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OKAN UNIVERSITY FACULTY OF ENGINEERING AND ARCHITECTURE MATH 265 Probability and Random Processes 03 Conditional Probability and Independence Fall 2011 Yrd. Doç. Dr. Didem Kivanc Tureli [email protected] [email protected] 4/10/2011 Lecture 3 1 Conditional Probability Question • Question : I throw a die once. I get a three. I am going to throw the die a second time. What is the probability that the sum of the two throws is 8? • Experiment: Throw 2 dice • Sample Space: – S = {(1,1), (1,2), (1,3), (1,4), (1,5), (1,6), (2,1), (2,2), (2,3), (2,4), (2,5), (2,6), (3,1), (3,2), (3,3), (3,4), (3,5), (3,6), (4,1), (4,2), (4,3), (4,4), (4,5), (4,6), (5,1), (5,2), (5,3), (5,4), (5,5), (5,6), (6,1), (6,2), (6,3), (6,4), (6,5), (6,6)} 4/10/2011 Lecture 3 2 Answer • Define events E and F • E = Getting a sum of 8 = {(1,7), (2,6), (3,5), (4,4), (5,3), (6,2), (7,1)} • F = Getting a 3 on the first throw ={(3,1), (3,2), (3,3), (3,4), (3,5), (3,6)} • Event of getting a sum of 8 when the result of the first throw is 3: • EF={(3,5)} • Probability of getting a sum of 8 when the result of the first throw is 3 = Number of elements in EF 1 Number of elements in E 6 4/10/2011 Lecture 3 3 Graphical Interpretation of Conditional Probability • You already know you are inside set E. • What is the probability that you are inside set EF? S E F 4/10/2011 Lecture 3 4 Definition • If P(F) > 0 then P( EF ) PE | F P( F ) “Probability that event E will occur given that event F has occurred” “Probability of event E given event F” “Probability of E given F” 4/10/2011 Lecture 3 5 Examples • A coin is flipped twice. If we assume that all four points in the sample space S = {(H,H), (H,T), (T,H), (T,T)}, are equally likely, what is the conditional probability that both flips result in heads, given that the first flip does? 4/10/2011 Lecture 3 6 Examples • E = Event that both flips result in heads = {(H, H)} • F = Event that first flip results in heads = {(H, H), (H, T)} • Notice that the intersection of sets E and F gives set E, that is, EF = E. Therefore, P(EF)=P(E) • Conditional probability that both flips result in heads, given that the first flip does is P(E|F) P( EF ) P( E ) 1/ 4 1 PE | F P( F ) P( F ) 1/ 2 2 4/10/2011 Lecture 3 7 Examples • You are a contestant on a quiz show. On this show, an urn contains 10 white, 5 yellow and 10 black marbles. A marble will be chosen at random from the urn. If you guess the color of the marble correctly, then you will win 1 million TL. • The marble will be chosen from the bucket behind a curtain, in a darkened room. • You have a friend in the production team who wants to help you to win the money. But he can’t see very well in the dark. All he can see is that the ball that came out was light colored, either white or yellow but definitely not black. • Should you guess white or yellow? What is the probability that the ball chosen is yellow? 4/10/2011 Lecture 3 8 Examples W1 W1 W2 W2 W1 4/10/2011 W4 W7 W3 W3 W8 W9 W6 W10 W5 W4 W2 W3 W5 W6 W7 W8 W9 W4 W5 W10 Lecture 3 9 Examples • E = Event that chosen ball is not black – E = {W1, W2, W3, W4, W5, W6, W7, W8, W9, W10, Y1, Y2, Y3, Y4, Y5} • F = Event that chosen ball is yellow = {Y1, Y2, Y3, Y4, Y5} • As with the previous example, EF = F. Therefore, P(EF)=P(E) • The conditional probability that the chosen ball is yellow given that the chosen ball is not black P(F|E) P( EF ) P( F ) 5 / 25 1 PF | E P( E ) P( E ) 15 / 25 3 4/10/2011 Lecture 3 10 Examples • In the card game bridge, the 52 cards are dealt out equally to 4 players – called East, West, North and South. If North and South have a total of 8 spades among them, what is the probability that East has 3 of the remaining 5 spades? 