Discrete Probability Distributions. Random Variable A random variable X takes on a defined set of values with different probabilities. For example, if.

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Presentation transcript:

Discrete Probability Distributions

Random Variable A random variable X takes on a defined set of values with different probabilities. For example, if you roll a die, the outcome is random (not fixed) and there are 6 possible outcomes, each of which occur with probability one-sixth. For example, if you poll people about their voting preferences, the percentage of the sample that responds “ Yes on Proposition 100 ” is a also a random variable (the percentage will be slightly different every time you poll). Roughly, probability is how frequently we expect different outcomes to occur if we repeat the experiment over and over ( “ frequentist ” view)

Random variables can be discrete or continuous Discrete random variables have a countable number of outcomes Examples: Dead/alive, treatment/placebo, dice, counts, etc. Continuous random variables have an infinite continuum of possible values. Examples: blood pressure, weight, the speed of a car, the real numbers from 1 to 6.

Probability functions A probability function maps the possible values of x against their respective probabilities of occurrence, p(x) p(x) is a number from 0 to 1.0. The area under a probability function is always 1.

Discrete example: roll of a die x p(x) 1/

Probability mass function (pmf) xp(x) 1p(x=1)=1/6 2p(x=2)=1/6 3p(x=3)=1/6 4p(x=4)=1/6 5p(x=5)=1/6 6p(x=6)=1/6 1.0

Cumulative distribution function (CDF) x P(x) 1/ /3 1/2 2/3 5/6 1.0

Cumulative distribution function xP(x≤A) 1P(x≤1)=1/6 2P(x≤2)=2/6 3P(x≤3)=3/6 4P(x≤4)=4/6 5P(x≤5)=5/6 6P(x≤6)=6/6

Examples 1. What’s the probability that you roll a 3 or less? P(x≤3)=1/2 2. What’s the probability that you roll a 5 or higher? P(x≥5) = 1 – P(x≤4) = 1-2/3 = 1/3

Practice Problem Which of the following are probability functions? a. f(x)=.25 for x=9,10,11,12 b. f(x)= (3-x)/2 for x=1,2,3,4 c. f(x)= (x 2 +x+1)/25 for x=0,1,2,3

Answer (a) a. f(x)=.25 for x=9,10,11,12 Yes, probability function! xf(x)

Answer (b) b. f(x)= (3-x)/2 for x=1,2,3,4 xf(x) 1(3-1)/2=1.0 2(3-2)/2=.5 3(3-3)/2=0 4(3-4)/2=-.5 Though this sums to 1, you can’t have a negative probability; therefore, it’s not a probability function.

Answer (c) c. f(x)= (x 2 +x+1)/25 for x=0,1,2,3 xf(x) 01/25 13/25 27/25 313/25 Doesn’t sum to 1. Thus, it’s not a probability function. 24/25

Practice Problem: The number of times that Rohan wakes up in the night is a random variable represented by x. The probability distribution for x is: x12345 P(x) Find the probability that on a given night: a. He wakes exactly 3 times b. He wakes at least 3 times c. He wakes less than 3 times p(x=3)=.4 p(x  3)= ( ) =.8 p(x<3)= (.1 +.1) =.2

Important discrete distributions in epidemiology… Binomial (coming soon…) Yes/no outcomes (dead/alive, treated/untreated, smoker/non-smoker, sick/well, etc.) Poisson Counts (e.g., how many cases of disease in a given area)

Review: Continuous case  The probability function that accompanies a continuous random variable is a continuous mathematical function that integrates to 1.  For example, recall the negative exponential function (in probability, this is called an “exponential distribution”):  This function integrates to 1: x 1

Review: Continuous case  The normal distribution function also integrates to 1 (i.e., the area under a bell curve is always 1):

Review: Continuous case  The probabilities associated with continuous functions are just areas under the curve (integrals!).  Probabilities are given for a range of values, rather than a particular value (e.g., the probability of getting a math SAT score between 700 and 800 is 2%).

Expected Value and Variance All probability distributions are characterized by an expected value (=mean!) and a variance (standard deviation squared).

For example, bell-curve (normal) distribution: One standard deviation from the mean (  ) Mean (  )

Expected value, or mean If we understand the underlying probability function of a certain phenomenon, then we can make informed decisions based on how we expect x to behave on- average over the long-run…(so called “frequentist” theory of probability). Expected value is just the weighted average or mean (µ) of random variable x. Imagine placing the masses p(x) at the points X on a beam; the balance point of the beam is the expected value of x.

Example: expected value Recall the following probability distribution of Rohan’s night waking pattern: x12345 P(x)

Expected value, formally Discrete case: Continuous case:

Sample Mean is a special case of Expected Value… Sample mean, for a sample of n subjects: = The probability (frequency) of each person in the sample is 1/n.

Expected Value Expected value is an extremely useful concept for good decision-making!

