Chapter 17. Probability Models. Copyright 2010 Pearson Education, Inc.

Similar documents
Chapter 17 Probability Models

Tuesday, December 12, 2017 Warm-up

Probability Models. Grab a copy of the notes on the table by the door

Binomial Random Variables. Binomial Random Variables

STA 6166 Fall 2007 Web-based Course. Notes 10: Probability Models

MA : Introductory Probability

Chpt The Binomial Distribution

Chapter 16. Random Variables. Copyright 2010 Pearson Education, Inc.

Chapter 3 Discrete Random Variables and Probability Distributions

Chapter 3 - Lecture 5 The Binomial Probability Distribution

Chapter 3 Discrete Random Variables and Probability Distributions

No, because np = 100(0.02) = 2. The value of np must be greater than or equal to 5 to use the normal approximation.

Chapter 8. Binomial and Geometric Distributions

Random Variables and Probability Functions

Chapter 4 Probability Distributions

Experimental Probability - probability measured by performing an experiment for a number of n trials and recording the number of outcomes

Math 14 Lecture Notes Ch The Normal Approximation to the Binomial Distribution. P (X ) = nc X p X q n X =

AMS7: WEEK 4. CLASS 3

STA258H5. Al Nosedal and Alison Weir. Winter Al Nosedal and Alison Weir STA258H5 Winter / 41

Probability Theory. Mohamed I. Riffi. Islamic University of Gaza

AP Statistics Ch 8 The Binomial and Geometric Distributions

Central Limit Theorem (cont d) 7/28/2006

Chapter 14. From Randomness to Probability. Copyright 2010 Pearson Education, Inc.

Binomial Distribution. Normal Approximation to the Binomial

MidTerm 1) Find the following (round off to one decimal place):

Binomial Probabilities The actual probability that P ( X k ) the formula n P X k p p. = for any k in the range {0, 1, 2,, n} is given by. n n!

Overview. Definitions. Definitions. Graphs. Chapter 4 Probability Distributions. probability distributions

Discrete Random Variables and Probability Distributions. Stat 4570/5570 Based on Devore s book (Ed 8)

Policyholder Outcome Death Disability Neither Payout, x 10,000 5, ,000

Discrete Probability Distributions and application in Business

STA Module 3B Discrete Random Variables

STA Rev. F Learning Objectives. What is a Random Variable? Module 5 Discrete Random Variables

Point Estimation. Some General Concepts of Point Estimation. Example. Estimator quality

Probability Distributions: Discrete

Chapter 3 Statistical Quality Control, 7th Edition by Douglas C. Montgomery. Copyright (c) 2013 John Wiley & Sons, Inc.

Chapter 4: Commonly Used Distributions. Statistics for Engineers and Scientists Fourth Edition William Navidi

CIVL Discrete Distributions

Bernoulli and Binomial Distributions

Chapter 16. Random Variables. Copyright 2010, 2007, 2004 Pearson Education, Inc.

Section 7.5 The Normal Distribution. Section 7.6 Application of the Normal Distribution

Statistical Methods in Practice STAT/MATH 3379

Chapter 14 - Random Variables

SOME MOST POPULAR DISTRIBUTIONS OF RANDOM VARIABLES

MA 1125 Lecture 12 - Mean and Standard Deviation for the Binomial Distribution. Objectives: Mean and standard deviation for the binomial distribution.

Discrete Random Variables and Probability Distributions

Lecture Slides. Elementary Statistics Tenth Edition. by Mario F. Triola. and the Triola Statistics Series

Model Paper Statistics Objective. Paper Code Time Allowed: 20 minutes

Chapter 5. Sampling Distributions

Binomial and multinomial distribution

Chapter 5: Probability models

Chapter 8 Probability Models

Probability & Statistics Chapter 5: Binomial Distribution

5. In fact, any function of a random variable is also a random variable

Math Week in Review #10. Experiments with two outcomes ( success and failure ) are called Bernoulli or binomial trials.

Objective: To understand similarities and differences between geometric and binomial scenarios and to solve problems related to these scenarios.

P (X = x) = x=25

The Binomial distribution

MA131 Lecture 9.1. = µ = 25 and σ X P ( 90 < X < 100 ) = = /// σ X

Some Discrete Distribution Families

Binomial Distributions

Consider the following examples: ex: let X = tossing a coin three times and counting the number of heads

CHAPTER 5 SOME DISCRETE PROBABILITY DISTRIBUTIONS. 5.2 Binomial Distributions. 5.1 Uniform Discrete Distribution

A random variable (r. v.) is a variable whose value is a numerical outcome of a random phenomenon.

E509A: Principle of Biostatistics. GY Zou

Chapter 7. Sampling Distributions and the Central Limit Theorem

Lecture Slides. Elementary Statistics Tenth Edition. by Mario F. Triola. and the Triola Statistics Series. Slide 1

Part 10: The Binomial Distribution

UQ, STAT2201, 2017, Lectures 3 and 4 Unit 3 Probability Distributions.

Probability Models.S2 Discrete Random Variables

5.4 Normal Approximation of the Binomial Distribution

II - Probability. Counting Techniques. three rules of counting. 1multiplication rules. 2permutations. 3combinations

guessing Bluman, Chapter 5 2

The Assumptions of Bernoulli Trials. 1. Each trial results in one of two possible outcomes, denoted success (S) or failure (F ).

Chapter. Section 4.2. Chapter 4. Larson/Farber 5 th ed 1. Chapter Outline. Discrete Probability Distributions. Section 4.