4/10/2011 Lecture 3 11 • There are 52 cards, 13 of which are spades. • All the cards are divided into 4 equal piles of 13 cards each, named north, south, east and west. • Let (n, s, e, w) be the event that north has n spades, south has s spades, east has e spades and west has w spades. • Then n + s + e + w = 13. From the previous lecture, there are 13 4 1 16 16! 14 15 16 7 5 16 560 13 13 6 13!3! possible values for (n, s, e, w) which fit this condition. 4/10/2011 Lecture 3 12 • Let F be the event that n + s = 8, therefore e + w = 5. • Again from the previous lecture, the number of values for (n, s, e, w) in the event F is the number of quadruplets (n, s, e, w) which satisfy both the above equations, that is, 5 2 1 8 2 1 6 9 5 8 5 8 6 9 54 4/10/2011 Lecture 3 13 • We can also find this result by realizing that we need to choose – numbers (e, w) from {(0,5), (1,4), (2,3), (3,2), (4,1), (5,0)}, – numbers (n, s) from {(0,8), (1,7), (2,6), (3,5), (4,4), (5,3) , (6,2), (7,1), (8,0)}, • So the set F is F ={(0,8,0,5), (0,8,1,4), (0,8,2,3), (0,8,3,2), (0,8,4,1), (0,8,5,0), (1,7,0,5), (1,7,1,4), (1,7,2,3), (1,7,3,2), (1,7,4,1), (1,7,5,0), (2,6,0,5), (2,6,1,4), (2,6,2,3), (2,6,3,2), (2,6,4,1), (2,6,5,0), …. (8,0,0,5), (8,0,1,4), (8,0,2,3), (8,0,3,2), (8,0,4,1), (8,0,5,0)} 4/10/2011 Lecture 3 14 • Let E be the event that e ≥ 3. E is a very large set, so let us list only the elements of the event EF: • EF ={(0,8,3,2), (0,8,4,1), (0,8,5,0), (1,7,3,2), (1,7,4,1), (1,7,5,0), (2,6,3,2), (2,6,4,1), (2,6,5,0), …. (8,0,3,2), (8,0,4,1), (8,0,5,0)} • The number of such elements is 8 2 1 9 3 3 3 9 27 8 8 4/10/2011 Lecture 3 15 • Finally then the probability of east having 3 or more spades when it is given that north and south have 8 spades between them is: P( EF ) 27 / 560 1 PE | F P( F ) 54 / 560 2 4/10/2011 Lecture 3 16 Examples • Celine is undecided as to whether to take a French course or a chemistry course. She estimates that her probability of receiving an A grade would be ½ in a French course, and 2/3 in a chemistry course. If Celine decides to base her decision on the flip of a fair coin, what is the probability that she gets an A in chemistry? 4/10/2011 Lecture 3 17 Examples • The sample space for this example is • S = {(French, A), (French, no A), (Chemistry, A), (Chemistry, no A)} • But the events do not have equal probability. • In general, use the formula P(AB)=P(A|B)P(B) as below: 2 1 1 P Chemistry, A P A | Chemistry P Chemistry 3 2 3 1 1 1 P Chemistry, no A P no A | Chemistry P Chemistry 3 2 6 1 1 1 P French, A P A | French P French 2 2 4 1 1 1 P French, no A P no A | French P French 2 2 4 4/10/2011 Lecture 3 18 Find the probability that Celine gets an A • There are two ways that Celine can get an A: either she takes French and gets an A, or she takes Chemistry and gets an A: A Chemistry, A French, A • It is also true that: Chemistry, A French, A {} • In general the following holds: If F A B then P F P A P B P A B • Therefore: P A P Chemistry, A P French, A P {} 1 1 7 0 4 3 12 4/10/2011 Lecture 3 19 Multiplication Rule P E1E2 En P E1 P E2 | E1 P E3 | E1E2 P En | E1E2 En1 • The probability that events E1 and E2 and E3 and … and En occur is equal to the product of – The probability that event E1 occurs – The probability that event E2 occurs given that event E1 occurs – The probability that event E3 occurs given that event E1 occurs and event E2 occurs, –… – The probability that event En occurs given that event E1 occurs and event E2 occurs, …, and event En occurs. 