Lecture Slides. Elementary Statistics Eleventh Edition. by Mario F. Triola. and the Triola Statistics Series 4.1-1

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

P(A) = Definitions. Overview. P - denotes a probability. A, B, and C - denote specific events. P (A) - Chapter 3 Probability

Chapter 4 Probability

Topic 4 Probability. Terminology. Sample Space and Event

Chapter 4. Probability

Lecture Slides. Elementary Statistics Eleventh Edition. by Mario F. Triola. and the Triola Statistics Series 3.1-1

4-1 BASIC CONCEPTS OF PROBABILITY

STA Module 4 Probability Concepts. Rev.F08 1

Chapter 3 Probability Chapter 3 Probability 3-1 Overview 3-2 Fundamentals 3-3 Addition Rule 3-4 Multiplication Rule: Basics

4.4-Multiplication Rule: Basics

2011 Pearson Education, Inc

Chapter 15. Probability Rules! Copyright 2012, 2008, 2005 Pearson Education, Inc.

Notes Week 2 Chapter 3 Probability WEEK 2 page 1

AMS7: WEEK 2. CLASS 2

The enumeration of all possible outcomes of an experiment is called the sample space, denoted S. E.g.: S={head, tail}

4 Lecture 4 Notes: Introduction to Probability. Probability Rules. Independence and Conditional Probability. Bayes Theorem. Risk and Odds Ratio

Announcements. Lecture 5: Probability. Dangling threads from last week: Mean vs. median. Dangling threads from last week: Sampling bias

Chapter Learning Objectives. Random Experiments Dfiii Definition: Dfiii Definition:

Elements of probability theory

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

Lecture Slides. Section 13-1 Overview. Elementary Statistics Tenth Edition. Chapter 13 Nonparametric Statistics. by Mario F.

Probability Year 10. Terminology

Probability deals with modeling of random phenomena (phenomena or experiments whose outcomes may vary)

Executive Assessment. Executive Assessment Math Review. Section 1.0, Arithmetic, includes the following topics:

Topic 2 Probability. Basic probability Conditional probability and independence Bayes rule Basic reliability

A Event has occurred

BASICS OF PROBABILITY CHAPTER-1 CS6015-LINEAR ALGEBRA AND RANDOM PROCESSES

Probability Year 9. Terminology

3 PROBABILITY TOPICS

MAT Mathematics in Today's World

{ } all possible outcomes of the procedure. There are 8 ways this procedure can happen.

Chapter 15. General Probability Rules /42

Chapter 2.5 Random Variables and Probability The Modern View (cont.)

Topic -2. Probability. Larson & Farber, Elementary Statistics: Picturing the World, 3e 1

Presentation on Theo e ry r y o f P r P o r bab a il i i l t i y

Intermediate Math Circles November 8, 2017 Probability II

Chapter. Probability

Combinatorics and probability

UNIT Explain about the partition of a sampling space theorem?

STAT Chapter 3: Probability

Chapter 14. From Randomness to Probability. Copyright 2012, 2008, 2005 Pearson Education, Inc.

LECTURE 1. 1 Introduction. 1.1 Sample spaces and events

Ch 14 Randomness and Probability

Topic 5 Basics of Probability

Unit 7 Probability M2 13.1,2,4, 5,6

Essential Statistics Chapter 4

I - Probability. What is Probability? the chance of an event occuring. 1classical probability. 2empirical probability. 3subjective probability

9/6/2016. Section 5.1 Probability. Equally Likely Model. The Division Rule: P(A)=#(A)/#(S) Some Popular Randomizers.

Standard & Conditional Probability

Statistics 251: Statistical Methods

Probability- describes the pattern of chance outcomes

Chapter 2: Probability Part 1

7.1 What is it and why should we care?

Chapter 2 PROBABILITY SAMPLE SPACE

Discrete Mathematics and Probability Theory Spring 2016 Rao and Walrand Note 14

If S = {O 1, O 2,, O n }, where O i is the i th elementary outcome, and p i is the probability of the i th elementary outcome, then

Section 4.2 Basic Concepts of Probability

Basic Concepts of Probability

Math 1313 Experiments, Events and Sample Spaces

Term Definition Example Random Phenomena

UNIT 5 ~ Probability: What Are the Chances? 1

STAT 430/510 Probability

Statistics for Engineers Lecture 2

The probability of an event is viewed as a numerical measure of the chance that the event will occur.

