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Random Variables •A random variable is a numerical measure of the outcome from a probability experiment, so its value is determined by chance. Random variables are denoted X, Y, Z etc. •A discrete random variable is a random variable that has either a finite number of possible values or a countable number of possible values. •A continuous random variable is a random variable that has an infinite number of possible values that is not countable. Example • Discrete random variable with a finite number of values Let X = number of TV sets sold at the store in one day where x can take on 5 values (0, 1, 2, 3, 4) • Discrete random variable with an infinite sequence of values Let X = number of customers arriving in one day where x can take on the values 0, 1, 2, . . . We can count the customers arriving, but there is no finite upper limit on the number that might arrive. • The waiting time of a customer in a queueContinuous. • We use capital letter , like X, to denote the random variable and use small letter to list the possible values of the random variable. • Example. A single die is cast, X represent the number of pips showing on the die and the possible values of X are x=1,2,3,4,5,6. A probability distribution provides the possible values of the random variable and their corresponding probabilities. A probability distribution can be in the form of a table, graph or mathematical formula. The table below shows the probability distribution for the random variable X, where X represents the number of DVDs a person rents from a video store during a single visit. Probability Distributions for Discrete Random Variables (Probability Mass Function (PMF)). • The probability distribution is defined by a probability function, denoted by p(x), which provides the probability for each value of the random variable. • The probability distribution for discrete random variable is called Probability Mass Function (PMF). p x i P X x i Properties for Discrete Random Variables • The properties for a discrete probability function (PMF) are: p( x) P( X x) 0 p( x) 1 x p( x) 1 all x • Cumulative Distribution Function (CDF) F ( x) P( X x) F (b) P ( X b) b p( x) y F () 0 F ( ) 1 Example n Using past data on TV sales (below left), a tabular representation of the probability distribution for TV sales (below right) was developed. Units Sold 0 1 2 3 4 Number of Days 80 50 40 10 20 200 X 0 1 2 3 4 p(x) .40 .25 .20 .05 .10 1.00 • Graphical Representation of the Probability Distribution .50 p(x) .40 .30 .20 .10 0 1 2 3 4 Values of Random Variable X (TV sales) Example • Random Variable: Grades of the students Student ID 1 2 3 4 5 6 7 8 9 10 Grade 3 2 3 1 2 3 1 3 2 2 Probability Mass Function 2 p 1 P X 1 0.2 10 PMF 4 p 2 P X 2 0.4 10 4 p 3 P X 3 0.4 10 Grade Example • Random Variable: Grades of the students Student ID 1 2 3 4 5 6 7 8 9 10 Grade 3 2 3 1 2 3 1 3 2 2 Probability Mass Function p x i CDF p 1 p 2 p 3 1 i Cumulative Distribution Function p X x x p X 2 x i i x 2 p X 3 x i p (x i ) p (x i ) p 1 p 2 0.2 0.4 0.6 2 p (x i ) p 1 p 2 p 3 1 Grade Example • Toss a fair coin three times and define X = number of heads. x HHH 1/8 3 HHT 1/8 2 HTH 1/8 2 THH 1/8 2 HTT 1/8 1 THT 1/8 1 TTH 1/8 1 TTT 1/8 0 P(X = 0) = P(X = 1) = P(X = 2) = P(X = 3) = 1/8 3/8 3/8 1/8 X 0 1 2 3 p(x) 1/8 3/8 3/8 1/8 Probability Histogram for x Expected Value and Variance • The expected value, or mean, of a random variable is a measure of its central location. – Expected value of a discrete random variable: n E X xi p xi 11 • The variance summarizes the variability in the values of a random variable. – Variance of a discrete random variable: Var X 2 n E X ( xi ) 2 . p xi 2 i 1 EX 2 EX 2 n xi2 p xi 2 i 1 Expected Value and Variance E (aX b) aE ( X ) b Ex. Given that X is random variable whose mean = 4, find the mean of 3X+5. Solution. E(3X+5)= 3 E(X)+E(5)= 3x4+5=17 V (aX b) a 2V ( X ) Ex. Given that X is random variable whose variance = 2, find the variance of 3X+5. Solution. V(3X+5)= 9 V(X)= 9x2=18 Example n Using past data on TV sales (below left), a tabular representation of the probability distribution for TV sales (below right) was developed. Units Sold 0 1 2 3 4 Number of Days 80 50 40 10 20 200 X 0 1 2 3 4 Find the mean and variance. p(x) .40 .25 .20 .05 .10 1.00 Example: • Variance and Standard Deviation of a Discrete Random Variable x p(x) xp(x) 0 1 2 3 4 .40 .25 .20 .05 .10 .00 .25 .40 .15 .40 1.20 x 2p(x) .00 .25 .80 .45 1.6 3.1 n E X xi p xi 1.20 n Var X x p xi 2 i 1 2 i 2 3.1 1.20 1.66 2 11 standard deviation is 1.66 =1.2884 Example • Toss a fair coin 3 times and record x the number of heads. X p(x) xp(x) (x-)2p(x) 0 1/8 0 (-1.5)2(1/8) 1 3/8 3/8 (-0.5)2(3/8) 2 3/8 6/8 (0.5)2(3/8) 3 1/8 3/8 (1.5)2(1/8) 12 