Binomial Probability Distribution

Slides:



Advertisements
Similar presentations
GrowingKnowing.com © Binomial probabilities Your choice is between success and failure You toss a coin and want it to come up tails Tails is success,
Advertisements

Problems Problems 4.17, 4.36, 4.40, (TRY: 4.43). 4. Random Variables A random variable is a way of recording a quantitative variable of a random experiment.
Probability Distributions Discrete. Discrete data Discrete data can only take exact values Examples: The number of cars passing a checkpoint in 30 minutes.
Unit 5 Section : The Binomial Distribution  Situations that can be reduces to two outcomes are known as binomial experiments.  Binomial experiments.
Chapter – Binomial Distributions Geometric Distributions
1 Pertemuan 05 Sebaran Peubah Acak Diskrit Matakuliah: A0392-Statistik Ekonomi Tahun: 2006.
Chapter 5 Section 2: Binomial Probabilities. trial – each time the basic experiment is performed.
Binomial Probability Distributions
5-3 Binomial Probability Distributions
CHAPTER 8_A PROBABILITY MODELS BERNOULLI TRIAL
The Binomial Distribution. Introduction # correct TallyFrequencyP(experiment)P(theory) Mix the cards, select one & guess the type. Repeat 3 times.
Binomial Probability Distribution.
Quiz 4  Probability Distributions. 1. In families of three children what is the mean number of girls (assuming P(girl)=0.500)? a) 1 b) 1.5 c) 2 d) 2.5.
Section 5-3 Binomial Probability Distribution. BINOMIAL PROBABILITY DISTRTIBUTION 1.The procedure has a fixed number of trials. 2.The trials must be independent.
The Binomial Distribution
1 Overview This chapter will deal with the construction of probability distributions by combining the methods of Chapter 2 with the those of Chapter 4.
Thermo & Stat Mech - Spring 2006 Class 16 More Discussion of the Binomial Distribution: Comments & Examples jl.
Statistics 1: Elementary Statistics Section 5-4. Review of the Requirements for a Binomial Distribution Fixed number of trials All trials are independent.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Section 5-3 Binomial Probability Distributions.
40S Applied Math Mr. Knight – Killarney School Slide 1 Unit: Statistics Lesson: ST-5 The Binomial Distribution The Binomial Distribution Learning Outcome.
1 Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Random Variables  Random variable a variable (typically represented by x)
Binomial Distributions Calculating the Probability of Success.
The Binomial Distribution. Binomial Experiment.
AP Statistics Section 8.1: The Binomial Distribution.
Section 5-3 Binomial Probability Distributions. BINOMIAL PROBABILITY DISTRTIBUTION 1.The procedure has a fixed number of trials. 2.The trials must be.
Chapter 5 Lecture 2 Sections: 5.3 – 5.4.
Probability Distributions
Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 1 Binomial Experiments Section 4-3 & Section 4-4 M A R I O F. T R I O L A Copyright.
Bernoulli Trials Two Possible Outcomes –Success, with probability p –Failure, with probability q = 1  p Trials are independent.
GrowingKnowing.com © Binomial probabilities Your choice is between success and failure You toss a coin and want it to come up tails Tails is success,
Aim: How do we use binomial probability? Complete worksheet.
Binomial Experiment A binomial experiment (also known as a Bernoulli trial) is a statistical experiment that has the following properties:
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Section 5-2 Random Variables.
Probability Distributions BINOMIAL DISTRIBUTION. Binomial Trials There are a specified number of repeated, independent trials There are a specified number.
Binomial Distributions. Quality Control engineers use the concepts of binomial testing extensively in their examinations. An item, when tested, has only.
4 - 1 © 2001 prentice-Hall, Inc. Behavioral Statistics Discrete Random Variables Chapter 4.
Introductory Statistics Lesson 4.2 A Objective: SSBAT determine if a probability experiment is a binomial experiment. SSBAT how to find binomial probabilities.
1 Since everything is a reflection of our minds, everything can be changed by our minds.
Section 5.2 Binomial Distribution HAWKES LEARNING SYSTEMS math courseware specialists Copyright © 2008 by Hawkes Learning Systems/Quant Systems, Inc. All.
Dan Piett STAT West Virginia University Lecture 5.
5.1 Probability in our Daily Lives.  Which of these list is a “random” list of results when flipping a fair coin 10 times?  A) T H T H T H T H T H 
The Binomial Distribution
Copyright 2013, 2010, 2007, Pearson, Education, Inc. Section Binomial Probability Formula.
Copyright © 2006 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Slide
Ch. 15H continued. * -applied to experiments with replacement ONLY(therefore…..independent events only) * -Note: For DEPENDENT events we use the “hypergeometric.
Lecture 9 The Binomial Distribution Math 1107 Introduction to Statistics.
C4: DISCRETE RANDOM VARIABLES CIS 2033 based on Dekking et al. A Modern Introduction to Probability and Statistics Longin Jan Latecki.
Chapter 16 Week 6, Monday. Random Variables “A numeric value that is based on the outcome of a random event” Example 1: Let the random variable X be defined.
Prob and Stats, Oct 28 The Binomial Distribution III Book Sections: N/A Essential Questions: How can I compute the probability of any event? How can I.
Section 5-3 Binomial Probability Distributions. Binomial Probability Distribution A binomial probability distribution results from a procedure that meets.
6.2 BINOMIAL PROBABILITIES.  Features  Fixed number of trials (n)  Trials are independent and repeated under identical conditions  Each trial has.
Binomial Probability Distribution
Binomial Distribution If you flip a coin 3 times, what is the probability that you will get exactly 1 tails? There is more than one way to do this problem,
1 7.3 RANDOM VARIABLES When the variables in question are quantitative, they are known as random variables. A random variable, X, is a quantitative variable.
Bernoulli Trials, Geometric and Binomial Probability models.
Section 5.3 Independence and the Multiplication Rule.
CHAPTER 5 Discrete Probability Distributions. Chapter 5 Overview  Introduction  5-1 Probability Distributions  5-2 Mean, Variance, Standard Deviation,
Binomial Probability Distributions. Binomial Probability Distributions are important because they allow us to deal with circumstances in which the outcomes.
Binomial Distribution
Section 6.2 Binomial Distribution
Negative Binomial Experiment
Discrete Probability Distributions
Statistics 1: Elementary Statistics
The Binomial and Geometric Distributions
Binomial Probability Distribution
Binomial Distribution
Statistics 1: Elementary Statistics
LESSON 9: BINOMIAL DISTRIBUTION
Bernoulli Trials Two Possible Outcomes Trials are independent.
Binomial Distributions
Presentation transcript:

Binomial Probability Distribution A binomial probability distribution results from a procedure where: 1) There are a fixed number of trials 2) The trials are independent* 3) Each trial has only two possible outcomes 4) The probabilities are the same for all trials *when sampling without replacement, if the sample size is less than 5% of the population size, we can treat the events as if they were independent

Binomial Probability Distribution Example: Flip 100 coins and count the number of heads: There are 100 trials (100 flips of a coin) The outcome of one flip doesn’t affect the next flip Each trial has two outcomes – heads or tails The probability of heads is always ½

Notation We usually call the two outcomes success and failure p probability of success in one trial q = 1-p probability of failure in one trial n number of trials x specific number of successes in n trials (can be 0 to n) P(x) probability of exactly x successes in the n trials

Example What’s the probability of randomly guessing 8 questions right on a 10 question multiple choice test, where each question has 4 possible answers.   n = 10 x = 8 p = ¼ = 0.25 q = 1 - ¼ = 0.75 We’re looking for P(8)

The Formula

Example What’s the probability of randomly guessing 8 questions right on a 10 question multiple choice test, where each question has 4 possible answers. n = 10 x = 8 p = ¼ = 0.25 q = 0.75 How would we find the P(at least 8 right)? P(at least 8) = P(8) + P(9) + P(10) =0.000416

You try A company makes widgets, with a 2% defect rate. If you sample and test 15 widgets, what is the probability that: Exactly one has a defect? None have defects? At least one has a defect?

Homework 4.3: 1, 5, 7, 17, 19, 21, 25, 29, 33