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1 Ch5. Probability Densities Dr. Deshi Ye yedeshi@zju.edu.cn
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2 Outline Continuous Random variables Kinds of Probability distribution Normal distr. Uniform distr. Log-Normal dist. Gamma distr. Beta distr. Weibull distr. Joint distribution Checking data if it is normal? Transform observation to near normal Simulation
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3 5.1 Continuous Random Variables Continuous sample space: the speed of car, the amount of alcohol in a person’s blood Consider the probability that if an accident occurs on a freeway whose length is 200 miles. Question: how to assign probabilities?
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4 Assign Prob. Suppose we are interested in the prob. that a given random variable will take on a value on the interval [a, b] We divide [a, b] into n equal subintervals of width ∆x, b – a = n ∆x, containing the points x1, x2,..., xn, respectively. Then Frequency
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5 If f is an integrable function for all values of the random variable, letting ∆x-> 0, then
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6 Continuous Probability Density Function 1.Shows All Values, x, & Frequencies, f(x) f(X) Is Not Probability 2.Properties (Area Under Curve) Value (Value, Frequency) Frequency f(x) ab x fxdx fx () () All X a x b 1 0,
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7 Continuous Random Variable Probability Probability Is Area Under Curve! f(x) X ab
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8 Distribution function F Distribution function F (cumulative distribution ) Or Integral calculus :
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9 EX If a random variable has the probability density find the probabilities that it will take on a value A) between 1 and 3 B) greater than 0.5
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10 Solution B) A)
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11 Mean and Variance Mean: Variance:
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12 K-th moment About the original About the mean
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13 Useful cheat
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14 Continuous Probability Distribution Models Continuous Probability Distribution UniformNormalExponentialOthers
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15 Normal Distribution
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16 5.2 The Normal Distribution Normal probability density (normal distribution) The mean and variance of normal distribution is exactly
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17 The Normal Distribution Mean Median Mode 1.‘Bell-Shaped’ & Symmetrical 2.Mean, median, mode are equal 3. Random variable has infinite range
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18 The Normal Distribution f(x)=Frequency of random variable x =Population standard deviation =3.14159; e = 2.71828 x =value of random variable (- < x < ) =Population mean
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19 Effect of varying parameters ( & )
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20 Standard normal distribution function Standard normal distribution, with mean 0 and variance 1. Hence Normal table
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21 Standardize the Normal Distribution One table! Normal Distribution Standardized Normal Distribution
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22 Not standard normal distribution Let, then the random Variable Z, F(z) has a standard normal distribution. We call it z-scores. When X has normal distribution with mean and standard deviation
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23 Find z values for the known probability Given probability relating to standard normal distribution, find the corresponding value z. F(z) is known, what is the value of z? Let be such that probability is where
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24 Finding Z Values for Known Probabilities.1217.1217.01 0.3.1217 Standardized Normal Probability Table (Portion) What is Z given P(Z) =.1217? Shaded area exaggerated
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25 Find the following values (check it in Table)
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26 5.3 The Normal Approximation to the binomial distribution Theorem 5.1. If X is a random variable having the binomial distribution with parameter n and p, the limiting form of the distribution function of the standardized random variable as n approaches infinity, is given by the standard normal distribution
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27 EX If 20% of the memory chips made in a certain plant are defective, what are the probabilities that in a lot of 100 random chosen for inspection? A) at most 15.5 will be defective B) exactly 15 will be defective Hint: calculate it in binomial dist. And normal distribution.
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28 A good rule A good rule for normal approximation to the binomial distribution is that both np and n(1-p) is at least 15
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