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Chapter 3 Discrete Random Variables and Probability Distributions 3.1 - Random Variables.2 - Probability Distributions for Discrete Random Variables.3 - Expected Values.4 - The Binomial Probability Distribution.5 - Hypergeometric and Negative Binomial Distributions.6 - The Poisson Probability Distribution
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POPULATION Discrete random variable X Examples: shoe size, dosage (mg), # cells,… Pop values x Probabilities f (x) Cumul Probs F (x) x1x1 f (x 1 )f(x1)f(x1) x2x2 f (x 2 )f(x 1 ) + f(x 2 ) x3x3 f (x 3 ) f(x 1 ) + f(x 2 ) + f(x 3 ) ⋮⋮ ⋮1⋮1 Total1 Mean Variance X Total Area = 1 Recall… R e c a l l …
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~ The Binomial Distribution ~ Used only when dealing with binary outcomes (two categories: “Success” vs. “Failure”), with a fixed probability of Success ( ) in the population. Calculates the probability of obtaining any given number of Successes in a random sample of n independent “Bernoulli trials.” Has many applications and generalizations, e.g., multiple categories, variable probability of Success, etc.
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4 For any randomly selected individual, define a binary random variable: POPULATION 40% Male, 60% Female RANDOM SAMPLE n = 100 Discrete random variable X = # Males in sample (0, 1, 2, 3, …, 99, 100) How can we calculate the probability of P(X = 0), P(X = 1), P(X = 2), …, P(X = 99), P(X = 100)?P(X = x), for x = 0, 1, 2, 3, …,100? f(x) = F(x) = P(X ≤ x), for x = 0, 1, 2, 3, …,100? How can we calculate the probability of P(X = x), for x = 0, 1, 2, 3, …,100?f(x) = xf (x)f (x) x1x1 f (x 1 ) x2x2 f (x 2 ) x3x3 f (x 3 ) ⋮⋮ 1
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P(X = x), for x = 0, 1, 2, 3, …,100?f(x) = f(25) = P(X = 25)? How can we calculate the probability of F(x) = P(X ≤ x), for x = 0, 1, 2, 3, …,100? 5 For any randomly selected individual, define a binary random variable: POPULATION 40% Male, 60% Female RANDOM SAMPLE n = 100 Discrete random variable X = # Males in sample (0, 1, 2, 3, …, 99, 100) Example: Solution: Model the sample as a sequence of independent coin tosses, with 1 = Heads (Male), 0 = Tails (Female), where P(H) = 0.4, P(T) = 0.6 Solution:.… etc….
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permutations of 25 among 100 …etc…etc…etc… There are 100 possible open slots for H 1 to occupy. X = 25 Heads: { H 1, H 2, H 3,…, H 25 } For each one of them, there are 76 possible open slots left for H 25 to occupy. How many possible outcomes of n = 100 tosses exist with X = 25 Heads? 12345... 979899100... For each one of them, there are 99 possible open slots left for H 2 to occupy. For each one of them, there are 98 possible open slots left for H 3 to occupy. For each one of them, there are 77 possible open slots left for H 24 to occupy. Hence, there are ?????????????????????? possible outcomes. 100 99 98 … 77 76 How many possible outcomes of n = 100 tosses exist? … This value is the number of permutations of the coins, denoted 100 P 25.
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12345... 979899100... permutations of 25 among 100 How many possible outcomes of n = 100 tosses exist with X = 25 Heads? 12345... 979899100... How many possible outcomes of n = 100 tosses exist? 100 99 98 … 77 76 X = 25 Heads: { H 1, H 2, H 3,…, H 25 } This number unnecessarily includes the distinct permutations of the 25 among themselves, all of which have Heads in the same positions. For example:We would not want to count this as a distinct outcome.
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permutations of 25 among 100 How many possible outcomes of n = 100 tosses exist with X = 25 Heads? 12345... 979899100... How many possible outcomes of n = 100 tosses exist? 100 99 98 … 77 76 X = 25 Heads: { H 1, H 2, H 3,…, H 25 } This number unnecessarily includes the distinct permutations of the 25 among themselves, all of which have Heads in the same positions. How many is that?By the same logic…... 25 24 23 … 3 2 1 “25 factorial” - denoted 25! “100-choose-25” - denoted or 100 C 25 This value counts the number of combinations of 25 Heads among 100 coins. 100 99 98 … 77 76 25 24 23 … 3 2 1 100!_ 25! 75! = 100 nCr 25 on your calculator.