Example: the lottery The Lottery (also known as a tax on people who are bad at math … ) A certain lottery works by picking 6 numbers from 1 to 49. It costs $1.00 to play the lottery, and if you win, you win $2 million after taxes. If you play the lottery once, what are your expected winnings or losses?

Lottery x$p(x) million7.2 x Calculate the probability of winning in 1 try: The probability function (note, sums to 1.0): “49 choose 6” Out of 49 numbers, this is the number of distinct combinations of 6.

Expected Value x$p(x) million7.2 x The probability function Expected Value E(X) = P(win)*$2,000,000 + P(lose)*-$1.00 = 2.0 x 10 6 * 7.2 x (-1) = = -$.86 Negative expected value is never good! You shouldn’t play if you expect to lose money!

Expected Value If you play the lottery every week for 10 years, what are your expected winnings or losses? 520 x (-.86) = -$447.20

Gambling (or how casinos can afford to give so many free drinks…) A roulette wheel has the numbers 1 through 36, as well as 0 and 00. If you bet $1 that an odd number comes up, you win or lose $1 according to whether or not that event occurs. If random variable X denotes your net gain, X=1 with probability 18/38 and X= -1 with probability 20/38. E(X) = 1(18/38) – 1 (20/38) = -$.053 On average, the casino wins (and the player loses) 5 cents per game. The casino rakes in even more if the stakes are higher: E(X) = 10(18/38) – 10 (20/38) = -$.53 If the cost is $10 per game, the casino wins an average of 53 cents per game. If 10,000 games are played in a night, that’s a cool $5300.

Practice Problem If a disease is fairly rare and the antibody test is fairly expensive, in a resource-poor region, one strategy is to take half of the serum from each sample and pool it with n other halved samples, and test the pooled lot. If the pooled lot is negative, this saves n-1 tests. If it’s positive, then you go back and test each sample individually, requiring n+1 tests total. a. Suppose a particular disease has a prevalence of 10% in a third- world population and you have 500 blood samples to screen. If you pool 20 samples at a time (25 lots), how many tests do you expect to have to run (assuming the test is perfect!)? b. What if you pool only 10 samples at a time? c. 5 samples at a time?

Answer (a) a. Suppose a particular disease has a prevalence of 10% in a third-world population and you have 500 blood samples to screen. If you pool 20 samples at a time (25 lots), how many tests do you expect to have to run (assuming the test is perfect!)? Let X = a random variable that is the number of tests you have to run per lot: E(X) = P(pooled lot is negative)(1) + P(pooled lot is positive) (21) E(X) = (.90) 20 (1) + [ ] (21) = 12.2% (1) % (21) = E(total number of tests) = 25*18.56 = 464

Answer (b) b. What if you pool only 10 samples at a time? E(X) = (.90) 10 (1) + [ ] (11) = 35% (1) + 65% (11) = 7.5 average per lot 50 lots * 7.5 = 375

Answer (c) c. 5 samples at a time? E(X) = (.90) 5 (1) + [ ] (6) = 59% (1) + 41% (6) = 3.05 average per lot 100 lots * 3.05 = 305

Variance/standard deviation “ The average (expected) squared distance (or deviation) from the mean ” **We square because squaring has better properties than absolute value. Take square root to get back linear average distance from the mean (= ” standard deviation ” ).

Variance, formally Discrete case: Continuous case:

Sample variance is a special case… The variance of a sample: s 2 = Division by n-1 reflects the fact that we have lost a “degree of freedom” (piece of information) because we had to estimate the sample mean before we could estimate the sample variance.

Practice Problem A roulette wheel has the numbers 1 through 36, as well as 0 and 00. If you bet $1.00 that an odd number comes up, you win or lose $1.00 according to whether or not that event occurs. If X denotes your net gain, X=1 with probability 18/38 and X= -1 with probability 20/38. We already calculated the mean to be = -$.053. What’s the variance of X?

Answer Standard deviation is $.99. Interpretation: On average, you’re either 1 dollar above or 1 dollar below the mean, which is just under zero. Makes sense!

Handy calculation formula! Handy calculation formula (if you ever need to calculate by hand!): Intervening algebra!

For example, what are the mean and standard deviation of the roll of a die? xp(x) 1p(x=1)=1/6 2p(x=2)=1/6 3p(x=3)=1/6 4p(x=4)=1/6 5p(x=5)=1/6 6p(x=6)=1/6 1.0 x p(x) 1/ mean average distance from the mean

Practice Problem Find the variance and standard deviation for Rohan’s night wakings (recall that we already calculated the mean to be 3.2): x12345 P(x)

Answer: Interpretation: On an average night, we expect Rohan to awaken 3 times, plus or minus This gives you a feel for what would be considered an unusual night! x2x P(x)

Bonus: Covariance The covariance measures the strength of the linear relationship between two variables The covariance:

Covariance between two random variables: cov(X,Y) > 0 X and Y are positively correlated cov(X,Y) < 0 X and Y are inversely correlated cov(X,Y) = 0 X and Y are independent Interpreting Covariance

Sample Covariance is a special case… The sample covariance: