Binomial Distributions

Slides:



Advertisements
Similar presentations
AP Statistics 51 Days until the AP Exam
Advertisements

CHAPTER 13: Binomial Distributions
1. (f) Use continuity corrections for discrete random variable LEARNING OUTCOMES At the end of the lesson, students will be able to (g) Use the normal.
5.1 Sampling Distributions for Counts and Proportions (continued)
Chapter – Binomial Distributions Geometric Distributions
Binomial Distributions
Binomial Distributions. Binomial Experiments Have a fixed number of trials Each trial has tow possible outcomes The trials are independent The probability.
Chapter 5 Section 2: Binomial Probabilities. trial – each time the basic experiment is performed.
Discrete probability functions (Chapter 17) There are two useful probability functions that have a lot of applications…
Binomial Probability Distribution.
The Central Limit Theorem For simple random samples from any population with finite mean and variance, as n becomes increasingly large, the sampling distribution.
Section 9.3 Sample Means.
Unit 4 Starters. Starter Suppose a fair coin is tossed 4 times. Find the probability that heads comes up exactly two times.
Binomial Distributions
Chapter 5 Sampling Distributions
Jeopardy Normal Distribution Binomial Theorem Binomial Distribution Measures of Center Probability Q $100 Q $200 Q $300 Q $400 Q $500 Q $100 Q $200 Q.
Normal Distribution as Approximation to Binomial Distribution
Sampling distributions BPS chapter 11 © 2006 W. H. Freeman and Company.
In this chapter we will consider two very specific random variables where the random event that produces them will be selecting a random sample and analyzing.
Normal Approximation Of The Binomial Distribution:
Each child born to a particular set of parents has probability of 0.25 having blood type O. Suppose these parents have 5 children. Let X = number of children.
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc.. Chap 5-1 Chapter 5 Some Important Discrete Probability Distributions Basic Business Statistics.
AP Statistics Section 8.1: The Binomial Distribution.
Chapter 8 Binomial and Geometric Distributions
1 Chapter 5 Sampling Distributions. 2 The Distribution of a Sample Statistic Examples  Take random sample of students and compute average GPA in sample.
Sampling distributions - for counts and proportions IPS chapter 5.1 © 2006 W. H. Freeman and Company.
 A probability function is a function which assigns probabilities to the values of a random variable.  Individual probability values may be denoted by.
Chapter 5 Lecture 2 Sections: 5.3 – 5.4.
Warm-up Grab a die and roll it 10 times and record how many times you roll a 5. Repeat this 7 times and record results. This time roll the die until you.
Population distribution VS Sampling distribution
Sampling Distribution of the Sample Mean. Example a Let X denote the lifetime of a battery Suppose the distribution of battery battery lifetimes has 
Chapter 10 – Sampling Distributions Math 22 Introductory Statistics.
Binomial Probability Distribution
The Practice of Statistics Third Edition Chapter 8: The Binomial and Geometric Distributions 8.1 The Binomial Distribution Copyright © 2008 by W. H. Freeman.
Copyright © 2014 Pearson Education, Inc. All rights reserved Chapter 6 Modeling Random Events: The Normal and Binomial Models.
AP Statistics Chapter 8 Notes. The Binomial Setting If you roll a die 20 times, how many times will you roll a 4? Will you always roll a 4 that many times?
Chapter 7: Introduction to Sampling Distributions Section 2: The Central Limit Theorem.
1 Chapter 8 Sampling Distributions of a Sample Mean Section 2.
1 Since everything is a reflection of our minds, everything can be changed by our minds.
The Binomial Distribution
Example-1: An insurance company sells a 10,000 TRL 1-year term insurance policy at an annual premium of 290 TRL. Based on many year’s information, the.
Probability & Statistics
Chapter 6 The Normal Distribution Section 6-3 The Standard Normal Distribution.
1 Sampling distributions The probability distribution of a statistic is called a sampling distribution. : the sampling distribution of the mean.
Warm Up When rolling an unloaded die 10 times, the number of time you roll a 1 is the count X of successes in each independent observations. 1. Is this.
Collect 9.1 Coop. Asmnt. &… ____________ bias and _______________ variability.
The Practice of Statistics Third Edition Chapter 9: Sampling Distributions Copyright © 2008 by W. H. Freeman & Company Daniel S. Yates.
Binomial Distribution. Bernoulli Trials Repeated identical trials are called Bernoulli trials if: 1. There are two possible outcomes for each trial, denoted.
Probability Distributions. Constructing a Probability Distribution Definition: Consists of the values a random variable can assume and the corresponding.
1. 2 At the end of the lesson, students will be able to (c)Understand the Binomial distribution B(n,p) (d) find the mean and variance of Binomial distribution.
+ Binomial and Geometric Random Variables Textbook Section 6.3.
Chapter 7 notes Binomial. Example Determine the probability of getting at least 14 heads in 20 tosses of a fair coin. Mean is = ?
In probability theory and statistics, the binomial distribution is the discrete probability distribution of the number of successes in a sequence of n.
Binomial and Geometric Random Variables
Chapter 5 Sampling Distributions
Comparing Two Proportions
Binomial Distributions
Chapter 5 Sampling Distributions
Chapter 5: Sampling Distributions
Suppose you flip a fair coin twice
Binomial Probability Distribution
Year-3 The standard deviation plus or minus 3 for 99.2% for year three will cover a standard deviation from to To calculate the normal.
Review
Chapter 5 Sampling Distributions
8.1 The Binomial Distribution
The Practice of Statistics
Suppose that the random variable X has a distribution with a density curve that looks like the following: The sampling distribution of the mean of.
CHAPTER 7 Sampling Distributions
Chapter 5: Sampling Distributions
Statistics 101 Chapter 8 Section 8.1 c and d.
Presentation transcript:

Binomial Distributions BPS chapter 13 © 2006 W.H. Freeman and Company

Binomial setting A manufacturing company takes a sample of n = 100 bolts from their production line. X is the number of bolts that are found defective in the sample. It is known that the probability of a bolt being defective is 0.003. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting (answer) A manufacturing company takes a sample of n = 100 bolts from their production line. X is the number of bolts that are found defective in the sample. It is known that the probability of a bolt being defective is 0.003. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting A survey-taker asks the age of each person in a random sample of 20 people. X is the age for the individuals. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation.

