750 likes | 765 Views
This chapter explores the concept of the binomial probability distribution in statistics, covering topics such as statistical experiments, random variables, probability distributions, mean, standard deviation, linear functions of random variables, independent random variables, and binomial experiments.
E N D
Understandable StatisticsSeventh EditionBy Brase and BrasePrepared by: Lynn SmithGloucester County College Chapter Five The Binomial Probability Distribution and Related Topics
Statistical Experiment A statistical experiment or observation is any process by which an measurements are obtained
Examples of Statistical Experiments • Counting the number of books in the College Library • Counting the number of mistakes on a page of text • Measuring the amount of rainfall in your state during the month of June
Random Variable a quantitative variable that assumes a value determined by chance
Discrete Random Variable A discrete random variable is a quantitative random variable that can take on only a finite number of values or a countable number of values. Example: the number of books in the College Library
Continuous Random Variable A continuous random variable is a quantitative random variable that can take on any of the countless number of values in a line interval. Example: the amount of rainfall in your state during the month of June
Probability Distribution an assignment of probabilities to the specific values of the random variable or to a range of values of the random variable
Probability Distribution of a Discrete Random Variable • A probability is assigned to each value of the random variable. • The sum of these probabilities must be 1.
Probability distribution for the rolling of an ordinary die x P(x) 1 2 3 4 5 6
Features of a Probability Distribution x P(x) 1 2 3 4 5 6 Probabilities must be between zero and one (inclusive) P(x) =1
Probability Histogram P(x) | | | | | | | 1 2 3 4 5 6
Mean and standard deviation of a discrete probability distribution Mean = = expectation or expected value, the long-run average Formula: = x P(x)
Finding the mean: x P(x) x P(x) 0 .3 1 .3 2 .2 3 .1 4 .1 0 .3 .4 .3 .4 = x P(x) = 1.4 1.4
Finding the standard deviation x P(x) x – ( x – ) 2 ( x – ) 2 P(x) 0 .3 1 .3 2 .2 3 .1 4 .1 .588 .048 .072 .256 .676 – 1.4 – 0.4 .6 1.6 2.6 1.96 0.16 0.36 2.56 6.76 1.64
Standard Deviation 1.28
Linear Functions of a Random Variable If a and b are any constants and x is a random variable, then the new random variable L = a + bx is called a linear function of a random variable.
If x is a random variable with mean and standard deviation , and L = a + bx then: • Mean of L = L = a + b • Variance of L = L2 = b22 • Standard deviation of L = L= the square root of b22 = b
Find the mean of L. Find the variance of L. Find the standard deviation of L. L = 2 + 5 Variance of L = b22 = 25(9) = 225 Standard deviation of L = square root of 225= If x is a random variable with mean = 12 and standard deviation = 3 and L = 2 + 5x
Independent Random Variables Two random variables x1 and x2 are independent if any event involving x1 by itself is independent of any event involving x2 by itself.
If x1 and x2 are a random variables with means and and variances and If W = ax1 + bx2 then: • Mean of W = W = a + b • Variance of W = W2 = a212 + b22 • Standard deviation of W = W= the square root of a212 + b22
Find the mean of W. Find the variance of W. Find the standard deviation of W. Mean of W = 2(12)+ 5(8) = 64 Variance of W = 4(9) + 25(4) = 136 Standard deviation of W= square root of 136 11.66 Given x1, a random variable with1 = 12 and 1 = 3 and x2 is a random variable with 2 = 8 and 2 = 2 and W = 2x1 + 5x2.
Features of a Binomial Experiment 1. There are a fixed number of trials. We denote this number by the letter n.
Features of a Binomial Experiment 2. The n trials are independent and repeated under identical conditions.
Features of a Binomial Experiment 3. Each trial has only two outcomes: success, denoted by S, and failure, denoted by F.
Features of a Binomial Experiment 4. For each individual trial, the probability of success is the same. We denote the probability of success by p and the probability of failure by q. Since each trial results in either success or failure, p + q = 1 and q = 1 – p.
Features of a Binomial Experiment 5. The central problem is to find the probability of r successes out of n trials.
Binomial Experiments • Repeated, independent trials • Number of trials =n • Two outcomes per trial: success (S) and failure (F) • Number of successes = r • Probability of success = p • Probability of failure = q = 1 – p
A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times.Is this a binomial experiment?
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. success = failure =
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. success = hitting the target failure = not hitting the target
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. Probability of success = Probability of failure =
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. Probability of success = 0.70 Probability of failure = 1 – 0.70 = 0.30
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. In this experiment there are n = _____ trials.
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. In this experiment there are n = _8__ trials.
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times.We wish to compute the probability of six successes out of eight trials. In this case r = _____.
Is this a binomial experiment? A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. We wish to compute the probability of six successes out of eight trials. In this case r = _ 6__.
Calculating Binomial Probability Given n = 6, p = 0.1, find P(4):
Calculating Binomial Probability A sharpshooter takes eight shots at a target. She normally hits the target 70% of the time. Find the probability that she hits the target exactly six times. n = 8, p = 0.7, find P(6):
Table for Binomial Probability Table 3 Appendix II
Using the Binomial Probability Table • Find the section labeled with your value of n. • Find the entry in the column headed with your value of p and row labeled with the r value of interest.
Using the Binomial Probability Table • n = 8, p = 0.7, find P(6):
Find the Binomial Probability Suppose that the probability that a certain treatment cures a patient is 0.30. Twelve randomly selected patients are given the treatment. Find the probability that: a. exactly 4 are cured. b. all twelve are cured. c. none are cured. d. at least six are cured.
Exactly four are cured: n = r = p = q =
Exactly four are cured: n = 12 r = 4 p = 0.3 q = 0.7 P(4) = 0.231
All are cured: n = 12 r = 12 p = 0.3 q = 0.7 P(12) = 0.000
None are cured: n = 12 r = 0 p = 0.3 q = 0.7 P(0) = 0.014
At least six are cured: r = ?