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Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics for Economist Ch.9 Probability 1. 2. 3. 4. 5. 6. 7. 8. 9. 10. Chances, Probabilities Marbles in Boxes: drawing with or without replacement Listing the Ways Venn Diagram & Exclusive Events The Addition Rule Conditional Probabilities The Multiplication Rule Partition & Bayes’ Theorem Independence Exclusiveness & Independence, Addition & Multiplication Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics INDEX STATISTICS 1 Chances, Probabilities 2 Marbles in Boxes : drawing with or without replacement 3 Listing the Ways 4 Venn Diagram & Exclusive Events 5 The Addition Rule Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 2/33 1. Chances, Probabilities STATISTICS Probabilities? Frequentist View The Chances of something gives the percentage of time it is expected to happen, when the basic process is done over and over again, independently and under the same conditions. Subjective View Typically in cases where repeated trial is impossible. Subjective representation of how likely it is. Defined regardless of repetition. Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 3/33 1. Chances, Probabilities STATISTICS Properties of Probability Probabilities are between 0% and 100%. If the probability that an event A will occur is P(A), the probability that the event A will not occur is P(A). “The event A will not occur” is also considered another event, which is called “complementary event AC of A” P( A ) 1 P( A) C Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 4/33 INDEX STATISTICS 1 Chances, Probabilities 2 Marbles in Boxes : drawing with or without replacement 3 Listing the Ways 4 Venn Diagram & Exclusive Events 5 The Addition Rule Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 5/33 STATISTICS 2. Marbles in Boxes : drawing with or without replacement Marbles in Boxes The probability of drawing red marbles from A or B? Box A (red marbles 3, blue marble 2) Box B (red marbles 30, blue marble 20) Number of Red Marbles Total Number of Marbles Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 6/33 STATISTICS 2. Marbles in Boxes : drawing with or without replacement Drawing with or without replacement 1st 1 trial 2 3 Suppose that the outcome of the 1st trial is card 3 2nd trial The outcome of the 2nd trial is depend upon whether drawing with or without replacement 1 2 3 1 drawing WITH replacement 2 Drawing WITHOUT replacement Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 7/33 INDEX STATISTICS 1 Chances, Probabilities 2 Marbles in Boxes : drawing with or without replacement 3 Listing the Ways 4 Venn Diagram & Exclusive Events 5 The Addition Rule Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 8/33 STATISTICS 3. Listing the Ways Possible Ways Throwing a Pair of Dice Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 9/33 3. Listing the Ways STATISTICS Combinations with a total of 9,10 rolled with three dice 9 : (1,2,6), (1,3,5), (1,4,4), (2,5,5), (2,3,4), (3,3,3) 10 : (1,3,6), (1,4,5), (2,2,6), (2,3,5), (2,4,4), (3,3,4) Same in number of combinations → Same in total possible ways? No! Total of 9 # of combs. Total of 10 # of combs. 1,2,6 6 1,3,6 6 1,3,5 6 1,4,5 6 1,4,4 3 2,2,6 3 2,2,5 3 2,3,5 6 2,3,4 6 2,4,4 3 3,3,3 1 3,3,4 3 Total 25 Total 27 Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 10/33 INDEX STATISTICS 1 Chances, Probabilities 2 Marbles in Boxes : drawing with or without replacement 3 Listing the Ways 4 Venn Diagram & Exclusive Events 5 The Addition Rule Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 11/33 4. Venn Diagram & Exclusive Events STATISTICS Venn Diagram Venn Diagram A Venn diagram is a diagram using a rectangle and some inner circles to represent one or more events A B A B Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 12/33 4. Venn Diagram & Exclusive Events STATISTICS Disjoint Events If some two events cannot come together, the two events are called ‘Exclusive Events’ or ‘Mutually Exclusive.’ A 1,3,5 B A 6 5 (a) Exclusive Events B 1 3 2 (b) Not Exclusive Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 13/33 INDEX STATISTICS 1 Chances, Probabilities 2 Marbles in Boxes : drawing with or without replacement 3 Listing the Ways 4 Venn Diagram & Exclusive Events 5 The Addition Rule Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 14/33 STATISTICS 5. The Addition Rule Addition Rule P(A or B): the Probability that at least one event will occur among the two P(A and B): the probability that the two events will come together If they are mutually exclusive, the Probability is 0. Generalized Addition Rule: P(A or B)=P(A) + P(B) - P(A and B) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 15/33 INDEX STATISTICS 6 Conditional Probabilities 7 The Multiplication Rule 8 Partition & Bayes’ Theorem 9 Independence 10 Exclusiveness & Independence, Addition & Multiplication Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 16/33 6. Conditional Probabilities STATISTICS Conditional Probability Ex) A deck of cards is shuffled and the top two cards are put on a table, face down. You win \1,000 if the second card is Q of hearts. a) What is the probability of winning the won? b) You turn over the first card. It is the seven of clubs. Now what is the probability of winning? a) Non-conditional probability Pr(the 2nd card is Q of hearts) ☞ 1/52 b) Conditional probability Pr (2nd card is Q of hearts | 1st card is 7 of clubs) ☞ 1/51 Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 17/33 INDEX STATISTICS 6 Conditional Probabilities 7 The Multiplication