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Ch5.4 + Ch1.3 Random Variable and Its Probability Distribution: Part II: Continuous Random Variable ----------------------------------------------------------------------------------------------------------Topics: Probability Distribution of a continuous random variable (§5.4, §1.3) Mean and Variance of a continuous random variable (§5.4, §2.1, §2.2) ---------------------------------------------------------------------------------------------------------- Probability distribution of continuous random Variable (r.v.) A continuous random variable is a random variable that can take every possible value in a certain interval. Ex. Let x = tomorrow’s temperature in Raleigh. Then technically, x can be anything in (, ) . Of course, x does not take any value with equal probability. We need a function to describe its distribution. Probability density function for x: f ( x ) satisfies: (1) f ( x) 0, for any x (2) f ( x)dx 1 (that is, P[ x ] 1. 0.04 0.02 0.00 density function 0.06 0.08 Graphically (the area represents P[55 x 62] ) 45 50 55 60 65 70 75 temperature (x) 1 Ex. Suppose the life time x (in months) of a particular type of light bulbs produced by GE has a probability density function 1 4x f ( x) e , x 0 4 (a) Check f(x) is a density function and find (b) a randomly purchased light bulb will work less than 1 month; (c) a randomly purchased light bulb will work after being used for 5 months. (a) Obviously f ( x ) 0 . f ( x)dx 0 x 1 4x e dx e 4 4 0 1. (b) x 1 4x 4 P[ x 1] e dx e 0 4 1 0 1 1 e1/ 4 0.22 (c) P[ x 5] 5 x 1 4x e dx e 4 4 5 e5/ 4 0.29 Ex. Suppose a continuous random variable x has a density in the following form f ( x) kx 2 , 0 x 1 Find the constant k and calculate P[x<0.5] and P[0.1 x 0.6] . 1 0 1 k k f ( x)dx kx 2 dx x 3 10 1, so k=3. 0 3 3 Mean and variance of a continuous random variable x with density f(x) 1. Mean of x: x xf ( x)dx Ex. The GE light bulb example: x xf ( x)dx 0 x 1 x x e 4 dx xe 4 4 0 x 4 e dx 4 (months) 0 2 Ex. For the second example, 1 1 0 0 x x f ( x)dx 3 x3dx 3 4 x 4 1 0 3 4 2. Variance of x (with probability density function f(x)) The variances x2 ( x x )2 f ( x)dx x2 f ( x)dx x2 The standard deviation x x2 Ex. The GE light bulb example: x f ( x)dx 2 x 2 2 x 0 1 4x x e dx 42 32 16 16 4 2 x x2 16 4 . 3