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12345... 979899100... How many possible outcomes of n = 100 tosses exist with X = 25 Heads? What is the probability of each such outcome? 0.40.6 0.40.6... 0.60.4 0.6 Answer: Via independence in binary outcomes between any two coins, 0.4 0.6 0.6 0.4 0.6 … 0.6 0.4 0.4 0.6 =. Therefore, the probability P(X = 25) is equal to……. How many possible outcomes of n = 100 tosses exist? Question: What if the coin were “fair” (unbiased), i.e., = 1 – = 0.5 ? Answer: Recall that, per toss, P(Heads) = = 0.4 P(Tails) = 1 – = 0.6
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How many possible outcomes of n = 100 tosses exist with X = 25 Heads? 12345... 979899100... What is the probability of each such outcome? 0.40.6 0.40.6... 0.60.4 0.6 Answer: Via independence in binary outcomes between any two coins, 0.4 0.6 0.6 0.4 0.6 … 0.6 0.4 0.4 0.6 =. Therefore, the probability P(X = 25) is equal to……. How many possible outcomes of n = 100 tosses exist? Question: What if the coin were “fair” (unbiased), i.e., = 1 – = 0.5 ? Answer: 0.5... 0.5 0.5 0.5 0.5 0.5 0.5 … 0.5 0.5 0.5 0.5 = = 0.51 – = 0.5 This is the “equally likely” scenario!
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“Failure” “Success” x = 0, 1, 2, 3, …,100 What is the probability P(X = 25)? F(x) = P(X ≤ x), for x = 0, 1, 2, 3, …,100? 11 For any randomly selected individual, define a binary random variable: POPULATION 40% Male, 60% Female RANDOM SAMPLE n = 100 Discrete random variable X = # Males in sample (0, 1, 2, 3, …, 99, 100) Example: Solution: Model the sample as a sequence of n = 100 independent coin tosses, with 1 = Heads (Male), 0 = Tails (Female). Solution:.… etc…. x 1 – size n n Bernoulli trials with P(“Success”) = , P(“Failure”) = 1 – . n “Success” vs. “Failure” Discrete random variable X = # Males in sample (0, 1, 2, 3, …, n) independent, with constant probability ( ) per trial Discrete random variable X = # “Successes” in sample (0, 1, 2, 3, …, n) Then X is said to follow a Binomial distribution, written X ~ Bin(n, ), with “probability function” f(x) =, x = 0, 1, 2, …, n.
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Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Example: Blood Type probabilities, revisited Reasonably assume that outcomes “Type O” vs. “Not Type O” between two individuals are independent of each other. Suppose n = 10 individuals are to be selected at random from the population. Probability table for X = #(Type O) Binomial model applies? Check: 1. Independent outcomes? 2. Constant probability ? From table, = P(Type O) =.461 throughout population.
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Example: Blood Type probabilities, revisited X ~ Bin(10,.461) xf (x)f (x)F (x) 0 (.461) 0 (.539) 10 = 0.00207 0.00207 1 (.461) 1 (.539) 9 = 0.01770 0.01977 2 (.461) 2 (.539) 8 = 0.06813 0.08790 3 (.461) 3 (.539) 7 = 0.15538 0.24328 4 (.461) 4 (.539) 6 = 0.23257 0.47585 5 (.461) 5 (.539) 5 = 0.23870 0.71455 6 (.461) 6 (.539) 4 = 0.17013 0.88468 7 (.461) 7 (.539) 3 = 0.08315 0.96783 8 (.461) 8 (.539) 2 = 0.02667 0.99450 9 (.461) 9 (.539) 1 = 0.00507 0.99957 10 (.461) 10 (.539) 0 = 0.00043 1.00000 1 Suppose n = 10 individuals are to be selected at random from the population. Probability table for X = #(Type O) Binomial model applies. R: dbinom(0:10, 10,.461) Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Also, can show mean = x f (x) = and variance 2 = (x – ) 2 f (x) = nn n (1 – ) = (10)(.461) = 4.61 f(x) = (.461) x (.539) 10 – x = 2.48
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xf (x)f (x)F (x) 0 (.461) 0 (.539) 10 = 0.00207 0.00207 1 (.461) 1 (.539) 9 = 0.01770 0.01977 2 (.461) 2 (.539) 8 = 0.06813 0.08790 3 (.461) 3 (.539) 7 = 0.15538 0.24328 4 (.461) 4 (.539) 6 = 0.23257 0.47585 5 (.461) 5 (.539) 5 = 0.23870 0.71455 6 (.461) 6 (.539) 4 = 0.17013 0.88468 7 (.461) 7 (.539) 3 = 0.08315 0.96783 8 (.461) 8 (.539) 2 = 0.02667 0.99450 9 (.461) 9 (.539) 1 = 0.00507 0.99957 10 (.461) 10 (.539) 0 = 0.00043 1.00000 1 R: dbinom(0:10, 10,.461) Also, can show mean = x f (x) = and variance 2 = (x – ) 2 f (x) = Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Example: Blood Type probabilities, revisited X ~ Bin(10,.461) Suppose n = 10 individuals are to be selected at random from the population. Probability table for X = #(Type O) Binomial model applies. f(x) = (.461) x (.539) 10 – x nn n (1 – ) = 4.61 = 2.48