Rule 8 Partition & Bayes’ Theorem 9 Independence 10 Exclusiveness & Independence, Addition & Multiplication Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 18/33 7. The Multiplication Rule STATISTICS Multiplication Rule Joint Probability P(A and B), the probability the two will come together Conditional Probability P(A|B), the probability that event A will occur given the occurrence of event B Mmarginal Probability P(A) or P(B), non-conditional probability Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 19/33 7. The Multiplication Rule STATISTICS Multiplication Rule Narrow Meaning: When some two events are mutually independent, the probability that the two will come together is acquired by multiplying each non-conditional probability. P(A and B)=P(A)·P(B) Generalized Multiplication Rule: The probability that both of two events will occur is acquired by multiplying the probability of one event’s occurrence and the conditional probability of another event’s occurrence given the occurrence of the event. P(A and B)=P(A)·P(B|A) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 20/33 INDEX STATISTICS 6 Conditional Probability 7 The Multiplication Rule 8 Partition & Bayes’ Therem 9 Independence 10 Exclusiveness & Independence, Addition & Multiplication Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 21/33 8. Partition & Bayes’ Theorem STATISTICS Concept Partition A division of a set into Collectively Exhaustive and Mutually Exclusive events Ex) when a die is rolled, the event of even numbers and the event of odd numbers make up a partition Counter Ex) Event of odd numbers and Event of 6. Event of odd numbers and Event of numbers larger than 2. Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 22/33 8. Partition & Bayes’ Theorem STATISTICS Partition of Union & Partition of B Partition of Union S AC A = + Partition of B A B AC and B A and B = + Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 23/33 8. Partition & Bayes’ Theorem STATISTICS Conditional Probability Conditional Probability P(A|B) Probability that event A will occur given the occurrence of event B. Relative magnitude of event (A & B) compared with event B the Convex Lens P( A | B) = = = Circle of Right Side + P( A and B) P( A and B) P( A | B) P( B) P( A and B) P( AC and B) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 24/33 STATISTICS 8. Partition & Bayes’ Theorem Tree Diagram B given A A Two routes to event B: collectively exhaustive & mutually exclusive AC P( A B) B given AC P(Above & ) P( A and B) P(Above & ) P(Below & ) P( A and B) P( AC and B) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 25/33 8. Partition & Bayes’ Theorem STATISTICS Bayes Theorem (1) Simple form : if P (B) > 0 P(A|B) P(A and B) P(A and B) P(A)P(B|A) P(B) P(A and B) P(AC and B) P(A)P(B|A) P(AC )P(B|AC ) Q) If one selected the right answer to the multiple choice question having 4 possible answers (event B), The probability that one selected it knowing surely (event A)? Prior Probability : P (A)=1/2 Posterior Probability : P (A|B)=4/5 Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 26/33 8. Partition and Bayes’ Theorem STATISTICS an example of partition Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 27/33 8. Partition and Bayes’ Theorem STATISTICS Bayes’ Theorem (2) Generalized form if P (B) > 0 , Let A1 , A2 , , Am form a partition for S P( A1 and B) P( A1 ) P(B | A1 ) P( A1 | B) P( B) P( A1 ) P(B | A1 ) P ( Am )P(B | Am ) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 28/33 INDEX STATISTICS 6 Conditional Probability 7 The Multiplication Rule 8 Partition & Bayes’ Therem 9 Independence 10 Exclusiveness & Independence, Addition & Multiplication Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 29/33 STATISTICS 9. Independence Independence & Dependence If the PROBABILITY that the other event occur is not changed whether one event occur or not, we call the two events are ‘independent’. Otherwise, we call them ‘dependent’ If event A and event B are independent, P(A|B)=P(A) P(B|A)=P(B) Narrow Meaning of Multiplication Rule : P(A and B) = P(A) P(B) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 30/33 INDEX STATISTICS 6 Conditional Probability 7 The Multiplication Rule 8 Partition & Bayes’ Therem 9 Independence 10 Exclusiveness & Independence, Addition & Multiplication Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 31/33 STATISTICS 10. Exclusiveness & Independence, Addition & Multiplication Mutual Exclusiveness & Mutual Independence Mutual Exclusiveness if one event occurs then the other cannot occur Mutual Independence If the probability that the other event occur is not changed whether one event occur or not Mutually Exclusive events are Mutually Dependent If events A, B are mutually exclusive and event A has occurred, the probability that event B occurs becomes 0 Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 32/33 STATISTICS 10. Exclusiveness & Independence, Addition & Multiplication Addition Rule & Multiplication Rule Addition Rule Regarding the probability that at least one event will occur, Addition rule of narrow meaning is possible only when the events are mutually exclusive. (otherwise, one should subtract the overlapped part) Multiplication Rule Regarding the probability that the two events come together, Multiplication rule of narrow meaning is possible only when the events are mutually independent. (otherwise, one should multiply the marginal probability of one event and the conditional probability of the other event.) Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics Statistics & Econometrics 33/33