4/10/2011 Lecture 3 20 Example • An ordinary deck of 52 playing cards is randomly divided into 4 piles of 13 cards each. Compute the probability that each pile has exactly 1 ace • E1 = Event that ace of hearts is in any one of the piles. • E2 = Event that ace of spades and ace of hearts are in different piles • E2 = Event that ace of spades, ace of hearts and ace of clubs are in different piles • E4 = Event that ace of spades, ace of hearts, ace of clubs and ace of diamonds are in different piles • P(E1) = 1 4/10/2011 Lecture 3 21 13 Card Slots Left Pile 1 Pile 3 12 Card Slots Left 13 Card Slots Left Pile 2 Pile 4 13 Card Slots Left • Ace of spades can go into any one of Piles 2,3,4. • There are 13 cards in every one of those piles, so 13 13 13 39 P E2 | E1 12 13 13 13 51 4/10/2011 Lecture 3 22 13 Card Slots Left Pile 1 Pile 3 12 Card Slots Left 12 Card Slots Left Pile 2 Pile 4 13 Card Slots Left • Ace of diamonds can go into any one of Piles 3,4. • There are 13 cards in every one of those piles, so P E3 | E1 E2 4/10/2011 13 13 26 12 12 13 13 50 Lecture 3 23 12 Card Slots Left Pile 1 Pile 3 12 Card Slots Left 12 Card Slots Left Pile 2 Pile 4 13 Card Slots Left • Ace of diamonds can go into any one of Piles 3,4. • There are 13 cards in every one of those piles, so P E4 | E1 E2 E3 4/10/2011 13 13 12 12 12 13 49 Lecture 3 24 • Now using the multiplication rule: P E1 E2 E3 E4 P E1 P E2 | E1 P E3 | E1E2 P E4 | E1E2 E3 39 26 13 1 0.105 51 50 49 4/10/2011 Lecture 3 25 Bayes’ Formula (Version 1) P A | B P AB P B S A B • Your sample space is now just B. 4/10/2011 Lecture 3 26 Bayes’ Formula (Version 2) P Fj | E P EFj PE P E | Fj P Fj n PE | F PF i 1 i i • Take the sample space S and divide it into n pieces. S E F1 4/10/2011 F2 F3 Lecture 3 Fn 27 Example • An insurance company believes that people can be divided into two classes – those that are accident prone and those that are not. Their statistics show that an accident prone person will have an accident at some time within a fixed 1 year period with probability 0.4, whereas this probability decreases to 0.2 for a non accident prone person. If we assume that 30 percent of the population is accident prone, what is the probability that a new policyholder will have an accident within a year of purchasing a policy? 4/10/2011 Lecture 3 28 • Event A = New policy holder is accident prone • Event B = New policy holder has an accident within a year of purchasing the policy S A AB P B P AB P Ac B B Bayes' Rule : P AB P A | B P B P B | A P A P B P AB P Ac B P B | A P A P B | Ac P Ac 4/10/2011 Lecture 3 29 Universal Set: Everything may happen P(A)=0.3 Event A: Policy holder is Accident Prone P(Ac)= 0.7 Event Ac: Policy holder is NOT Accident Prone P(B|A)= 0.4 P(Bc|A)= 0.6 P(B|Ac)= 0.2 Event B|A: Accident prone policy holder has an accident Event Bc|A: Accident prone policy holder DOES NOT have an accident Event B|Ac: NON-accident prone policy holder has an accident 4/10/2011 Lecture 3 P(Bc|Ac)= 0.8 Event Bc|Ac: NON-accident prone policy holder DOES NOT have an accident 30 Example • Suppose that a new policy holder has an accident within a year of purchasing a policy. What is the probability that he/she is accident prone? • Event A = New policy holder is accident