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X ~ Bin(10,.461)X ~ Bin(1500,.007) 2.48 Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Example: Blood Type probabilities, revisited Suppose n = 10 individuals are to be selected at random from the population. Probability table for X = #(Type AB–) n = 1500 individuals are to Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Therefore, f(x) = x = 0, 1, 2, …, 1500. RARE EVENT! Binomial model applies. Also, can show mean = x f (x) = and variance 2 = (x – ) 2 f (x) = nn n (1 – ) = 10.5 = 10.43
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Chapter 3 Discrete Random Variables and Probability Distributions 3.1 - Random Variables.2 - Probability Distributions for Discrete Random Variables.3 - Expected Values.4 - The Binomial Probability Distribution.5 - Hypergeometric and Negative Binomial Distributions.6 - The Poisson Probability Distribution
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X ~ Bin(1500,.007) Also, can show mean = x f (x) = and variance 2 = (x – ) 2 f (x) = Poisson distribution x = 0, 1, 2, …, where mean and variance are = n and 2 = n Is there a better alternative? Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Example: Blood Type probabilities, revisited Suppose n = 10 individuals are to be selected at random from the population. Probability table for X = #(Type AB–) n = 1500 individuals are to Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Therefore, f(x) = x = 0, 1, 2, …, 1500. Binomial model applies. RARE EVENT! = 10.5 X ~ Poisson(10.5) = 10.5 = 10.43 nn n (1 – ) Notation: Sometimes the symbol (“lambda”) is used instead of (“mu”).
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Suppose n = 1500 individuals are to be selected at random from the population. Probability table for X = #(Type AB–) Poisson distribution x = 0, 1, 2, …, where mean and variance are = n and 2 = n Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 Example: Blood Type probabilities, revisited Rh Factor Blood Type +– O.384.077.461 A.323.065.388 B.094.017.111 AB.032.007.039.833.166.999 RARE EVENT! = 10.5 X ~ Poisson(10.5) Ex: Probability of exactly X = 15 Type(AB–) individuals = ? Binomial: Poisson: (both ≈.0437) Therefore, f(x) = x = 0, 1, 2, …, 1500.
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Example: Deaths in Wisconsin
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Assuming deaths among young adults are relatively rare, we know the following: Average 584 deaths per year λ = Mortality rate ( α) seems constant. Therefore, the Poisson distribution can be used as a good model to make future predictions about the random variable X = “# deaths” per year, for this population (15-24 yrs)… assuming current values will still apply. Probability of exactly X = 600 deaths next year P(X = 600) = 0.0131 Probability of exactly X = 1200 deaths in the next two years P(X = 1200) = 0.00746 R: dpois(600, 584) Mean of 584 deaths per yr Mean of 1168 deaths per two yrs, so let λ = 1168: Probability of at least one death per day: λ = = 1.6 deaths/day P(X = 1) + P(X = 2) + P(X = 3) + … P(X ≥ 1) = True, but not practical. 1 – P(X = 0) = 1 – = 1 – e –1.6 = 0.798
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● Binomial ~ X = # Successes in n trials, P(Success) = ● Poisson ~ As above, but n large, small, i.e., Success RARE ● Negative Binomial ~ X = # trials for k Successes, P(Success) = ● Geometric ~ As above, but specialized to k = 1 ● Hypergeometric ~ As Binomial, but changes between trials ● Multinomial ~ As Binomial, but for multiple categories, with 1 + 2 + … + last = 1 and x 1 + x 2 + … + x last = n
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