What sampling technique selects the sample by picking out every KTH of the population?

Objectives

By the end of this lesson, you will be able to...

  1. describe the difference between the stratified, systematic, and cluster sampling techniques
  2. identify which sampling technique was used
  3. determine an appropriate sampling technique given a situation
  4. obtain a stratified, systematic, or cluster sample

For a quick overview of this section, watch this short video summary:

Review: Simple Random Sampling

Do you remember how simple random sampling works? Visually, it's just numbering each individual and randomly selecting a certain number of them. Here's the image we used in the previous section:

What sampling technique selects the sample by picking out every KTH of the population?

Stratified Sampling

Stratified sampling is different. With this technique, we separate the population using some characteristic, and then take a proportional random sample from each.

A stratified sample is obtained by separating the population into non-overlapping groups called strata and then obtaining a proportional simple random sample from each group. The individuals within each group should be similar in some way.

Visually, it might look something like the image below. With our population, we can easily separate the individuals by color.

What sampling technique selects the sample by picking out every KTH of the population?

Once we have the strata determined, we need to decide how many individuals to select from each stratum. (Man, that's a weird word!) The key here is that the number selected should be proportional. In our case, 1/4 of the individuals in the population are blue, so 1/4 of the sample should be blue as well. Working things out, we can see that a stratified (by color) random sample of 4 should have 1 blue, 1 green, and 2 reds.

What sampling technique selects the sample by picking out every KTH of the population?

For another take, watch this YouTube video:

Example 1

One easy example using a stratified technique would be a sampling of people at ECC. To make sure that a sufficient number of students, faculty, and staff are selected, we would stratify all individuals by their status - students, faculty, or staff. (These are the strata.) Then, a proportional number of individuals would be selected from each group.

Systematic Sampling

A systematic sample is obtained by selecting every kth individual from the population. The first individual selected corresponds to a random number between 1 and k.

So to use systematic sampling, we need to first order our individuals, then select every kth. (More on how to select k in a bit.)

What sampling technique selects the sample by picking out every KTH of the population?

In our example, we want to use 3 for k? Can you see why? Think what would happen if we used 2 or 4.

For our starting point, we pick a random number between 1 and k. For our visual, let's suppose that we pick 2. The individuals sampled would then be 2, 5, 8, and 11.

What sampling technique selects the sample by picking out every KTH of the population?

In general we find k by taking N/n and rounding down to the nearest integer.

For another take, watch this YouTube video:

Example 2

Systematic sampling works well when the individuals are already lined up in order. In the past, students have often used this method when asked to survey a random sample of ECC students. Since we don't have access to the complete list, just stand at a corner and pick every 10th* person walking by.

* Of course, choosing 10 here is just an example. It would depend on the number of students typically passing by that spot and what sample size was needed.

Cluster Sampling

Cluster sampling is often confused with stratified sampling, because they both involve "groups". In reality, they're very different. In stratified sampling, we split the population up into groups (strata) based on some characteristic.

A cluster sample is obtained by selecting all individuals within a randomly selected collection or group of individuals.

In essence, we use cluster sampling when our population is already broken up into groups (clusters), and each cluster represents the population. That way, we just select a certain number of clusters.

With our visual, let's suppose the 12 individuals are paired up just as they were sitting in the original population.

What sampling technique selects the sample by picking out every KTH of the population?

Since we want a random sample of size four, we just select two of the clusters. We would number the clusters 1-6 and use technology to randomly select two random numbers. It might look something like this:

What sampling technique selects the sample by picking out every KTH of the population?

For another take, watch this YouTube video:

Example 3

One situation where cluster sampling would apply might be in manufacturing. Suppose your company makes light bulbs, and you'd like to test the effectiveness of the packaging. You don't have a complete list, so simple random sampling doesn't apply, and the bulbs are already in boxes, so you can't order them to use systematic. And all the bulbs are essentially the same, so there aren't any characteristics with which to stratify them.

To use cluster sampling, a quality control inspector might select a certain number of entire boxes of bulbs and test each bulb within those boxes. In this case, the boxes are the clusters.

Convenience Sampling

Other methods do exist for finding samples of populations. In fact, you've seen some already. Probably the most common is the so-called convenience sample. Convenience samples are just what they sound like - convenient. Unfortunately, they're rarely representative. Think of the radio call-in show, those people in the shopping malls trying to survey you about your purchasing habits, or even the voting on American Idol!

Here's a specific example. It's a poll on beliefnet.com, titled "What Evangelicals Want". All online polls use, by nature, convenience sampling. According to the article, "The poll was promoted on Beliefnet’s web site and through its newsletters." Only those evangelicals who visit this particular web site and actually answer the survey are included. Beware any poll result taken with convenience sampling.

Multistage Sampling

Often one technique isn't possible, so many professional polling agencies use a technique called multistage sampling. The strategy is relatively self-explanatory - two or more sampling techniques are used.

For example, consider the light-bulb example we looked at earlier with cluster sampling. Let's suppose that the bulbs come off the assembly line in boxes that each contain 20 packages of four bulbs each. One strategy would be to do the sample in two stages:

Stage 1: A quality control engineer removes every 200th box coming off the line. (The plant produces 5,000 boxes daily. (This is systematic sampling.)

Stage 2: From each box, the engineer then samples three packages to inspect. (This is an example of cluster sampling.)

The US Census also uses multistage sampling. If you haven't already (you should have!), read Section 1.4 in your text for more details.

Summary

Here's a visual summary of the four main sampling strategies:

Simple Random:

What sampling technique selects the sample by picking out every KTH of the population?

Stratified:

What sampling technique selects the sample by picking out every KTH of the population?

Systematic:

What sampling technique selects the sample by picking out every KTH of the population?

Cluster:

What sampling technique selects the sample by picking out every KTH of the population?

What is the sampling method where every Kth unit is selected from a population?

Systematic sampling, also called nth name selection technique, is often used instead of random sampling due to its simpler process. After the sample is collected, every nth member within the population is recorded within the sample.

Which type of sampling chooses every kth element in a list?

Systematic sampling is easier to do than random sampling. In systematic sampling, the list of elements is "counted off". That is, every kth element is taken.

What does KTH mean in sampling?

Basic Concepts. In a sample taken from a population, the kth order statistic is the kth smallest element in the sample. We describe the distribution of the kth order statistic when a sample of size n is randomly drawn from the population {1, 2, …, N} (without replacement).

Which technique is used in choosing samples from the population?

Probability sampling is a sampling technique in which researchers choose samples from a larger population using a method based on the theory of probability. This sampling method considers every member of the population and forms samples based on a fixed process.