Basic Concepts of Probability. Section 3.1 Basic Concepts of Probability. Probability Experiments. Chapter 3 Probability

Chapter 2 Class Notes

Chapter 7 Wednesday, May 26th

Math 243 Section 3.1 Introduction to Probability Lab

Sample Space: Specify all possible outcomes from an experiment. Event: Specify a particular outcome or combination of outcomes.

Lecture notes for probability. Math 124

Lecture 2: Probability

Statistics for Engineers

CIS 2033 Lecture 5, Fall

Fundamentals of Probability CE 311S

Lecture 3. Probability and elements of combinatorics

What is Probability? Probability. Sample Spaces and Events. Simple Event

Discrete Probability. Chemistry & Physics. Medicine

Statistics for Business and Economics

Event A: at least one tail observed A:

Random processes. Lecture 17: Probability, Part 1. Probability. Law of large numbers

Probability (Devore Chapter Two)

Lecture Slides. Elementary Statistics Eleventh Edition. by Mario F. Triola. and the Triola Statistics Series 9.1-1

Business Statistics. Lecture 3: Random Variables and the Normal Distribution

Probability and the Second Law of Thermodynamics

STAT 201 Chapter 5. Probability

Homework (due Wed, Oct 27) Chapter 7: #17, 27, 28 Announcements: Midterm exams keys on web. (For a few hours the answer to MC#1 was incorrect on

Probability 5-4 The Multiplication Rules and Conditional Probability

Discrete Finite Probability Probability 1

Lesson B1 - Probability Distributions.notebook

1 Probability Theory. 1.1 Introduction

Chapter 6: Probability The Study of Randomness

With Question/Answer Animations. Chapter 7

Review Basic Probability Concept

Math 140 Introductory Statistics

Quantitative Methods for Decision Making

1 Preliminaries Sample Space and Events Interpretation of Probability... 13

Probability. Chapter 1 Probability. A Simple Example. Sample Space and Probability. Sample Space and Event. Sample Space (Two Dice) Probability

3.2 Probability Rules

STT When trying to evaluate the likelihood of random events we are using following wording.

F71SM STATISTICAL METHODS

Transcription:

Lecture Slides Elementary Statistics Eleventh Edition and the Triola Statistics Series by Mario F. Triola 4.1-1

4-1 Review and Preview Chapter 4 Probability 4-2 Basic Concepts of Probability 4-3 Addition Rule 4-4 Multiplication Rule: Basics 4-5 Multiplication Rule: Complements and Conditional Probability 4-6 Probabilities Through Simulations 4-7 Counting 4.1-2

Section 4-1 Review and Preview 4.1-3

Review Necessity of sound sampling methods. Common measures of characteristics of data Mean Standard deviation 4.1-4

Preview Rare Event Rule for Inferential Statistics: If, under a given assumption, the probability of a particular observed event is extremely small, we conclude that the assumption is probably not correct. Statisticians use the rare event rule for inferential statistics. 4.1-5

Section 4-2 Basic Concepts of Probability 4.1-6

Key Concept This section presents three approaches to finding the probability of an event. The most important objective of this section is to learn how to interpret probability values. 4.1-7

Part 1 Basics of Probability 4.1-8

Events and Sample Space Event any collection of results or outcomes of a procedure Simple Event an outcome or an event that cannot be further broken down into simpler components Sample Space for a procedure consists of all possible simple events; that is, the sample space consists of all outcomes that cannot be broken down any further 4.1-9

Notation for Probabilities P - denotes a probability. A, B, and C - denote specific events. P(A) - denotes the probability of event A occurring. 4.1-10

Basic Rules for Computing Probability Rule 1: Relative Frequency Approximation of Probability Conduct (or observe) a procedure, and count the number of times event A actually occurs. Based on these actual results, P(A) is approximated as follows: P(A) = # of times A occurred # of times procedure was repeated 4.1-11

Basic Rules for Computing Probability - continued Rule 2: Classical Approach to Probability (Requires Equally Likely Outcomes) Assume that a given procedure has n different simple events and that each of those simple events has an equal chance of occurring. If event A can occur in s of these n ways, then P(A) = s n = number of ways A can occur number of different simple events 4.1-12

