What is Stratified Sampling? Definition, Examples, Types (2024)

If you’re researching a small population, it might be possible to get representative data from every unit or variable in the target audience. However, when you’re dealing with a larger audience, you need a more effective way to gather relevant and unbiased feedback from your sample. Stratified sampling can help you achieve this.

To get the most reliable results, you need to map out heterogeneous divisors in your population, so you can have truly diverse strata. In this article, we’d show you how to do this, also touch on the different types of stratified sampling.

What is Stratified Sampling?

Stratified sampling is a selection method where the researcher splits the population of interest into hom*ogeneous subgroups or strata before choosing the research sample. This method often comes to play when you’re dealing with a large population, and it’s impossible to collect data from every member.

When splitting the population into smaller groups, the researcher relies on the naturally-occuring divisors such as geographical location, gender, education level, and age, to mention a few.

For example, when conducting research on the level of education amongst women in a community, one can identify different population groups based on ethnicity, gender, religion, and income level. The whole idea is to preserve the hom*ogeneity within each group, so that no subset is excluded from the eventual sample.

Types of Stratified Sampling

The golden rule of stratified sampling is that every stratum should have distinct characteristics that differentiate it from the others. To achieve this, researchers rely on two methods of stratified sampling namely;

  1. Disproportionate Stratified Sampling
  2. Proportionate Stratified Sampling Method

1. Disproportionate Stratified Sampling Method

Disproportionate stratified sampling is a stratified sampling method where the sample population is not proportional to the distribution within the population of interest. The implication is that the members of different subgroups do not have an equal opportunity to be a part of the research sample.

Example of Disproportionate Stratified Sampling

A researcher splits the population of interest into three subsets based on their age groups:

Subset A (16–25): 120,000

Subset B (26–35): 80,000

Subset C (36–45): 100,000

Disproportionate stratified sampling means the researcher randomly chooses members of the sample from each group. So, you could have 60,000 participants from the first group and 20,000 and 17,000 from others, respectively. There’s no clear-cut method for choosing the variables for the research sample.

A key advantage of disproportionate sampling is it allows you to collect responses from minority subsets whose sample size would otherwise be too low to allow you to draw any statistical conclusions.

2. Proportionate Stratified Sampling Method

In proportionate stratified sampling, the researcher selects variables for the sample based on their original distribution in the population of interest. This means that the probability of choosing a variable from a stratum for the sample depends on the relative size of the stratum in its population of interest.

Typically, the researcher derives a sampling fraction and uses this fraction to determine how the variables are selected for the sample. This sampling fraction is always the same across all strata, regardless of their sizes. With disproportionate stratified sampling, every unit in a stratum stands the same chance of getting selected for the systematic investigation.

Example of Proportionate Stratified Sampling

As part of a research to know how many students want to pursue a career in the sciences. First, she splits the population of interest into two strata based on gender so that we have 4,000 male students and 6,000 female students.

Next, she uses ⅕ as her sampling fraction and selects 800 male students and 1,200 female students for the sample population.

Read:

Advantages of Stratified Sampling

One of the major advantages of stratified sampling is it allows you to create a diverse research sample that represents every group in your population of interest. With this, you can lower the overall variance in the population.

Let’s discuss some other reasons why you should embrace stratified sampling in research.

  1. Stratified sampling allows you to have a more precise research sample compared to the results from simple random sampling.
  2. Stratified sampling helps you to save cost and time because you’d be working with a small and precise sample.
  3. It is a smart way to ensure that all the sub-groups in your research population are well-represented in the sample.
  4. Stratified sampling lowers the chances of researcher bias and sampling bias, significantly.
  5. Unlike other methods of sampling, stratified sampling accurately reflects the population of interest, which results in better research outcomes.
  6. Stratified sampling allows you to collect objective results in research involving population estimates.
  7. Stratified sampling improves the quality of data collected from research participants in a systematic investigation.

Read: Research Questions: Definitions, Types + [Examples]

Disadvantages of Stratified Sampling

Despite its numerous advantages, stratified sampling isn’t the right fit for every systematic investigation. In this section, we’ll look at some common limitations of stratified sampling.

  1. It can be difficult to split the population of interest into individual, hom*ogeneous strata, especially if some of the groups have overlapping characteristics.
  2. If the strata are wrongly selected, it can lead to research outcomes that do not reflect the population accurately.
  3. Categorizing and interpreting results from stratified sampling is difficult compared to other types of sampling.
  4. Finding an exhaustive and definitive list of an entire population can be challenging.

How To Create a Stratified Random Sample

The good thing is you do not need to be an experienced researcher to stratify a population for sampling. Here’s a step-by-step guide on how to go about this.

  • Define the population of interest
  • Determine the parameters for stratification. These could be gender, age, ethnicity/race, and the like.
  • Split the population of interest into several strata
  • If possible, list all the variables in the population of interest.
  • Assign individual numbers to every unit in the strata.
  • Calculate the sample fraction. Use this fraction to determine your sample population.

How to Conduct Stratified Sampling

Step 1: Define the Population of Interest

The first thing you should do is map out the population of interest for your research. For example, if you’re researching wild cats in Africa, your population of interest would be all the tigers, cheetahs, hyenas, and the like in Africa’s forests, savannas, and mountains.

Step 2: Break the population of interest into strata

At this point, you should have specific parameters for splitting your target population into smaller, internally hom*ogeneous groups. You can stratify the population-based on multiple criteria, or stick with a single parameter.

