1 / 22

Chapter 7 Probability I Three Views of Probability A. Subjective-Personalistic View

Chapter 7 Probability I Three Views of Probability A. Subjective-Personalistic View 1. Probability of event A , p ( A ), is a measure of the strength of one’s expectation that event A will or will not occur. B. Classical or Logical View

Télécharger la présentation

Chapter 7 Probability I Three Views of Probability A. Subjective-Personalistic View

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Chapter 7 Probability I Three Views of Probability A. Subjective-Personalistic View 1. Probability of event A, p(A), is a measure of the strength of one’s expectation that event A will or will not occur.

  2. B. Classical or Logical View 1. Probability of event A is the number of events favoring A, nA, divided by the total number of equally likely events, nS, p(A) = nA/nS 2. Probability is based on a logical analysis. 3. p(A) is always a number between 0 and 1 because nA ≤ nS.

  3. C. Empirical Relative-Frequency View 1. Probability of event A is anumber approached by the ratio nA/n as the total number of observations, n, approaches infinity. 2. If a head is obtained 12 times in 20 tosses, the best estimate of the probability of heads is nA/n = 12/20 = .6. If a head is obtained 120 times in 200 tosses, our confidence in the estimate 120/200 = .6 is even greater.

  4. II Basic Concepts A. Experiment B. Compound and Simple Events 1. Compound events in tossing a die Event A—observe an odd number  Event B—observe an even number  Event C—observe a number less than 4

  5. 2. Simple events in tossing a die Event E1—observe a 1 Event E2—observe a 2 Event E3—observe a 3 Event E4—observe a 4 Event E5—observe a 5 Event E6—observe a 6

  6. III Graphing Simple and Compound Events A. Euler Diagram 1. Sample space, S, with nS sample points, Ei

  7. B. Formal Properties of Probability 1. 0 ≤ p(Ei) ≤ 1 for all i 3. p(S) = 1 IV Probability of Combined Events A. Union of Events A and B: Set of Elements that Belongs to A or B or to Both A and B B. Intersection of Events A and B: Set of Elements that Belongs to Both A and B

  8. V Addition Rule of Probability A. p(AorC) = p(A) + p(C) – p(AandC) 1. p(AorC) = 3/6 + 3/6 –2/6 = 2/3

  9. B. Addition Rule of Probability for Mutually Exclusive Events where p(AandB) = 0 1. p(AorB) = p(A) + p(B) 2. p(AorB) = 3/6 + 3/6 = 1 3. Collectively exhaustive events: probability of union equals 1

  10. VI Multiplication Rule of Probability A. Conditional Probability 1. p(A | C) = p(A and C)/p(C) 2. p(C | A) = p(A and C)/p(A)

  11. 3. Example of conditional probability for events A and C.

  12. B. Multiplication Rule of Probability 1. p(A and C) = p(A) p(C | A) = p(C) p(A | C) 2. p(A and C) = (3/6)(2/3) = (3/6) (2/3) = 1/3

  13. C. Statistical Independence 1. Events A and C are independent if p(A | C) = p(A) 2. Events A and C are not independent because p(A | C) ≠ p(A) 2/3 ≠ 3/6

  14. 3. Events A (obtain a H on the toss of a coin) and B (obtain a 5 on the roll a die) are statistically independent because p(B|A) = p(B).

  15. D. Multiplication Rule for Statistically Independent Events where p(B|A) = p(B) 1. p(A and B) = p(A) p(B) 2. p(A and B) = (6/12)(2/12) = 1/12

  16. VII Counting Simple Events A. Fundamental Counting Rule 1. If an event can occur in n1 ways and a second event in n2 ways and each ofthe first event’s n1 ways can be followed by any of the second’s n2 ways, then the number of ways thatevent 1 followed by event 2 can occur is n1 ×n2.

  17. 2. Rolling a die (event 1) and tossing a coin (event 2) n1 n2 = (6)(2) = 12 3. k events, say rolling k = 3 dice n1 n2, . . . , nk = (6)(6)(6) = 216 B. Permutation of n Objects Taken n at a Time (nPn) 1. n factorial, n! =n(n– 1)(n– 2) . . . (1) 2. nPn = n! =n(n– 1)(n– 2) . . . (1)

  18. 3. Consider n objects and a box with n compartments − − 4. The first compartment can be filled with any of the n objects, the second with any of n – 1 remaining objects, and the nth compartment with the one remaining object. 5. According to the fundamental counting rule nPn = n(n– 1)(n– 2) . . . (1)

  19. 6. For n = 5 objects 5P5 = (5)(4)(3)(2)(1) = 120 C. Permutation of n Objects Taken r at a Time (nPr) 1. Consider n = 5 objects and a box with r = 3 compartments − − −

  20. 2. The number of ways that n = 5 objects can be placed in r = 3 ordered compartments is given by 3. Alternative formula

  21. D. Combination of n Objects Taken r at a Time (nCr) 1. nCr ignores the order of the objects by dividing nPr by the number of ways that r elements can be arranged which is r!.

  22. 2. The number of ways that n = 5 objects can be placed in r = 3 compartments ignoring the order of the objects is given by

More Related