Overview. Definitions. Definitions. Graphs. Chapter 5 Probability Distributions. probability distributions

Statistics 6 th Edition

ECON 214 Elements of Statistics for Economists 2016/2017

Lecture 8. The Binomial Distribution. Binomial Distribution. Binomial Distribution. Probability Distributions: Normal and Binomial

Business Statistics Midterm Exam Fall 2013 Russell

Chapter 5 Normal Probability Distributions

CH 5 Normal Probability Distributions Properties of the Normal Distribution

Probability Theory and Simulation Methods. April 9th, Lecture 20: Special distributions

Probability Distributions for Discrete RV

chapter 13: Binomial Distribution Exercises (binomial)13.6, 13.12, 13.22, 13.43

STAT 201 Chapter 6. Distribution

The Normal Approximation to the Binomial

***SECTION 8.1*** The Binomial Distributions

The Binomial and Geometric Distributions. Chapter 8

8.1 Binomial Distributions

Unit 2: Probability and distributions Lecture 4: Binomial distribution

Section Introduction to Normal Distributions

ECON 214 Elements of Statistics for Economists 2016/2017

CIVL Learning Objectives. Definitions. Discrete Distributions

MATH 118 Class Notes For Chapter 5 By: Maan Omran

Random Variables Handout. Xavier Vilà

Counting Basics. Venn diagrams

Chapter 12: Gross Domestic Product and Growth Section 3

AP Statistics Test 5

5.3 Statistics and Their Distributions

Chapter 6 Confidence Intervals Section 6-1 Confidence Intervals for the Mean (Large Samples) Estimating Population Parameters

Transcription:

Chapter 17 Probability Models Copyright 2010 Pearson Education, Inc.

Bernoulli Trials The basis for the probability models we will examine in this chapter is the Bernoulli trial. We have Bernoulli trials if: there are two possible outcomes (success and failure). the probability of success, p, is constant. the trials are independent. Copyright 2010 Pearson Education, Inc. Slide 17-3

The Geometric Model A single Bernoulli trial is usually not all that interesting. A Geometric probability model tells us the probability for a random variable that counts the number of Bernoulli trials until the first success. Geometric models are completely specified by one parameter, p, the probability of success, and are denoted Geom(p). Copyright 2010 Pearson Education, Inc. Slide 17-4

The Geometric Model (cont.) Geometric probability model for Bernoulli trials: Geom(p) p = probability of success q = 1 p = probability of failure X = number of trials until the first success occurs P(X = x) = q x-1 p E(X) 1 p q p 2 Copyright 2010 Pearson Education, Inc. Slide 17-5

Independence One of the important requirements for Bernoulli trials is that the trials be independent. When we don t have an infinite population, the trials are not independent. But, there is a rule that allows us to pretend we have independent trials: The 10% condition: Bernoulli trials must be independent. If that assumption is violated, it is still okay to proceed as long as the sample is smaller than 10% of the population. Copyright 2010 Pearson Education, Inc. Slide 17-6

The Binomial Model A Binomial model tells us the probability for a random variable that counts the number of successes in a fixed number of Bernoulli trials. Two parameters define the Binomial model: n, the number of trials; and, p, the probability of success. We denote this Binom(n, p). Copyright 2010 Pearson Education, Inc. Slide 17-7

The Binomial Model (cont.) In n trials, there are n! nck k! n k! ways to have k successes. Read n C k as n choose k. Note: n! = n (n 1) 2 1, and n! is read as n factorial. Copyright 2010 Pearson Education, Inc. Slide 17-8

The Binomial Model (cont.) Binomial probability model for Bernoulli trials: Binom(n,p) n = number of trials p = probability of success q = 1 p = probability of failure X = # of successes in n trials P(X = x) = n C x p x q n x np npq Copyright 2010 Pearson Education, Inc. Slide 17-9

The Normal Model to the Rescue! When dealing with a large number of trials in a Binomial situation, making direct calculations of the probabilities becomes tedious (or outright impossible). Fortunately, the Normal model comes to the rescue Copyright 2010 Pearson Education, Inc. Slide 17-10

The Normal Model to the Rescue (cont.) As long as the Success/Failure Condition holds, we can use the Normal model to approximate Binomial probabilities. Success/failure condition: A Binomial model is approximately Normal if we expect at least 10 successes and 10 failures: np 10 and nq 10 Copyright 2010 Pearson Education, Inc. Slide 17-11

Continuous Random Variables When we use the Normal model to approximate the Binomial model, we are using a continuous random variable to approximate a discrete random variable. So, when we use the Normal model, we no longer calculate the probability that the random variable equals a particular value, but only that it lies between two values. Copyright 2010 Pearson Education, Inc. Slide 17-12

What Can Go Wrong? Be sure you have Bernoulli trials. You need two outcomes per trial, a constant probability of success, and independence. Remember that the 10% Condition provides a reasonable substitute for independence. Don t confuse Geometric and Binomial models. Don t use the Normal approximation with small n. You need at least 10 successes and 10 failures to use the Normal approximation. Copyright 2010 Pearson Education, Inc. Slide 17-13

What have we learned? Bernoulli trials show up in lots of places. Depending on the random variable of interest, we might be dealing with a Geometric model Binomial model Normal model Copyright 2010 Pearson Education, Inc. Slide 17-14

What have we learned? (cont.) Geometric model When we re interested in the number of Bernoulli trials until the next success. Binomial model When we re interested in the number of successes in a certain number of Bernoulli trials. Normal model To approximate a Binomial model when we expect at least 10 successes and 10 failures. Copyright 2010 Pearson Education, Inc. Slide 17-15