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COMP 170 L2 L18: Random Variables: Independence and Variance Page 1 COMP 170 L2 Page 2 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Central limit theorem COMP 170 L2 Page 3 Distribution Functions of RVs P(X=k) viewed as a function of k: The distribution function of X. In general COMP 170 L2 Probability Weight and Distribution Function Page 4 COMP 170 L2 Distribution Functions of RVs Page 5 COMP 170 L2 Distribution Functions of RVs For coin example D(1, 9) = P(1 <= X <=9 ) ~= 1 Page 6 COMP 170 L2 Page 7 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Central limit theorem COMP 170 L2 Independence Between Events E is independent of F If P(E|F) = P(E) The information that “Event F occurred” does not change the probability of E COMP 170 L2 Page 9 Random Variable and Event Given a rand variable, we can define many difference events COMP 170 L2 Page 10 Independence between RVs COMP 170 L2 Independence between RVs Page 11 COMP 170 L2 Page 12 Independence between RVs No need to further check P(X=0, Y=1) ?= P(X=0)P(Y=1) P(X=1, Y=0) ? = P(X=1)P(Y=0) P(X=1, Y=1) ?= P(X=1)P(Y=1) COMP 170 L2 Page 13 Independence between RVs Draw two cards from a deck of 52 cards X: number on first card Y: number on second card X and Y are independent when drawing with replacement X and Y are not independent when drawing without replacement COMP 170 L2 Page 14 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Central limit theorem COMP 170 L2 Page 15 Independence and Expectation COMP 170 L2 Page 16 Independence and Expectation COMP 170 L2 Page 17 COMP 170 L2 Page 18 COMP 170 L2 Page 19 Illustrating Proof via Example COMP 170 L2 Page 20 Illustrating Proof via Example COMP 170 L2 Page 21 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Sum of independent RVs The Trend Central limit theorem COMP 170 L2 Page 22 Variance of RVs Probability starts with a process whose outcome is uncertain Sample space: the set of all possible outcomes A random variable (RV) is a function defined on the sample space Different runs of the process might yield different outcomes The RV might take different values in different runs In other words, the value of RV varies across different runs Some RVs vary more and some vary less Number of heads in 1 coin flip Number of heads in 10 coin flips Number of heads in 100 coin flips COMP 170 L2 Page 23 Variance of RVs Variance of an RV X Measures how much it varies (across different runs of process) Relative to the mean value COMP 170 L2 Page 24 COMP 170 L2 Page 25 COMP 170 L2 Page 26 Which RV vary the most? Flip fair coin Variance Number of heads in 1 flip 1/4 Number of heads in 10 flips 10/4 Number of heads in 100 flips 100/4 COMP 170 L2 Page 27 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Central limit theorem COMP 170 L2 Page 28 Calculating Variance COMP 170 L2 Page 29 Example 1: We have already seen Number of heads in n flips Variance n=1 1/4 n=10 10/4 = 10 * 1/4 (x1+X2+…+X10) n=100 (X1+X2+…+X100) Additivity is true here. 100/4 = 100 * 1/4 COMP 170 L2 Additivity is true here. Page 30 COMP 170 L2 Page 31 Example 3 (Counter Example) COMP 170 L2 Page 32 Example 3 (Counter Example) COMP 170 L2 Page 33 COMP 170 L2 Page 34 Two Lemmas COMP 170 L2 Page 35 COMP 170 L2 Page 36 COMP 170 L2 Page 37 An Application of Theorem 5.29 COMP 170 L2 Page 38 A Corollary COMP 170 L2 Page 39 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Central limit theorem COMP 170 L2 Page 40 Standard Deviation Standard deviation is another measure of how much a rv varies or how much a distribution spread out It is the square root of variance. Next page Shows several distributions, variances and standard deviations Highlights the differences between variance and standard deviation COMP 170 L2 Distributions, Variances, and Standard Deviations Page 41 COMP 170 L2 Page 42 Distributions, Variances, and Standard Deviations The examples on the previous page show Standard deviation is a natural measure of “spread” of distribution Variance is easier to manipulate mathematically. Will see this in further study of probability theory and statistics. COMP 170 L2 Page 43 Outline Independence of RVs Distribution Functions of RVs Independence between RVs Expectation of product of independent RVs Variance of RV Definition and Examples Additivity Standard deviation Central limit theorem COMP 170 L2 Page 44 A Pattern If we flip of a coin a large number of times, “The number of heads” has bell-shaped distribution. This phenomenon is not unique to coin flipping COMP 170 L2 Test with .8 probability of getting correct answer Page 45 COMP 170 L2 Page 46 COMP 170 L2 Page 47 COMP 170 L2 Page 48 Normal Distribution COMP 170 L2 Page 49 COMP 170 L2 Page 50 COMP 170 L2 Recap: 13-05-2010 COMP 170 L2 Recap: 13-05-2010 E is independent of F If P(E|F) = P(E) The information that “Event F occurred” does not change the probability of E COMP 170 L2 Recap: 13-05-2010 Flip fair coin Number of heads in 1 flip: Variance = 1/4 Number of heads in 10 flips: Variance = 10/4 Number of heads in 100 flips: Variance = 100/4 COMP 170 L2 Page 54 Number of times until first success Throw a fair die How many times, on average, do you need to throw the die until you see a 1? P(getting 1 at each throw) = 1/6 Answer: 1/(1/6) = 6 COMP 170 L2 Page 55 Number of times until first success Throw a fair die How many times, on average, do you need to throw the die until you see a 2 and 3 in that order? Expected number of throws to see 2: 6 After that, expected number of throws to see 3: 6 Answer: 6+6 = 12 COMP 170 L2 Page 56 Number of times until first success Throw a fair die How many times, on average, do you need to throw the die until you see a 2 and 3 , where the order does not matter? P( get 2 or 3 in one throw ) = 1/3 Expected number throws until you see one of 2 or 3: 3 After that, P( get the other number in each throw) = 1/6 Expected number of throws until you see the other number: 6 Answer: 3+6 = 9 COMP 170 L2 Old Exam Question 1 P( at least one copy of T1 in 20 weeks) = 1 – P( no copy of T1 in 20 weeks) = 1 – P ( no T1 in week1 AND no T1 in week 2 AND …) = 1- P(no T1 in week1) P(no T1 in week 2) … = Page 57 COMP 170 L2 COMP 170 L2 Page 59 Can we do this? P(all 10 types of toys in 20 weeks) = P(copy of T1 in 20 weeks AND copy of T2 in 20 weeks AND …) = P(copy of T1 in 20 weeks) P(copy of T2 in 20 weeks)… NO, events not independent Correct way P(all 10 types of toys in 20 weeks) = 1 – P(A) Use inclusion-exclusion to calculate P(A) COMP 170 L2 COMP 170 L2 Old Exam Question 2 Page 61 COMP 170 L2 COMP 170 L2