McGraw-Hill/IrwinCopyright © 2009 by The McGraw-Hill Companies, Inc. All Rights Reserved. Chapter 4 and 5 Probability and Discrete Random Variables.

Slides:



Advertisements
Similar presentations
Introduction to Probability and Statistics Chapter 5 Discrete Distributions.
Advertisements

Chapter 5 Some Important Discrete Probability Distributions
Chapter 5 Discrete Random Variables and Probability Distributions
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc.. Chap 5-1 Chapter 5 Some Important Discrete Probability Distributions Basic Business Statistics.
Note 6 of 5E Statistics with Economics and Business Applications Chapter 4 Useful Discrete Probability Distributions Binomial, Poisson and Hypergeometric.
Chapter 4 Probability and Probability Distributions
© 2002 Prentice-Hall, Inc.Chap 4-1 Statistics for Managers Using Microsoft Excel (3 rd Edition) Chapter 4 Basic Probability and Discrete Probability Distributions.
ฟังก์ชั่นการแจกแจงความน่าจะเป็น แบบไม่ต่อเนื่อง Discrete Probability Distributions.
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 5-1 Chapter 5 Some Important Discrete Probability Distributions Statistics.
HAWKES LEARNING SYSTEMS math courseware specialists Copyright © 2010 by Hawkes Learning Systems/Quant Systems, Inc. All rights reserved. Chapter 7 Probability.
1 Set #3: Discrete Probability Functions Define: Random Variable – numerical measure of the outcome of a probability experiment Value determined by chance.
Chapter 4 Discrete Random Variables and Probability Distributions
Business Statistics: A Decision-Making Approach, 6e © 2005 Prentice-Hall, Inc. Chap 4-1 Introduction to Statistics Chapter 5 Random Variables.
Probability Distributions
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 5-1 Chapter 5 Some Important Discrete Probability Distributions Statistics.
Discrete Probability Distributions
Statistics Alan D. Smith.
Irwin/McGraw-Hill © The McGraw-Hill Companies, Inc., 2000 LIND MASON MARCHAL 1-1 Chapter Five Discrete Probability Distributions GOALS When you have completed.
McGraw-Hill Ryerson Copyright © 2011 McGraw-Hill Ryerson Limited. Adapted by Peter Au, George Brown College.
Chapter 4 Probability Copyright © 2014 by The McGraw-Hill Companies, Inc. All rights reserved.McGraw-Hill/Irwin.
Problem A newly married couple plans to have four children and would like to have three girls and a boy. What are the chances (probability) their desire.
McGraw-Hill/Irwin Copyright © 2007 by The McGraw-Hill Companies, Inc. All rights reserved. Discrete Random Variables Chapter 4.
1 CY1B2 Statistics Aims: To introduce basic statistics. Outcomes: To understand some fundamental concepts in statistics, and be able to apply some probability.
6- 1 Chapter Six McGraw-Hill/Irwin © 2005 The McGraw-Hill Companies, Inc., All Rights Reserved.
Chap 5-1 Copyright ©2013 Pearson Education, Inc. publishing as Prentice Hall Chapter 5 Discrete Probability Distributions Business Statistics: A First.
Introduction Discrete random variables take on only a finite or countable number of values. Three discrete probability distributions serve as models for.
Theory of Probability Statistics for Business and Economics.
Chapter 5 Discrete Random Variables Statistics for Business 1.
Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Chapter 4 Probability.
Introduction to Probability and Statistics Thirteenth Edition Chapter 5 Several Useful Discrete Distributions.
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc.. Chap 5-1 Chapter 5 Some Important Discrete Probability Distributions Basic Business Statistics.
Random Variables. A random variable X is a real valued function defined on the sample space, X : S  R. The set { s  S : X ( s )  [ a, b ] is an event}.
BINOMIALDISTRIBUTION AND ITS APPLICATION. Binomial Distribution  The binomial probability density function –f(x) = n C x p x q n-x for x=0,1,2,3…,n for.
Binomial Experiment A binomial experiment (also known as a Bernoulli trial) is a statistical experiment that has the following properties:
Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Chapter 5 Discrete Random Variables.
McGraw-Hill/IrwinCopyright © 2009 by The McGraw-Hill Companies, Inc. All Rights Reserved. Chapter 5 Discrete Random Variables.
King Saud University Women Students
Probability Distributions, Discrete Random Variables
Probability Theory Modelling random phenomena. Permutations the number of ways that you can order n objects is: n! = n(n-1)(n-2)(n-3)…(3)(2)(1) Definition:
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.
Chapter 5 Discrete Random Variables Probability Distributions
Lecture 7 Dustin Lueker.  Experiment ◦ Any activity from which an outcome, measurement, or other such result is obtained  Random (or Chance) Experiment.
Welcome to MM305 Unit 3 Seminar Prof Greg Probability Concepts and Applications.
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Chapter 5 Discrete Random Variables.
Business Statistics, A First Course (4e) © 2006 Prentice-Hall, Inc. Chap 5-1 Chapter 5 Some Important Discrete Probability Distributions Business Statistics,
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Chapter 4 Probability.
Copyright (C) 2002 Houghton Mifflin Company. All rights reserved. 1 Understandable Statistics Seventh Edition By Brase and Brase Prepared by: Lynn Smith.
Chapter5 Statistical and probabilistic concepts, Implementation to Insurance Subjects of the Unit 1.Counting 2.Probability concepts 3.Random Variables.
Chapter Five The Binomial Probability Distribution and Related Topics
Chapter Six McGraw-Hill/Irwin
Probability Distributions
Discrete Random Variables
Discrete Probability Distributions
Discrete Random Variables
Welcome to MM305 Unit 3 Seminar Dr
Chapter 3 Probability.
Business Statistics Topic 4
Discrete Random Variables
ENGR 201: Statistics for Engineers
Discrete Probability Distributions
STA 291 Spring 2008 Lecture 7 Dustin Lueker.
Chapter 5 Some Important Discrete Probability Distributions
Introduction to Probability and Statistics
Probability distributions
Probability Key Questions
Lecture 11: Binomial and Poisson Distributions
Introduction to Probability and Statistics
Elementary Statistics
Discrete Probability Distributions
Presentation transcript:

