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26134 Business Statistics [email protected] Tutorial 7: Probability Key concepts in this tutorial are listed below 1. Construct contingency table 2. Understand Joint events 3. Understand joint probability 4. Understand marginal probability 5. Understand Conditional probability 6. Test of Independence 7. Practically apply the above concepts and calculate required probabilities 1 Quiz 2 in NEXT WEEK!!!! The topics to be tested in Quiz 2 are: THRESHOLD 3: Relating variables and analyzing relationships between variables. The specific topics for this threshold are: 1.) Lecture Topic: Simple Linear Regression 2.) Lecture Topic: Multiple Linear Regression 3.) Lecture Topic: Issues with Regression - Specific topics that will be tested in this lecture are : Use of Dummy Variables in regression and Multicollinearity. THRESHOLD 4: Theoretical foundation of statistical inferenceUnderstanding events and using data to calculate the probability of occurrence of an event. The specific topics for this threshold are: 1.) Lecture Topic: Probability The sample quiz will be uploaded one week prior to the quiz. 2 Probability and Events • Probability (P) is defined as the likelihood (or chance) that an event (A) will occur. • Sample Space: is the set of all possible outcomes of an experiment. • Event: an outcome of an experiment. • An event is composed of one or more elementary events. 3 Complement Events The complement of any event A is the event that A does not occur. Both these cannot occur at the same time. If A denotes the event of rain in Sydney then A’ denotes the event of no rain in Sydney. A’ AA 4 5 6 A={5} A’={1,2,3,4,6} Mutually-Exclusive Events • Occurrence of one event precludes the occurrence of the other event. Event A and event B cannot occur at the same time. P(𝐴∩𝐵)=0 7 • Events A and B are mutually exclusive if when A occurs, B cannot occur and vice versa. Example of mutually exclusive events: A – Observing a 1 on the die roll, B – observing a 3 on the die roll. 8 P(𝐴∩𝐵)=0 Intersection and Union Events • Intersection (joint event) defined as probability of A and B occurring at the same time and is denoted as P(𝐴∩𝐵) • Union is defined as probability of A or B occurring denoted a: P(A U B) = P(A) + P(B) – P(A ∩ B) 9 10 A contingency table is also referred to as the frequency table. Similarly, probability table is also referred to as the relative frequency table. 11 P(D) = 0.58. This is an example of marginal probability. NOTE: Row totals or column totals are referred to as marginal probabilities. NOTE: Mutual exclusive means cannot occur at the same time. 12 Conditional Probability The conditional probability of A given B is the joint probability of A and B divided by the marginal probability of B P(X|Y)=Joint Event/Marginal Event P(X Y) = P(Y) 13 NOTE: the key to recognise questions on conditional probability is the word, given. 14 Independent Events If two events are independent, then their joint probability is equal to their marginal probabilities multiplied by each other. P(X∩Y)=P(X)*P(Y) 15 Summary: Probability 16 Marginal Probability Union Probability Joint Probability Conditional Probability Independent Probability @ Dr. Sonika Singh, BSTATS, UTS U 17 18 19