To find: The ranks for the attractiveness ratings of males by females who participated in a speed dating
Answer to Problem 1CQQ
The ranks for the attractiveness ratings of males by females who participated in a speed dating event are 1, 3, 3, 5, and 3.
Explanation of Solution
Given info:
The data shows that the attractiveness ratings of males by females who participated in a speed dating event.
Calculation:
The ranks are calculated as follows:
Rating | Rank |
5 | 1 |
7 |
|
7 |
|
8 | 5 |
7 |
|
The ranks are given based on the order of rating. The lower ratings have given higher ranks. For the ties, the ranks are given by taking the average of ranks of the ties.
Thus, the ranks for the attractiveness ratings of males by females who participated in a speed dating event are 1, 3, 3, 5, and 3.
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Chapter 13 Solutions
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