McGraw-Hill/IrwinCopyright © 2009 by The McGraw-Hill Companies, Inc. All Rights Reserved. Chapter 4 and 5 Probability and Discrete Random Variables

4-2 The Concept of Probability An experiment is any process of observation with an uncertain outcome The possible outcomes for an experiment are called the experimental outcomes. The set of all possible outcomes is called the sample space of an experiment. S=(1, 2, 3, 4, 5, 6) Probability is a measure of the chance that an experimental outcome will occur when an experiment is carried out

4-3 Probability If E is an experimental outcome, then P(E) denotes the probability that E will occur and: Conditions 1.0  P(E)  1 such that: If E can never occur, then P(E) = 0 If E is certain to occur, then P(E) = 1 2.The probabilities of all the experimental outcomes must sum to 1

4-4 Complement The complement (Ā) of an event A is the set of all sample space outcomes not in A P(Ā) = 1 – P(A)

4-5 Mutually Exclusive A and B are mutually exclusive if they have no sample space outcomes in common In other words: P(A∩B) = 0

4-6 Discrete Random Variables 5.1 Two Types of Random Variables 5.2 Discrete Probability Distributions 5.3 The Binomial Distribution 5.4The Poisson Distribution

4-7 Two Types of Random Variables Random variable: a variable that assumes numerical values that are determined by the outcome of an experiment –Discrete –Continuous Discrete random variable: Possible values can be counted or listed; doesn’t take values on an interval of the real line. –The number of defective units in a batch of 20 –Toss a coin. Let x=1 if we have a head, x=0 if we have a tail

4-8 Random Variables Continued Continuous random variable: May assume any numerical value in one or more intervals –The waiting time for a credit card authorization –The interest rate charged on a business loan

