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BUS304 – Probability Theory1 Probability Distribution Random Variable: A variable with random (unknown) value. Examples 1. Roll a die twice: Let x be the number of times 4 comes up. x = 0, 1, or 2 2. Toss a coin 5 times: Let x be the number of heads x = 0, 1, 2, 3, 4, or 5 3. Same as experiment 2: Let’s say you pay your friend $1 every time head shows up, and he pays you $1 otherwise. Let x be amount of money you gain from the game. What are the possible values of x?
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BUS304 – Probability Theory2 Discrete vs. Continuous Random variables Random Variables ContinuousDiscrete Examples: Number of students showed up next time Number of late apt. rental payments in Oct. Your score in this coming mid-term exam Examples: The temperature tomorrow The total rental payment collected by Sep 30 The expected lifetime of a new light bulb
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BUS304 – Probability Theory3 Discrete Probability Distribution Table Graph XP(X) 00.25 10.5 20.25 0 1 2 x.50.25 Probability All the possible values of x
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BUS304 – Probability Theory4 Exercise Describe the probability distribution of the following experiments: Draw a pair of dice, x is the random variable representing the sum of the total points. In a community with 100 households, 10 do not have kid, 40 have just one kid, 30 have 2 kids, and 20 have 3 kids. Randomly select one household. Let X be the number of kids in the household.
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BUS304 – Probability Theory5 Measures of Discrete Random Variables Expected value of a discrete distribution An weighted average, taking into account the probability The expected value of random variable x is denoted as E(x) E(x)= xi P(xi) E(x)= x 1 P(x 1 ) +x 2 P(x 2 ) + … + x n P(x n ) Example:What is your expected gain when you play the flip-coin game twice? x P(x) -2.25 0.50 2.25 E(x) = (-2) * 0.25 + 0 * 0.5 + 2 * 0.25 = 0 Your expected gain is 0! – a fair game.
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BUS304 – Probability Theory6 Worksheet to compute the expected value Step1: develop the distribution table according to the description of the problem. Step2: add one (3rd) column to compute the product of the value and the probability Step3: compute the sum of the 3rd column The Expected Value xP(x)x*P(x) -20.25-2*.25=-0.5 00.50*0.5=0 20.252*0.25=0.5 E(x) =-0.5+0+0.5=0
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BUS304 – Probability Theory7 Exercise You are working part time in a restaurant. The amount of tip you get each time varies. Your estimation of the probability is as follows: You bargain with the boss saying you want a more fixed income. He said he can give you $62 per night, instead of letting you keep the tips. Would you want to accept this offer? $ per nightProbability 500.2 600.3 700.4 800.1
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BUS304 – Probability Theory8 More exercise What is the expected gain if you plan the flip coin game just once? Three times? Four Times? What is the expected number of kid in that community (see the example on page 4)?
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BUS304 – Probability Theory9 Rule for expected value If there are two random variables, x and y. Then E(x+y) = E(x) + E(y) Example: x is your gain from the flip-coin game the first time y is your gain from the flip-coin game the second time x+y is your total gain from playing the game twice. xP(x) 0.5 1 yP(y) 0.5 1 E(x)=0 E(y)=0 x+yP(x+y) -20.25 00.5 20.25 E(x+y)=0
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BUS304 – Probability Theory10 Measures – variance Variance: a weighted average of the squared deviation from the expected value. xP(x)x – E(x)(x-E(x)) 2 (x-E(x)) 2 P(x) 500.250-64=-$14(-14) 2 =196196*0.2=39.6 600.3-$4164.8 700.4$63614.4 800.1$1625625.6 Step 1: develop the probability distribution table.Step 2: compute the mean E(x): 50x0.2+60x0.3+70x0.4+80x0.1=64 Step 3: compute the distance from the mean for each value (x-E(x))Step 4: square each distance (x – E(x)) 2 Step 5: weight the squared distance: (x-E(x)) 2 P(x) Step 6: sum up all the weighted square distance. =39.6+4.8+14.4+25.6=84.4
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BUS304 – Probability Theory11 Variance and Standard deviation variance The variance of a random variable has the same meaning as the variance of population Calculation is the same as calculating population variance using a relative frequency table. Written as var(x) or Standard deviation of a random variable: Same of the population standard deviation Calculate the variance Then take the square root of the variance. Written as SD(x) or e.g. for the example on page 10
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BUS304 – Probability Theory12 Homework Problem 4.40 Problem 4.50
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