Excursions in Modern Mathematics, 7e: 15.2 - 2Copyright © 2010 Pearson Education, Inc. 15 Chances, Probabilities, and Odds 15.1Random Experiments and.

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Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. 15 Chances, Probabilities, and Odds 15.1Random Experiments and Sample Spaces 15.2Counting Outcomes in Sample Spaces 15.3 Permutations and Combinations 15.4Probability Spaces 15.5Equiprobable Spaces 15.6Odds

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. If we toss a coin three times and separately record the outcome of each toss, the sample space is given by S = {HHH, HHT, HTH, HTT, THH, THT, TTH, TTT}. Here we can just count the outcomes and get N = 8. Now let’s look at an expanded version of the same idea and toss a coin 10 times (and record the outcome of each toss). In this case the sample space S is too big to write down, but we can “count” the number of outcomes in S without having to tally them one by one. Here is how we do it. Example 15.7Tossing More Coins

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. Each outcome in S can be described by a string of 10 consecutive letters, where each letter is either H or T. (This is a natural extension of the ideas introduced in Example 15.2.) For example, THHTHTHHTT represents a single outcome in our sample space–the one in which the first toss came up T, the second toss came up H, the third toss came up H, and so on. Example 15.7Tossing More Coins

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. To count all the outcomes, we will argue as follows: There are two choices for the first letter (H or T), two choices for the second letter, two choices for the third letter, and so on down to the tenth letter. The total number of possible strings is found by multiplying the number of choices for each letter. Thus N = 2 10 = Example 15.7Tossing More Coins

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. The rule we used in Example 15.6 is an old friend from Chapter 2–the multiplication rule, and for a formal definition of the multiplication rule the reader is referred to Section 2.4. Informally, the multiplication rule simply says that when something is done in stages, the number of ways it can be done is found by multiplying the number of ways each of the stages can be done. Multiplication Rule

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. Dolores is a young saleswoman planning her next business trip. She is thinking about packing three different pairs of shoes, four skirts, six blouses, and two jackets. If all the items are color coordinated, how many different outfits will she be able to create by combining these items? To answer this question, we must first define what we mean by an “outfit.” Example 15.8The Making of a Wardrobe

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. Let’s assume that an outfit consists of one pair of shoes, one skirt, one blouse, and one jacket. Then to make an outfit Dolores must choose a pair of shoes (three choices), a skirt (four choices), a blouse (six choices), and a jacket (two choices). By the multiplication rule the total number of possible outfits is 3  4  6  2 = 144. Example 15.8The Making of a Wardrobe

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. Once again, Dolores is packing for a business trip. This time, she packs three pairs of shoes, four skirts, three pairs of slacks, six blouses, three turtlenecks, and two jackets. As before, we can assume that she coordinates the colors so that everything goes with everything else. Example 15.9The Making of a Wardrobe: Part 2

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. This time, we will define an outfit as consisting of a pair of shoes, a choice of “lower wear” (either a skirt or a pair of slacks), and a choice of “upper wear” (it could be a blouse or a turtleneck or both), and, finally, she may or may not choose to wear a jacket. How many different such outfits are possible? Example 15.9The Making of a Wardrobe: Part 2

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. This is a more sophisticated variation of Example Our strategy will be to think of an outfit as being put together in stages and to draw a box for each of the stages. We then separately count the number of choices at each stage and enter that number in the corresponding box. The last step is to multiply the numbers in each box, which we do on the next slide. Example 15.9The Making of a Wardrobe: Part 2

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. The final count for the number of different outfits is N = 3  7  27  3 = Example 15.9The Making of a Wardrobe: Part 2

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. Five candidates are running in an election, with the top three vote getters elected (in order) as President, Vice President, and Secretary. We want to know how big the sample space is. Using a box model, we see that this becomes a reasonably easy counting problem on the next slide. Example 15.10Ranking the Candidate in an Election: Part 2

Excursions in Modern Mathematics, 7e: Copyright © 2010 Pearson Education, Inc. Example 15.10Ranking the Candidate in an Election: Part 2