xp( x) 1.5 8 ( x ) p( x) 2 2 2 .28125 .09375 .09375 .28125 .75 .75 .688 Alternative Solution (Suggested): x p(x) x.p(x) x2p(x) 0 1/8 0 0 1 3/8 3/8 3/8 2 3/8 3/4 3/2 3 1/8 3/8 9/8 12 xp( x) 1.5 8 Var X x p xi xi p xi i 1 i 1 3 1.52 0.75 n 2 n 2 i 2 .75 .688 Example • The probability distribution for X the number of heads in tossing 3 fair coins. • • • • Shape? Outliers? Center? Spread? Symmetric; mound-shaped None = 1.5 = .688 Some important Differentiation and Integration Formulas d c.dx c.x (c ) 0 dx dx x d ( x) 1 n 1 x dx n x dx ; n 1 d n 1 ( x n ) nx n 1 x x dx e dx e d (e x ) e x 1 x x dx a dx ln a a d ( a x ) a x ln a ln( x)dx x ln x x dx 1 d 1 dx ln x ln( x ) x dx x Notes about Continuous RV • A continuous random variable can assume any value in an interval on the real line or in a collection of intervals. • It is not relevant to talk about the probability of the random variable assuming a particular value. • Instead, we talk about the probability of the random variable assuming a value within a given interval. Probability Distributions for Continuous Random Variables (Probability Density Function (PDF)). • The probability distribution is defined by a probability function, denoted by f(x), which provides the probability for each value of the random variable. • The probability distribution for continuous random variable is called Probability Density Function (PDF). Properties for Continuous Random Variables The properties for a continuous probability function (PDF) are: f x 0 f ( x) 1 f ( x) dx 1 f x d F x dx Cumulative Distribution Function (CDF) F x P X x x f ( x) dx b F x P(a x b) f ( x) dx a Example – Let X be a random variable with range [0,2] and pdf defined by f(x)=1/2 for all x between 0 and 2 and f(x)=0 for all other values of x. Note that since the integral of zero is zero we get 2 1 f ( x)dx 1/ 2dx x 1 0 1 0 2 0 2 – That is, as with all continuous pdfs, the total area under the curve is 1. We might use this random variable to model the position at which a two-meter with length of rope breaks when put under tension, assuming “every point is equally likely”. Then the probability the break occurs in the last half-meter of the rope is P(3/ 2 X 2) 2 3/ 2 2 1 f ( x)dx 1/ 2dx x 1/ 4 3/ 2 2 3/ 2 2 Example – Let Y be a random variable whose range is the nonnegative and whose pdf is defined by 1 f y e 750 y 750 The random variable Y might be a reasonable choice to model the lifetime in hours of a standard light bulb with average life 750 hours. To find the probability a bulb lasts under 500 hours, you calculate P(0 Y 500) 500 0 1 x / 750 x / 750 500 2/3 e dx e e 1 0.487 0 750 Expected Value and Variance • The expected value, or mean, of a random variable is a measure of its central location. – Expected value of a continuous random variable: EX x f x dx • The variance summarizes the variability in the values of a random variable. – Variance of a discrete random variable: Var X 2 E X E X 2 E X 2 2 2 2 x . f x dx x . f x dx 2 Discrete versus Continuous Random Variables Discrete RV Continuous RV Infinite Sample Space e.g. [0,1], [2.1, 5.3] Finite Sample Space e.g. {0, 1, 2, 3} Probability Mass Function (PMF) Probability Density Function (PDF) f x p( xi ) P( X xi ) 1. 0 p( x) 1 x 2. p ( x) 1 all x Cumulative Distribution Function (CDF) F ( x) P( X x) b p( x) y p X x F x P X x x f ( x) dx b F x P(a x b) f ( x) dx a Example We assume that with average waiting time of one customer is 2 minutes 1 x / 2 e , x0 f ( x) 2 0, otherwise PDF: f (time) time Example • Probability that the customer waits exactly 3 minutes is: 1 3 x /2 P (x 3) P (3 x 3) 3 e dx 0 2 • Probability that the customer waits between 2 and 3 minutes is: 1 3 x /2 P (2 x 3) e dx 0.145 2 2 • The Probability that the customer waits less than 2 minutes 2 P(0 X 2) e 0 x/ 2 1 dx 1 e 0.632 Example • Probability that the customer waits exactly 3 minutes is: 1 3 x /2 P (x 3) P (3 x 3) 3 e dx 0 2 • Probability that the customer waits between 2 and 3 minutes is: 1 3 x /2 P (2 x 3) e dx 0.145 2 2 P(2 X 3) F (3) F (2) (1 e(3 / 2) ) (1 e1 ) 0.145 CDF • The Probability that the customer waits less than 2 minutes P (0 X 2) F (2) F (0) F (2) 1 e 1 0.632 CDF Expected Value and Variance A continuous variable X has a probability density function f ( x) cx ;0 x 1 2 where c is constant. Find (i) the value of c (ii) (iii) P ( X .75) (iv) P (.25 X .75) v) compute mean and variance of X. P ( X .25) Key Concepts V. Discrete Random Variables and Probability Distributions 1. Random variables, discrete and continuous 2. Properties of probability distributions 0 p( x) 1 and p( x) 1 3. Mean or expected value of a discrete random variable: Mean : xp( x) 4. Variance and standard deviation of a discrete random variable: Variance : 2 ( x )2 p( x) Standard deviation : 2