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Consider the following combinatorial identity:
a. Present a combinatorial argument for this identity by considering a set of n people and determining, in two ways, the number of possible selections of a committee of any size and a chairperson for the committee.
Hint:
i. How many possible selections are there of a committee of size k and its chairperson?
ii. How many possible selections are there of a chairperson and the other committee members?
b. Verify the following identity for
For a combinatorial proof of the preceding, consider a set of n people and argue that both sides of the identity represent the number of different selections of a committee, its chairperson, and its secretary (possibly the same as the chairperson).
Hint:
- How many different selections result in the committee containing exactly k people?
- How many different selections are there in which the chairperson and the secretary are the same?
- How many different selections result in the chairperson and the secretary being different?
c. Now argue that
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Chapter 1 Solutions
EBK FIRST COURSE IN PROBABILITY, A
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