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Counting Subsets of a Set: Combinations

Counting Subsets of a Set: Combinations. Lecture 31 Section 6.4 Wed, Mar 21, 2007. r -Combinations. An r -combination of a set of n elements is a subset of r of the n elements. The order of the elements does not matter. The 3-combinations of the set { a , b , c , d , e } are

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Counting Subsets of a Set: Combinations

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  1. Counting Subsets of a Set: Combinations Lecture 31 Section 6.4 Wed, Mar 21, 2007

  2. r-Combinations • An r-combination of a set of n elements is a subset of r of the n elements. • The order of the elements does not matter. • The 3-combinations of the set {a, b, c, d, e} are {a, b, c}, {a, b, d}, {a, b, e}, {a, c, d}, {a, c, e}, {a, d, e}, {b, c, d}, {b, c, e}, {b, d, e}, {c, d, e}.

  3. Counting r-Combinations • Theorem: The number of r-combinations of a set of n elements is • Examples: • C(4, 2) = (4  3)/(2  1) = 6. • C(10, 3) = (10  9  8)/(3  2  1) = 120. • C(1000, 2) = (1000  999)/(2  1) = 499500.

  4. Some Useful Facts • C(n, 0) = 1 for all n 0. • C(n, 1) = n for all n 1. • Notice that C(n, r) = C(n, n – r). • For example, • C(100, 99) = C(100, 1) = 100/1 = 100. • Therefore, • C(n, n) = 1 for all n 0. • C(n, n – 1) = n for all n 1.

  5. Another Useful Fact • The TI-83 will calculate C(n, r). • Enter n. • Select MATH > PRB > nCr. • Enter r. • Press ENTER. • The value of C(n, r) appears.

  6. Counting r-Combinations • Proof of the theorem (by induction on n). • Base case: • Let n = 0. Then r = 0 and there is only one 0-combination, the null set. • Also, 0!/(0!0!) = 1. • So the statement is true when n = 0.

  7. Counting r-Combinations • Inductive case: • Suppose that the statement is true when n = k, for some integer k 0. • Consider a set of k + 1 elements. • If r = 0, then there is only one 0-combination, the null set, and

  8. Counting r-Combinations • If r = k + 1, then there is only one k-combination, the entire set, and • So let r be any number between 0 and k + 1 (0 < r < k + 1). • Select an arbitrary element a from the set.

  9. Counting r-Combinations • For each r-combination of the k + 1 elements, a is either a member or not a member. • We will count the r-combinations for which a is a member and then count the r-combinations for which a is not a member.

  10. Counting r-Combinations • Case 1: aisnot a member of the combination: • The r elements come from the remaining k elements. • By the inductive hypothesis, there are such sets.

  11. Counting r-Combinations • Case 2: ais a member of the combination: • The other r – 1 elements in the subset come from the k remaining elements in the set. • By the inductive hypothesis, there are such sets.

  12. Counting r-Combinations • Therefore, the number of r-combinations of k + 1 elements is • A “little algebra” shows that this equals

  13. Counting r-Combinations • Therefore, the statement is true when n = k + 1. • Thus, the statement is true for all n 1.

  14. Example: Counting r-Combinations • Recently I needed to find the distribution of averages of 10 numbers selected at random from a set of 19 numbers. • I wrote a C++ program to use brute force to calculate the distribution. • It is much easier to write the program if the sampling is done with replacement.

  15. Example: Counting r-Combinations • Sampling with replacement, there are 1910 possible samples. 1910 = 6131066257801. • The program took 21.2 seconds to compute the distribution using 7 instead of 10 numbers. • How long would it take using 10 numbers?

  16. Example: Counting r-Combinations • How many possibilities are there if we sample without replacement? • How long would it take to calculate the distribution?

  17. Example: Counting r-Combinations • How can that be determined? • Can a computer program make the determination by brute force (exhaustive checking) within a reasonable amount of time? • There are C(48, 4) = 194,580 possible choices. • A computer can do the math really fast, in say one second.

  18. Lotto South • In Lotto South, a player chooses 6 numbers from 1 to 49. • Then the state chooses at random 6 numbers from 1 to 49. • The player wins according to how many of his numbers match the ones the state chooses. • See the Lotto South web page.

  19. Lotto South • There are C(49, 6) = 13,983,816 possible choices. • Match all 6 numbers • There is only 1 winning combination. • Probability of winning is 1/13983816 = 0.00000007151.