prone • Event B = New policy holder has an accident within a year of purchasing the policy • P(A|B)=? P( AB) P B | A P A P A | B P B P B P B | A P A P B | A P A P B | Ac P Ac 0.4 0.3 12 6 0.4 0.3 0.2 0.7 12 14 13 4/10/2011 Lecture 3 31 Example • In a criminal investigation the inspector in charge is 60 percent convinced that Ahmet is guilty. Now a new piece of evidence shows that the criminal is left handed. Ahmet is also left handed. Given that about 5 percent of the population is left handed, what is the probability that Ahmet is guilty given the new evidence? • G=Event that Ahmet is guilty • L=Event that Ahmet is left handed • P(G|L)=? P L | G P G P(GL) P G | L P L P L | G P G P L | Gc P Gc 1 0.6 6 0.9677 1 0.6 0.05 0.4 6 0.2 4/10/2011 Lecture 3 32 Independent Events • The two events E and F are said to be independent if P EF P E P F • Two events E and F that are not independent are said to be dependent. • The three events E, F and G are said to be independent if P EFG P E P F P G P EF P E P F P EG P E P G P FG P F P G 4/10/2011 Lecture 3 33 Independent Events • Proposition: If E and F are independent, then so are E and Fc. 4/10/2011 Lecture 3 34 Example • A card is selected at random from an ordinary deck of 52 playing cards. If E is the event that the selected card is an ace and F is the event that it is a spade, then E and F are independent. This follows because P(EF)=1/62, whereas P(E)=4/52 and P(F)=13/52. 4/10/2011 Lecture 3 35 Example • S = {1, 2, 3, …, 9 , 10 , J , Q , K, 1, 2, 3, …, 9 , 10 , J , Q , K, 1, 2, 3, …, 9 , 10 , J , Q , K, 1, 2, 3, …, 9 , 10 , J , Q , K} • E = {1, 1, 1, 1} • F = {1, 2, 3, …, 9 , 10 , J , Q , K} • EF= {1} 4 PE 52 13 1 P( F ) P( EF ) P( E ) P( F ) 52 4 1 P( EF ) 52 4/10/2011 Lecture 3 36 • Independent trials resulting in a success with probability p and a failure with probability 1 − p are performed. • [You perform and infinite number of trials, just start doing trials and never stop. ] • What is the probability that n successes occur before m failures? • If we think of A and B as playing a game such that A gains 1 point when a success occurs and B gains 1 point when a failure occurs, then the desired probability is the probability that A would win if the game were to be continued in a position where A needed n and B needed m more points to win. 4/10/2011 Lecture 3 37 Pascal’s Solution • Pn,m is the probability that n successes occur before m failures. Pn,m pPn1,m 1 p Pn,m1 The last period we had n – 1 successes m failures, and then we were successful again. The last period we had n successes m – 1 failures, and then we failed again. • Pn,0=0 (why? Because m=0 means no failures, only successes occur. There is almost no chance that in all of your infinite number of trials, you never fail. ) • P0,m=1 (why? This is the probability that at least 0 successes occur before m failures. So you don’t need any successes at all, although if there is a success that is fine too. So anything fits this option.) 4/10/2011 Lecture 3 38 Fermat’s Solution • If you solve Pascal’s equations, you will get the answer. But Fermat had a better way to think about it: • He argued that the necessary and sufficient condition for n successes to occur before m failures is that there be at least n successes in the first n+m − 1 trials. • The probability of exactly k successes in n+m − 1 trials is m n 1 k m n 1 k p 1 p k • So the probability of n successes before m failures is m n 1 m n 1 k m n 1 k Pn ,m p 1 p k k n 4/10/2011 Lecture 3 39