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1.10 Bernoulli’s random Variables & Binomial Distribution
Bernoulli Random Variable Suppose that a trial, or an experiment, whose outcome can be classified as either a success or a failure is performed. If we let X=1 when the outcome is a success and X=0 when the outcome is a failure, then the pmf of X is given by
Bernoulli Random Variable  A random variable X is said to be a Bernoulli random variable (after the Swiss mathematician James Bernoulli) if its probability mass function is given by
Binomial Random Variable Suppose now that n independent trials, each of which results in a success with probability p and in a failure with probability 1-p, are to be performed. If X represents the number of successes that occur in the n trials, then X  is said to be a Binomial random variable with parameters (n,p) . Thus a Bernoulli random variable is just a binomial random variable with parameters (1,p) .
 Binomial Distribution Bernoulli Trials There are only two possible outcomes for each trial. The probability of a success is the same for each trial. There are n trials, where n is a constant. The n trials are independent.
Binomial Distribution  Let X be the random variable that equals the number of successes in n  trials. If p and 1 – p  are the probabilities of success and failure on any one trial then the probability of getting x successes and n – x failures in some specific order is  px(1- p)n – x The number of ways in which one can select the x trials on which there is to be a success is
Binomial Distribution  Thus the probability of getting x successes in n trials is given by This probability distribution is called the binomial  distribution because for  x = 0, 1, 2, …, and  n the  value of the probabilities are successive terms of  binomial expansion of [p + (1 – p)]n;
Binomial Distribution  for the same reason, the combinatorial quantities  are referred to as binomial coefficients.  The preceding equation defines a family of probability distributions with each member characterized by a given value of the parameterp and the number of trials n.
Binomial Distribution  Distribution function for binomial distribution
Binomial Distribution  The value of b(x;n,p) can be obtained by formula since the two cumulative probabilities B(x; n, p) and B(x - 1; n, p) differ by the single term b(x; n,p). If n is large the calculation of binomial probability can become quite tedious.
Binomial Distribution Function Table for n = 2 and 3  and p = .05 to .25
Example
The Mean and the Variance of a Probability Distribution Mean of discrete probability distribution The mean of a probability distribution is the mathematical expectation of a corresponding random variable.  If a random variable X takes on the values x1, x2, …, or xk, with the probability f(x1), f(x2),…, and f(xk),  its mathematical expectation or expected value is   = x1· f(x1) + x2· f(x2) + … + xk· f(xk)
The Mean and the Variance of a Probability Distribution  Mean of binomial distribution p  probability of success n  number of trials Variance of binomial distribution
The Mean and the Variance of a Probability Distribution  Mean of binomial distribution p  probability of success n  number of trials Proof:
The Mean and the Variance of a Probability Distribution  Put x – 1= y and n – 1 = m, so n – x = m – y,
Computing formula for the variance Variance of binomial distribution Proof:
Put x – 1 = y  and n – 1 = m  The Mean and the Variance of a Probability Distribution
The Mean and the Variance of a Probability Distribution
Put y – 1 = z and m – 1 = l in first summation The Mean and the Variance of a Probability Distribution
Moment Generating function for Binomial distribution
Second ordinary/raw moment (moment about origin) Moment Generating function for Binomial distribution
Moment Generating function for Binomial distribution Moment Generating function for Binomial distribution

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Bernoullis Random Variables And Binomial Distribution

  • 1. 1.10 Bernoulli’s random Variables & Binomial Distribution
  • 2. Bernoulli Random Variable Suppose that a trial, or an experiment, whose outcome can be classified as either a success or a failure is performed. If we let X=1 when the outcome is a success and X=0 when the outcome is a failure, then the pmf of X is given by
  • 3. Bernoulli Random Variable A random variable X is said to be a Bernoulli random variable (after the Swiss mathematician James Bernoulli) if its probability mass function is given by
  • 4. Binomial Random Variable Suppose now that n independent trials, each of which results in a success with probability p and in a failure with probability 1-p, are to be performed. If X represents the number of successes that occur in the n trials, then X is said to be a Binomial random variable with parameters (n,p) . Thus a Bernoulli random variable is just a binomial random variable with parameters (1,p) .
  • 5. Binomial Distribution Bernoulli Trials There are only two possible outcomes for each trial. The probability of a success is the same for each trial. There are n trials, where n is a constant. The n trials are independent.
  • 6. Binomial Distribution Let X be the random variable that equals the number of successes in n trials. If p and 1 – p are the probabilities of success and failure on any one trial then the probability of getting x successes and n – x failures in some specific order is px(1- p)n – x The number of ways in which one can select the x trials on which there is to be a success is
  • 7. Binomial Distribution Thus the probability of getting x successes in n trials is given by This probability distribution is called the binomial distribution because for x = 0, 1, 2, …, and n the value of the probabilities are successive terms of binomial expansion of [p + (1 – p)]n;
  • 8. Binomial Distribution for the same reason, the combinatorial quantities are referred to as binomial coefficients. The preceding equation defines a family of probability distributions with each member characterized by a given value of the parameterp and the number of trials n.
  • 9. Binomial Distribution Distribution function for binomial distribution
  • 10. Binomial Distribution The value of b(x;n,p) can be obtained by formula since the two cumulative probabilities B(x; n, p) and B(x - 1; n, p) differ by the single term b(x; n,p). If n is large the calculation of binomial probability can become quite tedious.
  • 11. Binomial Distribution Function Table for n = 2 and 3 and p = .05 to .25
  • 13. The Mean and the Variance of a Probability Distribution Mean of discrete probability distribution The mean of a probability distribution is the mathematical expectation of a corresponding random variable. If a random variable X takes on the values x1, x2, …, or xk, with the probability f(x1), f(x2),…, and f(xk), its mathematical expectation or expected value is  = x1· f(x1) + x2· f(x2) + … + xk· f(xk)
  • 14. The Mean and the Variance of a Probability Distribution Mean of binomial distribution p  probability of success n  number of trials Variance of binomial distribution
  • 15. The Mean and the Variance of a Probability Distribution Mean of binomial distribution p  probability of success n  number of trials Proof:
  • 16. The Mean and the Variance of a Probability Distribution Put x – 1= y and n – 1 = m, so n – x = m – y,
  • 17. Computing formula for the variance Variance of binomial distribution Proof:
  • 18. Put x – 1 = y and n – 1 = m The Mean and the Variance of a Probability Distribution
  • 19. The Mean and the Variance of a Probability Distribution
  • 20. Put y – 1 = z and m – 1 = l in first summation The Mean and the Variance of a Probability Distribution
  • 21. Moment Generating function for Binomial distribution
  • 22. Second ordinary/raw moment (moment about origin) Moment Generating function for Binomial distribution
  • 23. Moment Generating function for Binomial distribution Moment Generating function for Binomial distribution