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Chapter 23C: Expected Values of Discrete Random Variables The mean, or expected value, of a discrete random variable is E( x) xp( x). 1 Probability Center .40 .35 .30 .25 .20 .15 Lousy Good OK Great .10 .05 -4 -2 0 2 4 6 8 10 12 Profit The mean of the probability distribution is the expected value of X, denoted E(X) E(X) is also denoted by the Greek letter µ (mu) Interpretation E(x) is a “long run” average; if you perform the experiment many times and observe the random variable x each time, then the average x of these observed x-values will get closer to E(x) as you observe more and more values of the random variable x. Interpretation E(x) is not the value of the random variable x that you “expect” to observe if you perform the experiment once Expected Value I flip a coin. If it lands on heads you win $5. If it lands on tails, you win nothing. What is the expected value? 1 1 ($5 ) ($0 ) $2.50 2 2 Expected Value I flip the same coin. This time if it lands on heads you win $5, but if it lands on tails, you win $3. What is the expected value? 1 1 ($5 ) ($3 ) $4.00 2 2 Expected Value This time, you win $5 if the coin lands on heads, but if it lands on tails, you owe me $6. Calculate the expected value. 1 1 ($5 ) ($6 ) $0.50 2 2 If you play ten times, you Can expect to lose $5. Example: coin tossing Suppose a fair coin is tossed 3 times and we let x = the number of heads. Find m = E(x). First we must find the probability distribution of x. Example (cont.) Possible values of x: 0, 1, 2, 3. p(1)? An outcome where x = 1: THT P(THT)? (½)(½)(½)=1/8 How many ways can we get 1 head in 3 tosses? 3C1=3 Example (cont.) p(0) 3 C0 3 1 1 1 2 p(1) 3 C1 2 2 8 3 1 2 1 1 p(2) 3 C2 2 2 8 1 3 1 0 1 p(3) 3 C3 2 2 8 1 0 2 1 3 2 81 Example (cont.) So the probability distribution of x is: x 0 p(x) 1/8 1 3/8 2 3/8 3 1/8 So the probability distribution of x is: Example x p(x) 0 1/8 1 3/8 E(x) (or μ ) is E(x) 4 x p(x ) i i i 1 (0 1 ) ( 1 3 ) (2 3 ) (3 1 ) 8 8 8 8 12 1.5 8 2 3/8 3 1/8 Roulette The roulette wheel has alternating black and red slots numbered 1 through 36. There are also 2 green slots numbered 0 and 00. A bet on any one of the 38 numbers (1-36, 0, or 00) pays odds of 35:1; that is . . . If you bet $1 on the winning number, you receive $36, so your winnings are $35 American Roulette 0 - 00 (The European version has only one 0.) Roulette Wheel: Expected Value of a $1 bet on a single number Let x be your winnings resulting from a $1 bet on a single number; x has 2 possible values x p(x) -1 37/38 35 1/38 E(x)= -1(37/38) + 35(1/38) = -.05 So on average the house wins 5 cents on every such bet. A “fair” game would have E(x)=0. The roulette wheels are spinning 24/7, winning big $$ for the house, resulting in … Expected Values of Discrete Random Variables Given: E(x)= -1(37/38) + 35(1/38) = -.05 How can you make this a “fair” game? 37 1 0 1 D 38 38 37 D 0 38 0 37 D D $37 16 Homework Page 616 (1 – 14) 17 Chapter 23D The Binomial Distribution 18 Binomial example Take 5 coins and toss them once. What’s the probability that you flip exactly 3 heads and 2 tails? Binomial example Solution: One way to get exactly 3 heads: HHHTT What’s the probability of this exact arrangement? P(heads) x P(heads) x P(heads) x P(tails) x P(tails) = (½)3 x ( ½)2 Another way to get exactly 3 heads: THHHT Probability of this exact outcome = = (½)1 x ( ½)3 x (½)1 = (½)3 x ( ½)2 Binomial example Solution: Another way to get exactly 3 heads: THHHT Probability of this exact outcome = = (½)1 x ( ½)3 x (½)1 = (½)3 x ( ½)2 Binomial distribution In fact, (½)3 x ( ½)2 is the probability of each unique outcome that has exactly 3 heads and 2 tails. The overall probability of 3 heads and 2 tails is: [(½)3 x ( ½)2 ]+ [(½)3 x ( ½)2 ] + [(½)3 x ( ½)2 ] +….. for as many unique arrangements as there are— but how many are there? ways to arrange 3 3 heads 5 5C3 = 5!/(3!2!) = 10 Outcome Probability THHHT (1/2)3 x (1/2)2 HHHTT (1/2)3 x (1/2)2 TTHHH (1/2)3 x (1/2)2 Probability of HTTHH (1/2)3 x (1/2)2 each unique HHTTH (1/2)3 x (1/2)2 outcome THTHH (1/2)3 x (1/2)2 (note: they are HTHTH (1/2)3 x (1/2)2 all equal) HHTHT (1/2)3 x (1/2)2 THHTH (1/2)3 x (1/2)2 HTHHT (1/2)3 x (1/2)2 10 arrangements x (1/2)3 x (1/2)2 5 P(3 heads and 2 tails) = x P(heads)3 x P(tails)2 3 = 10 x (½)5 = 31.25% Binomial distribution function: X= the number of heads tossed p(x) 0 10 ways 31.25% 1 2 3 4 number of heads 5 x Example 2 As voters exit the polls, you ask a representative random sample of 6 voters if they voted for proposition 100. If the true percentage of voters who vote for the proposition is 55.1%, what is the probability that, in your sample, exactly 2 voted for the proposition and 4 did not? Solution: 2 6 ways to arrange 2 Yes votes among 6 voters Outcome YYNNNN NYYNNN NNYYNN NNNYYN NNNNYY Probability = (.551)2 x (.449)4 = (.551)2 x (.449)4 = (.551)2 x (.449)4 = (.551)2 x (.449)4 = (.551)2 x (.449)4 15 arrangements .x (.551)2 x (.449)4 P(2 yes votes exactly) = 6 2 x (.551)2 x (.449)4 = 18.5% Binomial distribution, generally Note the general pattern emerging if you have only two possible outcomes (call them 1/0 or yes/no or success/failure) in n independent trials, then the probability of exactly X “successes”= n = number of trials n X n X p (1 p) X X=# successes out of n trials p = probability of success 1-p = probability of failure Binomial distribution: example If I toss a coin 20 times, what’s the probability of getting exactly 10 heads? 20 10 10 (.5) (.5) .176 10 Homework Page 620 (3-5) Page 622 (Odds) 30