Chapter 5 Lecture 2 Sections: 5.3 – 5.4.

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Presentation transcript:

Chapter 5 Lecture 2 Sections: 5.3 – 5.4

Binomial Probability Distribution A random variable, x, is said to be Binomial if it meets the following properties: 1. The procedure has a fixed number of trials, n. 2. Outcome of each trial must be independent. 3. Each trial must have outcomes classified into 2 outcomes such as success and failure. 4. The probability of success p, and failure q, must remain constant for each trial.

Notation for Binomial Probability: n = number of trials. x = number of successes and it take integer values from 0 to n. p = the probability of success in a single trial. q = the probability of failure in a single trial, where q = 1 – p. P(x) = the probability of x successes among the n trials.

Yes, x is a Binomial Random Variable. Example: If x = the number of girls in a family of 3 children, is this a Binomial Random Variable? There is a fixed number of trials, 3 children. 2. There are only 2 outcomes for each child, boy or girl. 3. The sex of the each child is independent. For example, the sex of the second child will not depend on the sex of the first child. 4. The probability of having a Girl remains the same for all 3 children, 50%. Yes, x is a Binomial Random Variable.

Example: What if we roll a die 10 time, would this be considered Binomial? Let x = Number when rolling a die. We have a fixed number of trials, 10. The rolls are independent. The probability of rolling a particular number is always 1/6. This would be considered a Binomial Random Variable; however, the outcomes are not classified into two categories. When we roll a die we will get a 1, 2, 3, 4, 5, and 6. This is obviously more than two categories.

Binomial Probability Formula where n = Number of Trials. x = Number of success among n trials. p = probability of success in any one trial. q = probability of failure in any one trail ( q = 1 – p )

Let x = Number of correct answers. Example 1: You decided not to study statistics on the weekend and went out with your friends. On Monday, your instructor decided to give a pop-quiz. The quiz that you are taking is multiple choice (A, B, C, D, E) and consists of 3 questions. Since you did not study, you will have to guess on all the answers. What is the probability that you will guess 2 out of 3 correct? Let x = Number of correct answers. We will first use counting to find the possible number of combinations. Since we have 3 questions and we want to answer 2 of them correct, we notice that the possible combinations of 2 correct and 1 wrong is CCW, CWC, and WCC. That gives us 3. The probability of getting a question correct is p=1/5=0.2, so that means that the q=4/5=0.8. This now tells us that P( guessing 2 of 3 correct)=(3)(0.2)2(0.8)1 = 0.096.

This is the same as using the formula. On Minitab, the result is as follows: Probability Density Function Binomial with n = 3 and p = 0.200000 x P( X = x ) 0.00 0.5120 1.00 0.3840 2.00 0.0960 3.00 0.0080 Recall that x = Number of correct answers.

2. ELAC buys new computers for the lab 2. ELAC buys new computers for the lab. Since there are no Mac Pro Computers, the Lab decides to buy 10 of them. It is known that the probability of a Mac Pro being defective is 0.02. What is the probability of 3 being defective?

P(at least 2 defective) = 0.0162 Probability Density Function Binomial with n = 10 and p = 0.02 x P( X = x ) 0.00 0.8171 1.00 0.1667 2.00 0.0153 3.00 0.0008 4.00 0.0000 5.00 0.0000 6.00 0.0000 7.00 0.0000 8.00 0.0000 9.00 0.0000 10.00 0.0000 What is the probability of at most 1 being defective? P(at most 1 defective) = 0.8171+0.1667 = = P(0 Defective) + P(1 Defective) = 0.9838. What is the probability of at least 2 being defective? P(at least 2 defective) = P(two or more defective) = = 1 – [P(0 Defective) + P(1 Defective)] =1 – 0.9838 P(at least 2 defective) = 0.0162

If we want to find the mean, variance and standard deviation for Binomial Distribution, it is computed with the following: The mean of a defective Mac computer out of 10 is μ=(10)(0.02)=0.2 and Standard Deviation is a. Is it unusual for one computer to be defective? b. Is it unusual for at least 2 computer to be defective?

Example 3: Say you have a 50 question multiple choice (A, B, C, D) exam and you guess on all the questions, what is the mean and standard deviation of the number of correct answers among 50 questions. μ= (50)(0.25)=12.5. Is it unusual to guess only 20 correct on this Exam? Just as before, Maximum Usual Value: μ + 2σ Minimum Usual Value:μ – 2σ 12.5 + 2(3.062) = 18.124 12.5 – 2(3.062) = 5.876 or Find the P(x = 20)

4. At a certain intersection, the light for eastbound traffic is red for 15 seconds, yellow for 5 seconds, and green for 30 seconds.  Find the probability that out of the next eight eastbound cars that arrive randomly at the light, exactly three will be stopped by a red light.

5. An unprepared student will take a quiz with 5 multiple choice questions with 4 options to each question (A, B, C, D). Let X = the number of correct answers. Is X a binomial random variable? if yes do the following: b. Identify n, x, p, and q. c. Calculate P(x) for all possible values of x. d. Find the probability of at most 3 correct. e. Calculate the expected value and standard deviation of correct answers. f. Is it unusual to answer all 5 questions correct?