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Chap. 4 Continuous Distributions Examples of Continuous Random Variable If we randomly pick up a real number between 0 and 1, then we define a continuous uniform random variable V with ProbV t t , for any real number 0≤t≤1. Distribution Function The distribution function of a continuous random variable X is defined as same as that of a discrete random variable, i.e. FX t Prob( X t ). Probability Density Function The probability density function (p.d.f.)of a continuous random variable is defined as dFX (t ) f X t . dt For example, the p.d.f. of an uniform random variable defined in [0,2] is 1 f X t for t [0,2]. 2 The p.d.f. of a continuous random variable with space S satisfies the following properties: a f X x 0 for all x S . b S f X x dx 1 . c The probability of event A is A f X x dx . Uniform Distribution Let random variable X correspond to randomly selecting a number in [a,b]. Then, 0 if x a x-a FX ( x) Prob ( X x) if a x b b-a if x b 1 Uniform Distribution 1 if a x b dFX ( x) f X ( x) b a dx 0 otherwise X has a uniform distribution. Some Important Observations The p.d.f. of a continuous random variable does not have to be bounded. For example, the p.d.f. of a uniform random variable with space [0,1/m] is 1 m if x 0, f X x m 0 otherwise The p.d.f. of a continuous random variable may not be continuous, as the above example demonstrates. Expected Value and Variance The expected value of a continuous random variable X is EX xf x dx. The variance of X is VarX x X f x dx. 2 Expected Value of a Function of a Random Variable Let X be a continuous random variable and Y=G(x). Then, E[Y ] G( x) f X ( x)dx, where f X () is the p.d.f. of X. In the following, We will only present the proof for the cases, in which G(.) is a one-to-one monotonic function. Expected Value of a Function of a Random Variable proof : E[Y ] yf Y ( y )dy dFY ( y ) G ( x) dy , where x G 1 ( y ) dy dFY ( y ) dFX (G 1 ( y )) dx dx f ( x) dy dx dy dy Therefore, dFY ( y ) E[Y ] G ( x) dy G ( x) f ( x)dx dy Moment-Generating Function and Characteristic Function The moment-generating function of a continuous random variable X is M X t E[e ] e f x dx. tX tx Note that the moment-generating function, if it is finite for -h<t<h for some h>0, completely determines the distribution. In other words, if two continuous random variables have identical m.g.f., then they have identical probability distribution function. Moment-Generating Function and Characteristic Function The characteristics function of X is defined to be the Fourier transformation of its p.d.f. X w e iwx f x dx Illustration of the Normal Distribution Assume that we want to model the time taken to drive a car from the NTU main campus to the NTU hospital. According to our experience, on average, it takes 20 minutes or 1200 seconds. Illustration of the Normal Distribution If we left the NTU main campus and drove to the NTU hospital now, then the probability that we would arrive in 1200.333…seconds would be 0. In addition, the probability that we would arrive in 3600.333…seconds would also be 0. Illustration of the Normal Distribution However, our intuition tells us that it would be more likely that we would arrive within 600 seconds and 1800 seconds than within 3000 seconds and 4200 seconds. Illustration of the Normal Distribution Therefore, the likelyhood function of this experiment should be of the following form: Likelihood 0 600 1200 Time 1800 Illustration of the Normal Distribution In fact, the probability density function models the likelihood of taking a specific amount of time to drive from the main campus to the hospital. By the p.d.f., the probability that we would arrive within a time interval would be FT ( ) FT ( ) fT (t )dt Illustration of the Normal Distribution In the real world, many distributions can be well modeled by the normal distributions. In other words, the profile of the p.d.f. of a normal distribution provides a good approximation of the exact p.d.f. of the distribution just like our example above. The Standard Normal Distribution A normal distribution with μ=0 and σ=1 is said to be a standard normal distribution. The p.d.f. of a standard normal distribution is 1 e 2 1 2 x 2 . 1 1 y2 z2 1 1 2 2 2 c e dy e dz 2 2 1 2 e 1 2 2 y z 2 dydz is a circularly Since e symmetric function on the Y-Z plane, 2e e 1 y2 z2 2 1 2 y z2 2 1 2 0 2 dydz 2e 0 1 2 2 d 2 . Therefore,c2=1 and c=1. Linear Transformation of the Normal Distribution Assume that random variable X has the distribution N , 2 . X Y Then, has the standard normal distribution. Proof: X FY y ProbY y Prob y Prob X y y 1 e 2 1 x 2 2 dx Linear Transformation of the Normal Distribution By substituting we have 1 FY y y x t , 1 2t 2 e dt. 2 Therefore, Y is N 0,1. Accordingly, if we want to compute F X w , we can do that by the following procedure. w X w w FX w Prob X w Prob Prob Y FY . Expected Value and Variance of a Normal Distribution Let X be a N(0,1). 1 2 E[ X ] x2 2 xe 1 e 2 dx x2 2 0. Var[ X ] E[ X 2 ] E 2 [ X ] E[ X 2 ] 1 2 x 2e Since 1 2 dxe dx x2 2 x 2e x2 2 dx. e x2 2 x2 2 dx x 2e x2 2 , x2 x2 1 2 2 e dx xe 2 1. Therefore, the expected value and variance of X are 0 and 1, respectively. The expected value and variance of a N , 2 . distribution are μ and σ2, respectively, Y since is N(0,1), if Y is N(μ, σ2). The Table for N(0,1) The Chi-Square Distribution Assume that X is N(0,1). In statistics, it is common that we are interested in Prob X x or Prob X x . Therefore, we define Z=X2. The distribution function of F z ProbZ z Prob X z Z is 2 Z 1 12 x 2 e dx, for z 0. 2 z z 2 0 z 1 12 x 2 e dx 2 2 0 z e 1 x2 2 dx The Chi-Square Distribution The p.d.f. of Z is dFZ z dz 2 z d 0 1 2 x 2 dx dz t 2 e d e 1 2 x 2 0 dt dx dt , where t dz 1 1 z 1 z 2 e 2 , for z 0. 2 z The Chi-Square Distribution Z is typically said to have the chi-square distribution of 1 degree of freedom and 2 1. denoted by Chi-Square Distribution with High Degree of Freedom Assume that X1, X2, ……, Xk are k independent random variables and each Xi is N(0, 1). Then, the random variable Z defined by Z X is called a chi-square random variable with degree of freedom = k and is denoted by 2 k . k i 1 2 i Addition of Chi-Square Distributions 2 2 2 A r s r s An ki ki i 1 i 1 2 2 n Example of Chi-Square Distribution with Degree of Freedom = 2 Assume that a computercontrolled machine is commanded to drill a hole at coordinate (10,20). The machine moves the drill along the x-axis first followed by the y-axis. Example of Chi-Square Distribution with Degree of Freedom = 2 According to the calibration process, the positioning accuracy of the machine in terms of millimeters along each axis is governed by a normal distribution N(u,0.0625). The engineer in charge of quality assurance determines that the center of the hole must not deviate from the expected center by more than 1.0 millimeters. What is the defect rate of this task. The Table of the χ2 Distribution The distribution Function and 2 p.d.f. of k is F 2 k t t r2 k 1 2 1 k 2 2 where w r 2 . 0 k 1 2 r e t k w 1 1 2 2 dr w e dw k k 2 0 2 2 k t 1 1 f 2 t t 2 e 2 where 0 t k k k 2 2 2 m x m1e x dx x 0 m 1 x e 0 m 1 x m 2e x dx 0 m 1 x m 2e x dx m 1(m 1). 0