Binomial setting (answer) A survey-taker asks the age of each person in a random sample of 20 people. X is the age for the individuals. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation.

Binomial setting A survey-taker asks whether each person in a random sample of 20 college students is over the age of 21. X is the number of people who are over 21. According to university records, 35% of all college students are over 21 years old. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting (answer) A survey-taker asks whether each person in a random sample of 20 college students is over the age of 21. X is the number of people who are over 21. According to university records, 35% of all college students are over 21 years old. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting A certain test contains 10 multiple-choice problems. For five of the problems, there are four possible answers, and for the other five there are only three possible answers. X is the number of correct answers a student gets by simply guessing. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting (answer) A certain test contains 10 multiple-choice problems. For five of the problems, there are four possible answers, and for the other five there are only three possible answers. X is the number of correct answers a student gets by simply guessing. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting A fair die is rolled and the number of dots on the top face is noted. X is the number of times we have to roll in order to have the face of the die show a 2. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial setting (answer) A fair die is rolled and the number of dots on the top face is noted. X is the number of times we have to roll in order to have the face of the die show a 2. Does X have a binomial distribution? Yes. No, because there is not a fixed number of observations. No, because the observations are not all independent. No, because there are more than two possible outcomes for each observation. No, because the probability of success for each observation is not the same.

Binomial distribution Suppose that for a randomly selected high school student who has taken a college entrance exam, the probability of scoring above a 650 is 0.30. A random sample of n = 9 students was selected. What is the probability that exactly two of the students scored over 650 points? (0.30)2 2 (0.30)

Binomial distribution (answer) Suppose that for a randomly selected high school student who has taken a college entrance exam, the probability of scoring above a 650 is 0.30. A random sample of n = 9 students was selected. What is the probability that exactly two of the students scored over 650 points? (0.30)2 2 (0.30)

Binomial distribution Suppose that for a randomly selected high school student who has taken a college entrance exam, the probability of scoring above a 650 is 0.30. A random sample of n = 9 students was selected. What are the mean  and standard deviation  of the number of students in the sample who have scores above 650?  = (9)(0.3) = 2.7,  = 0.30  = 3,  = (9)(0.3)  = (9)(0.3) = 2.7,  = (9)(0.7)(0.3)  = (9)(0.3) = 2.7,  =

Binomial distribution (answer) Suppose that for a randomly selected high school student who has taken a college entrance exam, the probability of scoring above a 650 is 0.30. A random sample of n = 9 students was selected. What are the mean  and standard deviation  of the number of students in the sample who have scores above 650?  = (9)(0.3) = 2.7,  = 0.30  = 3,  = (9)(0.3)  = (9)(0.3) = 2.7,  = (9)(0.7)(0.3)  = (9)(0.3) = 2.7,  =

Normal approximation to the binomial Suppose that for a randomly selected high school student who has taken a college entrance exam, the probability of scoring above a 650 is 0.30. A random sample of n = 90 high school students was selected. If we want to calculate the probability that at least 20 of these students scored above a 650, what distribution would be the best for us to use? Note that and Binomial (n = 90, p = 0.30) Binomial ( = 27,  = 0.435) Normal (n = 90, p = 0.30) Normal ( = 27,  = 0.435)

Normal approximation to the binomial (answer) Suppose that for a randomly selected high school student who has taken a college entrance exam, the probability of scoring above a 650 is 0.30. A random sample of n = 90 high school students was selected. If we want to calculate the probability that at least 20 of these students scored above a 650, what distribution would be the best for us to use? Note that and Binomial (n = 90, p = 0.30) Binomial ( = 27,  = 0.435) Normal (n = 90, p = 0.30) Normal ( = 27,  = 0.435)

Normal approximation to the binomial When does the normal approximation to the binomial give the most accurate answer? When n is big. When n is small. When p is big. When p is small.

Normal approximation to the binomial (answer) When does the normal approximation to the binomial give the most accurate answer? When n is big. When n is small. When p is big. When p is small.

Normal approximation to the binomial Why would we want to use the normal approximation to the binomial instead of just using the binomial distribution? The normal distribution is more accurate. The normal distribution uses the mean and the standard deviation. The normal distribution works all the time, so use it for everything. The binomial distribution is awkward and takes too long if you have to sum up many probabilities. The binomial distribution looks like the normal distribution if n is large. The binomial distribution is awkward and takes too long if you have to multiply many probabilities. The binomial distribution looks like the normal distribution if n is large.

Normal approximation to the binomial (answer) Why would we want to use the normal approximation to the binomial instead of just using the binomial distribution? The normal distribution is more accurate. The normal distribution uses the mean and the standard deviation. The normal distribution works all the time, so use it for everything. The binomial distribution is awkward and takes too long if you have to sum up many probabilities. The binomial distribution looks like the normal distribution if n is large. The binomial distribution is awkward and takes too long if you have to multiply many probabilities. The binomial distribution looks like the normal distribution if n is large.