  20. Lotto South • Match 5 of 6 numbers • There are 6 winning numbers and 43 losing numbers. • Player chooses 5 winning numbers and 1 losing numbers. • Number of ways is C(6, 5) C(43, 1) = 258. • Probability is 0.00001845.

  21. Lotto South • Match 4 of 6 numbers • Player chooses 4 winning numbers and 2 losing numbers. • Number of ways is C(6, 4) C(43, 2) = 13545. • Probability is 0.0009686.

  22. Lotto South • Match 3 of 6 numbers • Player chooses 3 winning numbers and 3 losing numbers. • Number of ways is C(6, 3) C(43, 3) = 246820. • Probability is 0.01765.

  23. Lotto South • Match 2 of 6 numbers • Player chooses 2 winning numbers and 4 losing numbers. • Number of ways is C(6, 2) C(43, 4) = 1851150. • Probability is 0.1324.

  24. Lotto South • Match 1 of 6 numbers • Player chooses 1 winning numbers and 5 losing numbers. • Number of ways is C(6, 1) C(43, 5) = 3011652. • Probability is 0.4130.

  25. Lotto South • Match 0 of 6 numbers • Player chooses 6 losing numbers. • Number of ways is C(43, 6) = 2760681. • Probability is 0.4360.

  26. Lotto South • Note also that the sum of these integers is 13983816. • Note also that the lottery pays out a prize only if the player matches 3 or more numbers. • Match 3 – win $5. • Match 4 – win $75. • Match 5 – win $1000. • Match 6 – win millions.

  27. Lotto South • Given that a lottery player wins a prize, what is the probability that he won the $5 prize? • P(he won $5, given that he won) = P(match 3)/P(match 3, 4, 5, or 6) = 0.01765/0.01864 = 0.9469.

  28. Example • Theorem (The Vandermonde convolution): For all integers n 0 and for all integers r with 0 rn, • Proof: See p. 362, Sec. 6.6, Ex. 18.

  29. Another Lottery • In the previous lottery, the probability of winning a cash prize is 0.018637545. • Suppose that the prize for matching 2 numbers is… another lottery ticket! • Then what is the probability of winning a cash prize?

  30. Lotto South • What is the average prize value of a ticket? • Multiply each prize value by its probability and then add up the products: • $10,000,000  0.00000007151 = 0.7151 • $1000  0.00001845 = 0.0185 • $75  0.0009686 = 0.0726 • $5  0.01765 = 0.0883 • $0  0.9814 = 0.0000

  31. Lotto South • The total is $0.8945, or 89.45 cents (assuming that the big prize is ten million dollars). • A ticket costs $1.00. • How large must the grand prize be to make the average value of a ticket more than $1.00?

  32. Another Lottery • What is the average prize value if matching 2 numbers wins another lottery ticket?

  33. Permutations of Sets with Repeated Elements • Theorem: Suppose a set contains n1 indistinguishable elements of one type, n2 indistinguishable elements of another type, and so on, through k types, where n1 + n2 + … + nk = n. Then the number of (distinguishable) permutations of the n elements is n!/(n1!n2!…nk!).

  34. Proof of Theorem • Proof: • Rather than consider permutations per se, consider the choices of where to put the different types of element. • There are C(n, n1) choices of where to place the elements of the first type.

  35. Proof of Theorem • Proof: • Then there are C(n – n1, n2) choices of where to place the elements of the second type. • Then there are C(n – n1 – n2, n3) choices of where to place the elements of the third type. • And so on.

  36. Proof, continued • Therefore, the total number of choices, and hence permutations, is C(n, n1) C(n – n1, n2) C(n – n1 – n2, n3) … C(n – n1 – n2 – … – nk – 1, nk) = …(some algebra)… = n!/(n1!n2!…nk!).

  37. Example • How many different numbers can be formed by permuting the digits of the number 444556? • 6!/(3!2!1!) = 720/(6  2  1) = 60.

  38. Example • How many permutations are there of the letters in the word MISSISSIPPI? • How many for VIRGINIA? • How many for INDIVISIBILITY?

  39. Poker Hands • Two of a kind. • Two pairs. • Three of a kind. • Straight. • Flush. • Full house. • Four of a kind. • Straight flush. • Royal flush.

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