulling out a red marble followed by a blue marble? Example • you have a box with 3 blue marbles, 2 red marbles, and 4 yellow marbles. You are going to pull out one marble, record its color, put it back in the box and draw another marble. What is the probability of pulling out a red marble followed by a blue marble? Example • Suppose you are going to draw two cards from a standard deck. What is the probability that the first card is an ace and the second card is a jack (just one of several ways to get “blackjack” or 21). Example • Suppose you are going to draw two cards from a standard deck. What is the probability that the first card is an ace and the second card is a jack (just one of several ways to get “blackjack” or 21). Example • Pages 330 – 333 • 1-15 odd, 21, 23, 29, 33 – 43 odd, 49 – 53 all, 64 – 67 all, 73 Homework