Basic Rules for Computing Probability - continued Rule 3: Subjective Probabilities P(A), the probability of event A, is estimated by using knowledge of the relevant circumstances. 4.1-13

Law of Large Numbers As a procedure is repeated again and again, the relative frequency probability of an event tends to approach the actual probability. 4.1-14

Probability Limits Always express a probability as a fraction or decimal number between 0 and 1. The probability of an impossible event is 0. The probability of an event that is certain to occur is 1. For any event A, the probability of A is between 0 and 1 inclusive. That is, 0 P(A) 1. 4.1-15

Possible Values for Probabilities 4.1-16

Complementary Events The complement of event A, denoted by A, consists of all outcomes in which the event A does not occur. 4.1-17

Rounding Off Probabilities When expressing the value of a probability, either give the exact fraction or decimal or round off final decimal results to three significant digits. (Suggestion: When a probability is not a simple fraction such as 2/3 or 5/9, express it as a decimal so that the number can be better understood.) 4.1-18

Part 2 Beyond the Basics of Probability: Odds 4.1-19

Odds The actual odds against event A occurring are the ratio P(A)/P(A), usually expressed in the form of a:b (or a to b ), where a and b are integers having no common factors. The actual odds in favor of event A occurring are the ratio P(A)/P(A), which is the reciprocal of the actual odds against the event. If the odds against A are a:b, then the odds in favor of A are b:a. The payoff odds against event A occurring are the ratio of the net profit (if you win) to the amount bet. payoff odds against event A = (net profit) : (amount bet) 4.1-20

Recap In this section we have discussed: Rare event rule for inferential statistics. Probability rules. Law of large numbers. Complementary events. Rounding off probabilities. Odds. 4.1-21

Section 4-3 Addition Rule 4.1-22

Key Concept This section presents the addition rule as a device for finding probabilities that can be expressed as P(A or B), the probability that either event A occurs or event B occurs (or they both occur) as the single outcome of the procedure. The key word in this section is or. It is the inclusive or, which means either one or the other or both. 4.1-23

Compound Event Compound Event any event combining 2 or more simple events Notation P(A or B) = P (in a single trial, event A occurs or event B occurs or they both occur) 4.1-24

General Rule for a Compound Event When finding the probability that event A occurs or event B occurs, find the total number of ways A can occur and the number of ways B can occur, but find that total in such a way that no outcome is counted more than once. 4.1-25

Compound Event Formal Addition Rule P(A or B) = P(A) + P(B) P(A and B) where P(A and B) denotes the probability that A and B both occur at the same time as an outcome in a trial of a procedure. 4.1-26

Compound Event Intuitive Addition Rule To find P(A or B), find the sum of the number of ways event A can occur and the number of ways event B can occur, adding in such a way that every outcome is counted only once. P(A or B) is equal to that sum, divided by the total number of outcomes in the sample space. 4.1-27

Disjoint or Mutually Exclusive Events A and B are disjoint (or mutually exclusive) if they cannot occur at the same time. (That is, disjoint events do not overlap.) Venn Diagram for Events That Are Not Disjoint Venn Diagram for Disjoint Events 4.1-28

Complementary Events P(A) and P(A) are disjoint It is impossible for an event and its complement to occur at the same time. 4.1-29

Rule of Complementary Events P(A) + P(A) = 1 P(A) = 1 P(A) P(A) = 1 P(A) 4.1-30

Venn Diagram for the Complement of Event A 4.1-31

Recap In this section we have discussed: Compound events. Formal addition rule. Intuitive addition rule. Disjoint events. Complementary events. 4.1-32

Section 4-4 Multiplication Rule: Basics 4.1-33

Key Concept The basic multiplication rule is used for finding P(A and B), the probability that event A occurs in a first trial and event B occurs in a second trial. If the outcome of the first event A somehow affects the probability of the second event B, it is important to adjust the probability of B to reflect the occurrence of event A. 4.1-34

Notation P(A and B) = P(event A occurs in a first trial and event B occurs in a second trial) 4.1-35

