Not all roles available for this page.
Sign in to view assessments and invite other educators
Sign in using your existing Kendall Hunt account. If you don’t have one, create an educator account.
The purpose of this Warm-up is for students to begin to see that different samples are more or less representative of the population from which they are drawn. Students are asked to look at a dot plot and reason about the context of the sample by matching it to their expectations about what the population should be.
Arrange students in groups of 2. Give students 1 minute of quiet think time, then 1 minute to discuss the things they notice with their partner. Follow with a whole-class discussion.
A survey was taken at a movie theater to estimate the average age of moviegoers.
Here is a dot plot showing the ages of the first 20 people surveyed.
The purpose of the discussion is for students to express their expectations for who would be at the movie theater and whether this group represents that expectation.
Ask several students to report any questions or assumptions they have about the information provided. If possible, display the dot plot so that students can refer to it while giving their answers.
In this activity, students learn that often the best we can do to select a representative sample is to avoid sampling methods that will be inherently biased one way or another. A randomly selected sample is not guaranteed to be representative of the population, but other methods are often biased and thus more likely to produce samples that are not representative of the population.
Arrange students in groups of 2. Give students 5 minutes of partner work time, and then follow with a whole-class discussion.
Take turns with your partner reading each option aloud. For each situation, discuss:
Lin is running in an election to be president of the seventh grade. She wants to predict her chances of winning. She has the following ideas for surveying a sample of the students who will be voting:
Ask everyone on her basketball team who they are voting for.
Ask every third girl waiting in the lunch line who they are voting for.
Ask the first 15 students to arrive at school one morning who they are voting for.
A nutritionist wants to collect data on how much caffeine the average American drinks per day. She has the following ideas for how she could obtain a sample:
Ask the first 20 adults who arrive at a grocery store after 10:00 a.m. about the average amount of caffeine they consume each day.
Every 30 minutes, ask the first adult who comes into a coffee shop about the average amount of caffeine they consume each day.
The purpose of the discussion is for students to understand that some methods of sampling are better than others. Although there may be no way to guarantee that a sample is representative of the population, we can certainly avoid methods that will definitely result in some groups being over- or under-represented.
Poll the class on which of the given methods is best for each situation. Record the answers for all to see.
Select several students to explain benefits and drawbacks of each of the sampling methods. After each method has been analyzed for a situation, ask if students have ideas for better ways to get a representative sample for the situation.
Ask students, “What are some important things to consider when getting a sample?” (Is there a group that this method will show preference for? Is there a group that will automatically be left out of my sample based on the method? If there are groups I didn’t even think about, does my method have a way of reaching them?)
Explain that people often have biases that may lead them to over- or under-represent some groups in their samples, whether the biases are obvious or not. For example, to find which candidate might be leading in a political race, we might try calling people to survey their preference. This could make our sample biased towards people who are willing to answer their phones when an unknown number calls. Due to (sometimes hidden) biases, the best method for selecting samples is to remove as much of the personal selection as possible.
In this activity, students see an example of a hidden bias. Although the method of selecting straws by taking out the first one touched in the bag appears fair and random, it produces samples that are not representative of the population (MP1). In the next activity, students explore ways to resolve the problem by finding other methods of selecting a sample that would be fair for this same context.
Arrange students in groups of 2.
In an opaque bag, include straws cut into 35 pieces according to the table.
| length of straw in inches | 1 | 2 | 3 | 4 | 5 | |
|---|---|---|---|---|---|---|
| number of straws | 6 | 6 | 8 | 6 | 5 | 4 |
Select 5 students to help with a demonstration. One at a time, each student will reach into the bag and remove the first straw piece they touch. They should measure the straw piece to the nearest half inch and announce the value to the class for them to record. Return the straw to the bag and shake the bag. Give the bag to the next student to repeat these steps.
After the class has recorded the 5 lengths, repeat the demonstration and add the second set of 5 straw lengths to the second row of the table in this activity.
Note: Taking out the first one the student touches rather than reaching around in the bag is important for this task.
Following the demonstration, give students partner work time and follow with a whole-class discussion.
Your teacher will have some students draw straws from a bag.
| straw 1 | straw 2 | straw 3 | straw 4 | straw 5 | |
|---|---|---|---|---|---|
| sample 1 | |||||
| sample 2 |
Estimate the mean length of all the straws in the bag based on:
the mean of the first sample.
the mean of the second sample.
Ask students:
Reveal the contents of the bag.
Tell students that a larger sample does not help the estimate if the selection process is flawed. For example, if someone uses the heights of 40 basketball players instead of only 20 basketball players to determine average height of everyone in the United States, the larger sample probably does not represent the population any better.
Explain that, although the process may seem random since we took out as much of the human element of the choosing process as possible, the longer straws were over-represented in our samples. It is important to try to anticipate all the different ways that the selection process might be biased to avoid it as much as possible.
In this activity, students determine whether alternate methods of selecting items for a sample from the same population are fair (MP3). For the methods that work, the physical objects are linked with numerical values to remove even more of the bias toward selecting certain objects more often than others.
Tell students that the straws from the previous task are ordered and numbered with 1 representing the shortest straw and 35 representing the longest. Display the table for all to see.
| straw number | length (inches) |
|---|---|
| 1–6 | 0.5 |
| 7–12 | 1 |
| 13–20 | 2 |
| 21–26 | 3 |
| 27–31 | 4 |
| 32–35 | 5 |
Before beginning the task, ask students:
Following the discussion, allow students quiet work time, and then follow with a whole-class discussion.
There are a total of 35 straws in the bag. Suppose we put the straws in order from shortest to longest and assign each straw a number from 1 to 35. For each of these methods, decide whether it would be a fair way to select a sample of 5 straws. Explain your reasoning.
Select the straws numbered 1 through 5.
Write the numbers 1 through 35 on pieces of paper that are all the same size. Put the papers into a bag. Without looking, select five papers from the bag. Use the straws with those numbers for your sample.
Using the same bag as the previous question, select one paper from the bag. Use the number on that paper to select the first straw for your sample. Then use the next 4 numbers in order to complete your sample. For example, if you select number 17, then you also use straws 18, 19, 20, and 21 for your sample.
Create a spinner with 35 sections that are all the same size, and number them 1 through 35. Spin the spinner 5 times, and use the straws with those numbers for your sample.
Tell students that a random sample from a population is a sample that is selected in a way that gives every different possible sample of the same size an equal chance of being the sample selected.
Explain that:
Consider asking these discussion questions:
A sample is selected at random from a population if it has an equal chance of being selected as every other sample of the same size. For example, if there are 25 students in a class, then we can write each of the students' names on a slip of paper and select 5 papers from a bag to get a sample of 5 students selected at random from the class.
Other methods of selecting a sample from a population are likely to be biased. This means that it is less likely that the sample will be representative of the population as a whole. For example, if we select the first 5 students who walk in the door, that will not give us a random sample because students who typically come late are not likely to be selected. A sample that is selected at random may not always be a representative sample, but it is more likely to be representative than using other methods.
It is not always possible to select a sample at random. For example, if we want to know the average length of wild salmon, it is not possible to identify each one individually, select a few at random from the list, and then capture and measure those exact fish. When a sample cannot be selected at random, it is important to try to reduce bias as much as possible when selecting the sample.