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Distributions Normal distribution Binomial distribution Poisson distribution Chi-square distribution Frequency distribution

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Presentation on theme: "Distributions Normal distribution Binomial distribution Poisson distribution Chi-square distribution Frequency distribution"— Presentation transcript:

1 Distributions Normal distribution Binomial distribution Poisson distribution Chi-square distribution Frequency distribution shabeer@hep.knu.ac.kr

2 Frequency distribution Raw data ClassesClass-interval (Largest value - smalest value) (Difference of this / desirable classes) No.of samples fall in the interval (frequency) Cumulative frequency midpoints Relative frequency

3 Binomial Distribution The binomial distribution gives the discrete probability distribution of obtaining exactely n success out of N Bernoulli trials (where the result of each Bernoulli trials is true with probability p and false with probability q =1- p). The binomial distribution is therefore given by whereis a binomial coefficient.

4 Binomial Distribution ● If the probability of each outcome remains the same throughout the trials, then such trials is called Bernoulli trials and the experiment having n Bernoulli trials is called a binomial experiment. ● Example Let X have a binomial distribution with n = 4 and p = 1/3. find P(X = 1), P( X = 3/2), P( X = 6) and P(X ≤2).

5 The binomial probability distribution for n = 4 and p = 1/3, is for x = 0,1,2,3,4 ; because a r.v X with a binomial distribution takes only one of the integer values 0,1,2…n.

6 , because X can take only values 0,1,2,3,4.

7 Poisson Distribution Poisson is the name of French mathematician Sime’on Denis Poisson (1781-1840) and it is published in 1837. It is a limiting approximation of the binomial distribution b (x; n, p). If we assume that n goes to infinity and p approaches to zero in such a way that = np remains constant, then the limiting form of the binomial probability distribution is

8 x = 0,1,2,…,  where The Poisson distribution has only one parameter  >0, and is denoted by p (x;  ). The Poisson probability distribution is also called the law of small number or the rare events distribution. It has a wide application in the field of Physics, Biology, Operation Research and Management Sciences.

9 It is appropriate when the number of possible occurrences is very large but the number of actual occurrences is very small in a fixed period of time. No.of deaths Frequency 0109 165 222 33 41 50 Total200 Example : Fit a Poisson distribution to these data And compute the theoretical frequencies. which is an estimate of 

10 The probabilities are computed by using the Poisson recurrence formula. for x = 1,2,3,….

11 In case the table values for are not available, they are computed by use of logarithms

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13 Normal Distribution A normal distribution in a variate X with mean and variance ² has probability function P(x) = 1.e -(x-)²/(2  ²) /2 on the domain x ∈ (­∞‚ ∞) this type of distribution is mostely used in the theory of errors. ● Due to its curved flaring shape social scientists refer to it as the “bell curve” and physicist generally called it Gaussian distribution. ● Feller(1968) uses the symbols x for P(x) in the above equation, but then swithes to n(x) in Feller(1971). ● The so called "standard normal distribution" is given by taking = 0 and ² = 1 in a general normal distribution. ● A normal distribution is the limiting case of discrete binomial distribution. BinomialPoisson Normal/Gaussian N ∞, Np = ∞ N ∞

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