Tree Diagrams A tree diagram is a picture of the possible outcomes of a procedure, shown as line segments emanating from one starting point. These diagrams are sometimes helpful in determining the number of possible outcomes in a sample space, if the number of possibilities is not too large. 4.1-36

Tree Diagrams This figure summarizes the possible outcomes for a true/false question followed by a multiple choice question. Note that there are 10 possible combinations. 4.1-37

Conditional Probability Key Point We must adjust the probability of the second event to reflect the outcome of the first event. 4.1-38

Conditional Probability Important Principle The probability for the second event B should take into account the fact that the first event A has already occurred. 4.1-39

Notation for Conditional Probability P(B A) represents the probability of event B occurring after it is assumed that event A has already occurred (read B A as B given A. ) 4.1-40

Dependent and Independent Two events A and B are independent if the occurrence of one does not affect the probability of the occurrence of the other. (Several events are similarly independent if the occurrence of any does not affect the probabilities of the occurrence of the others.) If A and B are not independent, they are said to be dependent. 4.1-41

Dependent Events Two events are dependent if the occurrence of one of them affects the probability of the occurrence of the other, but this does not necessarily mean that one of the events is a cause of the other. 4.1-42

Formal Multiplication Rule P(A and B) = P(A) P(B A) Note that if A and B are independent events, P(B A) is really the same as P(B). 4.1-43

Intuitive Multiplication Rule When finding the probability that event A occurs in one trial and event B occurs in the next trial, multiply the probability of event A by the probability of event B, but be sure that the probability of event B takes into account the previous occurrence of event A. 4.1-44

Applying the Multiplication Rule 4.1-45

Applying the Multiplication Rule 4.1-46

Caution When applying the multiplication rule, always consider whether the events are independent or dependent, and adjust the calculations accordingly. 4.1-47

Multiplication Rule for Several Events In general, the probability of any sequence of independent events is simply the product of their corresponding probabilities. 4.1-48

Treating Dependent Events as Independent Some calculations are cumbersome, but they can be made manageable by using the common practice of treating events as independent when small samples are drawn from large populations. In such cases, it is rare to select the same item twice. 4.1-49

The 5% Guideline for Cumbersome Calculations If a sample size is no more than 5% of the size of the population, treat the selections as being independent (even if the selections are made without replacement, so they are technically dependent). 4.1-50

Principle of Redundancy One design feature contributing to reliability is the use of redundancy, whereby critical components are duplicated so that if one fails, the other will work. For example, single-engine aircraft now have two independent electrical systems so that if one electrical system fails, the other can continue to work so that the engine does not fail. 4.1-51

Summary of Fundamentals In the addition rule, the word or in P(A or B) suggests addition. Add P(A) and P(B), being careful to add in such a way that every outcome is counted only once. In the multiplication rule, the word and in P(A and B) suggests multiplication. Multiply P(A) and P(B), but be sure that the probability of event B takes into account the previous occurrence of event A. 4.1-52

Recap In this section we have discussed: Notation for P(A and B). Tree diagrams. Notation for conditional probability. Independent events. Formal and intuitive multiplication rules. 4.1-53

Section 4-5 Multiplication Rule: Complements and Conditional Probability 4.1-54

Key Concepts Probability of at least one : Find the probability that among several trials, we get at least one of some specified event. Conditional probability: Find the probability of an event when we have additional information that some other event has already occurred. 4.1-55

Complements: The Probability of At Least One At least one is equivalent to one or more. The complement of getting at least one of a particular type is that you get no items of that type. item 4.1-56

Finding the Probability of At Least One To find the probability of at least one of something, calculate the probability of none, then subtract that result from 1. That is, P(at least one) = 1 P(none). 4.1-57

Conditional Probability A conditional probability of an event is a probability obtained with the additional information that some other event has already occurred. P(B A) denotes the conditional probability of event B occurring, given that event A has already occurred, and it can be found by dividing the probability of events A and B both occurring by the probability of event A: P(B A) = P(A and B) P(A) 4.1-58

Intuitive Approach to Conditional Probability The conditional probability of B given A can be found by assuming that event A has occurred, and then calculating the probability that event B will occur. 4.1-59

Confusion of the Inverse To incorrectly believe that P(A B) and P(B A) are the same, or to incorrectly use one value for the other, is often called confusion of the inverse. 4.1-60

