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Chapter 5 A Survey of Probability Concepts Our Objectives Define probability. Describe the classical, empirical, and subjective approaches to probability. Understand the terms experiment, event, and outcome. Define the terms conditional probability and joint probability. Our Objectives (cont’d) Calculate probabilities using the rules of addition and rules of multiplication. Use a tree diagram to organize and compute probabilities. Probability A value between zero and one, inclusive, describing the relative possibility (chance or likelihood) an event will occur. The probability of 1 represents something that is certain to happen; the probability of 0 represents something that cannot happen. Experiment in Statistics A process that leads to the occurrence of one and only one of several possible observations. Outcome in Statistics A particular result of an experiment. Event in Statistics A collection of one or more outcomes of an experiment. Examples Experiment: roll a die. An outcome: a 6. Event: observe a number greater than 3. Approaches to Assigning Probabilities Objective Probability Classical Probability Empirical Probability Subjective Probability Classical Probability Based on the assumption that the outcomes of an experiment are equally likely. Probability of an event= Number of favorable outcomes / Total number of possible outcomes. Example We roll a die. What is the probability of the event “an even # appears face up”? Possible outcomes are:1,2,3,4,5,6.(6) Favorable outcomes are:2,4,6.(3) Probability of an even number=3/6 =.5 Sum of Classical Probabilities If a set of events is mutually exclusive and collectively exhaustive, then the sum of the probabilities is 1. Mutually exclusive: occurrence of one event means that none of the other events can occur at the same time. Collectively exhaustive: at least one of the events must occur when an experiment is conducted. Empirical Probability Based on relative frequency. Probability of an event= Number of times event occurred in the past / Total number of observations Example What is the probability of a future space shuttle mission being successful, given that 2 out of the last 113 missions ended with a disaster? Probability of a successful mission= Number of successful flights / Total number of flights. P(A)= 111 / 113= .98 Subjective Probability The likelihood of a particular event happening that is assigned by an individual based on whatever information is available. There is little or no past experience or information on which to base a probability. Rules for Computing Probabilities Rules of Addition Special rule of addition: P(A or B)=P(A) + P(B) (the events must be mutually exclusive) Example Weight Event Underweight A 100 .025 Satisfactory B 3,600 .900 Overweight C 300 .075 4,000 1.000 Total # of Packages Probability of Occurrence What is the probability that a particular package will be either underweight or overweight? Example (cont’d) The outcome underweight is event A. The outcome overweight is event C. P(A or C)= P(A) + P(C) = .025 + .075 = .10 Venn Diagram Graphically portrays the outcome of an experiment. Event A Event B Event C Complement Rule P(A) + P(~A)= 1 Or P(A)= 1 – P(~A): complement rule Event A ~A Example Use complement rule to show probability of a satisfactory bag. Probability of unsatisfactory bag is P(A or C)= P(A) + P(C)= .100 Probability of satisfactory bag is P(B)= 1 – [P(A) + P(C)]= 1 – .100= .900 C A .025 ~(A or C) .900 .075 General Rule of Addition Used when outcomes of experiment are not mutually exclusive. P(A or B)= P(A) + P(B) – P(A and B) A B A and B Joint Probability of A and B Example What is the probability of a card chosen at random from a deck of cards will be either a king or a heart? King: P(A)= 4/52 Heart: P(B) = 13/52 King of Hearts: P(A and B)= 1/52 P(A or B)= P(A) + P(B) – P(A and B) = 4/52 + 13/52 – 1/52 = .3077 Rules of Multiplication Used to calculate probability of two events happening. Special rule : Used when 2 events are independent (occurrence of one has no effect on probability of occurrence of second). P(A and B)= P(A)P(B) Rules of Multiplication (cont’d) A survey of AAA revealed 60% of members made airline reservations last year. Two members are selected at random. What is the probability both made reservations last year? 1st member making reservation: P(R1)=.60 2nd member making reservation: P(R2)=.60 P(R1 and R2)=P(R1)P(R2)=(.60)(.60)=.36 Rules of Multiplication (cont’d) If 2 events are dependent we use the general rule of multiplication. Conditional probability: the probability of a particular event occurring, given that another event has occurred. General Rule of Multiplication For 2 events, A and B, the joint probability that both will occur is found by multiplying the probability event A will occur, by the conditional probability of event B occurring, given that A has occurred. P(A and B)= P(A)P(B|A) Example We have a box with 10 rolls of film, of which 3 are defective. What is the probability of getting a defective roll the first time we draw, followed by a defective roll the second time we draw (assuming there are no replacements)? 1st film being defective: P(D1)=3/10 (3 out of 10 are defective) 2nd film being defective: P(D2|D1)= 2/9 (now 2 out of 9 are defective) P(D1 and D2)= P(D1)P(D2|D1)=(3/10)(2/9)=6/90=.07 Contingency Tables A table used to classify sample observations according to 2 or more identifiable characteristics. Is a cross tabulation that simultaneously summarizes 2 or more variables of interest and their relationship. Example of Contingency Table ATM Male withdrawals per week 0 20 Female Total 40 60 1 40 30 70 2 or more 10 10 20 Total 70 80 150 Example-Contingency Table Application Loyalty Remain, A Not Remain, ~A Total B1 10 25 35 B2 30 15 45 B3 5 10 15 B4 75 30 105 Total 120 80 200 A sample of 200 executives were surveyed about their loyalty to the company. They also indicated their years of service with the company, B1 being <1year, B2 being 1-5 years, B3 6-10 years, and B4 >10 years. What is the probability of randomly selecting an executive who would remain or has less than 1 year of service? Example (cont’d) Event A1: an executive selected at random will remain with the company. P(A1)= 120/200=.60 (120 out of 200 would remain) Event B1: an executive selected at random has <1 year of service. P(B1)= 35/200=.175 P(A1 and B1)=10/200=.05 P(A1 or B1)= P(A1)+P(B1)-P(A1 and B1) = .60 + .175 - .05 = .725 Tree Diagram A graph that is helpful in organizing calculations involving several stages. The branches of a tree diagram are weighted by probabilities. Homework 12th edition: 48,49,50 (pg.171), 52,54,55 (pg.172), 67 (pg.174). 13th edition: 48, 49, 50, 52 (pg.172), 54,55 (pg.173), 66 (pg.174).