4-9 Discrete Probability Distributions The probability distribution of a discrete random variable is a table, graph or formula that gives the probability associated with each possible value that the variable can assume Notation: Denote the values of the random variable by x and the value’s associated probability by p(x)

4-10 Discrete Probability Distribution Properties 1.For any value x of the random variable, 1  p(x)  0 2.The probabilities of all the events in the sample space must sum to 1, that is…

4-11 Example 5.3 Continued p(x = 2)= 0.5 p(x <2 )= =0.23 p(X ≥ 3)= =0.27 Number of Radios Sold at Sound City in a Week Radios, x Probability, p(x) 0p(0) = p(1) = p(2) = p(3) = p(4) = p(5) =

4-12 Example 5.3 Continued What is the chance that two radios will be sold in a week? –p(x = 2) = 0.50

4-13 Example 5.3 Continued What is the chance that fewer than 2 radios will be sold in a week? –p(x < 2)= p(x = 0 or x = 1) = p(x = 0) + p(x = 1) = = 0.23 What is the chance that three or more radios will be sold in a week? –p(x ≥ 3)= p(x = 3, 4, or 5) = p(x = 3) + p(x = 4) + p(x = 5) = = 0.27 Using the addition rule for the mutually exclusive values of the random variable.

4-14 Expected Value of a Discrete Random Variable The mean or expected value of a discrete random variable X is:  is the value expected to occur in the long run and on average

4-15 Example 5.3: Number of Radios Sold at Sound City in a Week How many radios should be expected to be sold in a week? –Calculate the expected value of the number of radios sold, µ X On average, expect to sell 2.1 radios per week Radios, x Probability, p(x) x p(x) 0p(0) =  0.03 = p(1) =  0.20 = p(2) =  0.50 = p(3) =  0.20 = p(4) =  0.05 = p(5) =  0.02 =

4-16 Variance The variance is the average of the squared deviations of the the random variable from the expected value The variance of a discrete random variable is:

4-17 Standard Deviation The standard deviation is the square root of the variance The variance and standard deviation measure the spread of the values of the random variable from their expected value

4-18 Example 5.7: Number of Radios Sold at Sound City in a Week Radios, xProbability, p(x) (x -  X ) 2 p(x) 0p(0) = 0.03(0 – 2.1) 2 (0.03) = p(1) = 0.20(1 – 2.1) 2 (0.20) = p(2) = 0.50(2 – 2.1) 2 (0.50) = p(3) = 0.20(3 – 2.1) 2 (0.20) = p(4) = 0.05(4 – 2.1) 2 (0.05) = p(5) = 0.02(5 – 2.1) 2 (0.02) =

4-19 Example 5.7 Continued Variance equals Standard deviation is the square root of the variance Standard deviation equals

4-20 Calculation the mean and variance Roll a die. Suppose all outcomes are equally possible.

4-21 The Binomial Distribution The binomial experiment… 1.Experiment consists of n identical trials 2.Each trial results in either “success” or “failure” 3.Probability of success, p, is constant from trial to trial –The probability of failure, q, is 1 – p 4.Trials are independent If x is the total number of successes in n trials of a binomial experiment, then x is a binomial random variable

4-22 Binomial Distribution Continued For a binomial random variable x, the probability of x successes in n trials is given by the binomial distribution: –n! is read as “n factorial” and n! = n × (n-1) × (n-2) ×... × 1 –0! =1 –Not defined for negative numbers or fractions

4-23 Mean and Variance of a Binomial Random Variable If x is a binomial random variable with parameters n and p (so q = 1 – p), then –Mean  = np –Variance  2 x = npq –Standard deviation  x = square root npq

4-24 Example 5.10: Incidence of Nausea after Treatment Let x be the number of Tails you have after tossing a unfair coin ten times. Assume the probability to get a head is 0.6. Find the probability that you get 5 Tails. Given: n = 10; How to define ‘success’ for tossing coin for this problem? Define tail as success p =0.4; P(x = 2)=0.1209; n=10, What are the mean of x, 10*0.4=4 variance of x, 10*0.4*0.6=2.4, standard deviation of x? Sqrt(2.4)=1.549