Recap In this section we have discussed: Concept of at least one. Conditional probability. Intuitive approach to conditional probability. 4.1-61

Section 4-6 Probabilities Through Simulations 4.1-62

Key Concept In this section we use simulations as an alternative approach to finding probabilities. The advantage to using simulations is that we can overcome much of the difficulty encountered when using the formal rules discussed in the preceding sections. 4.1-63

Simulation A simulation of a procedure is a process that behaves the same way as the procedure, so that similar results are produced. 4.1-64

Simulation Example Gender Selection In a test of the MicroSort method of gender selection developed by the Genetics & IVF Institute, 127 boys were born among 152 babies born to parents who used the YSORT method for trying to have a baby boy. In order to properly evaluate these results, we need to know the probability of getting at least 127 boys among 152 births, assuming that boys and girls are equally likely. Assuming that male and female births are equally likely, describe a simulation that results in the genders of 152 newborn babies. 4.1-65

Solution One approach is simply to flip a fair coin 152 times, with heads representing females and tails representing males. Another approach is to use a calculator or computer to randomly generate 152 numbers that are 0s and 1s, with 0 representing a male and 1 representing a female. The numbers must be generated in such a way that they are equally likely. Here are typical results: 4.1-66

Simulation Examples Solution 1: Flipping a fair coin 100 times where heads = female and tails = male H H T H T T H H H H female female male female male male male female female female Solution 2: Generating 0 s and 1 s with a computer or calculator where 0 = male 1 = female 0 0 1 0 1 1 1 0 0 0 male male female male female female female male male male 4.1-67

Random Numbers In many experiments, random numbers are used in the simulation of naturally occurring events. Below are some ways to generate random numbers. A table of random of digits STATDISK Minitab Excel TI-83/84 Plus calculator 4.1-68

Random Numbers STATDISK Minitab 4.1-69

Random Numbers Excel TI-83/84 Plus calculator 4.1-70

Recap In this section we have discussed: The definition of a simulation. How to create a simulation. Ways to generate random numbers. 4.1-71

Section 4-7 Counting 4.1-72

Key Concept In many probability problems, the big obstacle is finding the total number of outcomes, and this section presents several methods for finding such numbers without directly listing and counting the possibilities. 4.1-73

Fundamental Counting Rule For a sequence of two events in which the first event can occur m ways and the second event can occur n ways, the events together can occur a total of m n ways. 4.1-74

Notation The factorial symbol! denotes the product of decreasing positive whole numbers. For example, 4! 4 3 2 1 24. By special definition, 0! = 1. 4.1-75

Factorial Rule A collection of n different items can be arranged in order n! different ways. (This factorial rule reflects the fact that the first item may be selected in n different ways, the second item may be selected in n 1 ways, and so on.) 4.1-76

Requirements: Permutations Rule (when items are all different) 1. There are n different items available. (This rule does not apply if some of the items are identical to others.) 2. We select r of the n items (without replacement). 3. We consider rearrangements of the same items to be different sequences. (The permutation of ABC is different from CBA and is counted separately.) If the preceding requirements are satisfied, the number of permutations (or sequences) of r items selected from n available items (without replacement) is n P r n! = (n - r)! 4.1-77

Permutations Rule (when some items are identical to others) Requirements: 1. There are n items available, and some items are identical to others. 2. We select all of the n items (without replacement). 3. We consider rearrangements of distinct items to be different sequences. If the preceding requirements are satisfied, and if there are n 1 alike, n 2 alike,... n k alike, the number of permutations (or sequences) of all items selected without replacement is n! n 1!. n 2!........ n k! 4.1-78

Combinations Rule Requirements: 1. There are n different items available. 2. We select r of the n items (without replacement). 3. We consider rearrangements of the same items to be the same. (The combination of ABC is the same as CBA.) If the preceding requirements are satisfied, the number of combinations of r items selected from n different items is nc r = n! (n - r )! r! 4.1-79

Permutations versus Combinations When different orderings of the same items are to be counted separately, we have a permutation problem, but when different orderings are not to be counted separately, we have a combination problem. 4.1-80

Recap In this section we have discussed: The fundamental counting rule. The factorial rule. The permutations rule (when items are all different). The permutations rule (when some items are identical to others). The combinations rule. 4.1-81