Step 3: Now, place hom*ogeneous variables into strata using the characteristics specified earlier. If your strata are based on gender, you can have something like this:

  • Characteristic/Parameter: Gender Identity
  • Strata: Female, male, other
  • Groups: Males aged 18–35, Females aged 40–50, etc.

Step 4: Choose the stratified sampling method for your target population. You can opt for disproportionate or proportionate stratified sampling.

Step 5: Determine the ideal sample size for your systematic investigation. For this, you need to calculate the margin of error, standard deviation and confidence level of your data. When you have them, apply this formula:

What is Stratified Sampling? Definition, Examples, Types (1)

Source: Geopoll

Step 6: Choose the variables for your sample using another probability sampling method, such as simple random or systematic sampling.

Read: Margin of error – Definition, Formula + Application

FAQs About Stratified Sampling

Here are a few frequently asked questions about stratified sampling

1. What is the Difference Between Stratified and Cluster Sampling?

The major difference between stratified sampling and cluster sampling is how subsets are drawn from the research population. In cluster sampling, the researcher depends on naturally-occurring divisors like geographical location, school districts, and the like.

In stratified sampling, the researcher doesn’t depend on only naturally occurring parameters. This means that the researcher might have the need to create groups or strata based on specific parameters.

Let’s discuss other differences between stratified sampling and cluster sampling.

  • Definition

Cluster sampling involves choosing the research sample from naturally occurring groups known as clusters. In stratified sampling, the researcher selects the sample population from non-overlapping, hom*ogeneous strata.

  • Sample Selection

In cluster sampling, the researcher randomly selects clusters and includes all of the members of these clusters in the sample. For stratified sampling, the researcher randomly selects members from various formed strata.

  • hom*ogeneity

In cluster sampling, there’s external hom*ogeneity between various clusters. hom*ogeneity occurs internally; that is within the strata, in stratified sampling.

2. Why is Stratified Sampling Better than Quota Sampling?

Stratified sampling is better than quota sampling because of a number of reasons. First, stratified sampling works with a sample frame which helps the researcher arrive at outcomes that are a close representation of the data from the actual population.

Also, stratified sampling allows the researcher to account for any sampling errors in the systematic investigation. Quota sampling can disguise potentially significant bias.

3. When Would You Use a Stratified Sample?

The best time to use stratified sampling is when you need to determine the relationship between two groups within the same population of interest. Since stratified sampling accounts for all subgroups in the population, the researcher can represent and account for even the smallest stratum in the population.

4. Is Stratified Random Sampling Qualitative or Quantitative?

Stratified random sampling is more compatible with qualitative research but it can also be used in quantitative data collection.

Conclusion

Whether you opt for proportionate or disproportionate stratified sampling, the most important thing is creating sub-groups that are internally hom*ogenous, and externally heterogeneous. This way, you can account for minority groups and have a truly representative sample.

Also, avoid laying too much emphasis on one of the sub-groups as this can skew your sample and distort expected results. Once you have a well-rounded sample population, you can deploy different data collection methods, including surveys and questionnaires, and get the information you need.

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What is Stratified Sampling? Definition, Examples, Types (2024)

FAQs

What is Stratified Sampling? Definition, Examples, Types? ›

What is stratified sampling? In stratified sampling, researchers divide subjects into subgroups called strata based on characteristics that they share (e.g., race, gender, educational attainment). Once divided, each subgroup is randomly sampled using another probability sampling method.

What is stratified sample example? ›

For example, one might divide a sample of adults into subgroups by age, like 18–29, 30–39, 40–49, 50–59, and 60 and above. To stratify this sample, the researcher would then randomly select proportional amounts of people from each age group.

What are the types of stratified? ›

There are two types of stratified sampling – one is proportionate stratified random sampling and another is disproportionate stratified random sampling. In the proportionate random sampling, each stratum would have the same sampling fraction.

What is an example of stratified sampling in accounting? ›

The stratification is based on the dollar amount of the item and often includes 100% sampling of the largest items. One company reports 5,000 accounts receivable. Of these, 100 are in amounts over $50,000, 500 are in amounts between $1,000 and $50,000, and the remaining 4,400 are in amounts under $1,000.

What are the two types of stratified samples? ›

There are two main types of stratified random sampling: proportionate and disproportionate sampling. Proportionate sampling takes each stratum in the sample as proportionate to the population size of the stratum.

Where is stratified sampling used? ›

Stratified random sampling is typically used by researchers when trying to evaluate data from different subgroups or strata. It allows them to quickly obtain a sample population that best represents the entire population being studied.

Why use stratified sampling? ›

Stratified random sampling is typically used by researchers when trying to evaluate data from different subgroups or strata. It allows them to quickly obtain a sample population that best represents the entire population being studied.

What is a stratified sample for classification? ›

Stratified Sampling is a sampling method that reduces the sampling error in cases where the population can be partitioned into subgroups. We perform Stratified Sampling by dividing the population into hom*ogeneous subgroups, called strata, and then applying Simple Random Sampling within each subgroup.

What are the types of sampling random and stratified? ›

A simple random sample is used to represent the entire data population and randomly selects individuals from the population without any other consideration. A stratified random sample, on the other hand, first divides the population into smaller groups, or strata, based on shared characteristics.

Is stratified sampling an example of random sampling? ›

Stratified random sampling (also known as proportional random sampling and quota random sampling) is a probability sampling technique in which the total population is divided into hom*ogenous groups (strata) to complete the sampling process.

What is the definition of stratification? ›

Stratification is defined as the act of sorting data, people, and objects into distinct groups or layers. It is a technique used in combination with other data analysis tools. When data from a variety of sources or categories have been lumped together, the meaning of the data can be difficult to see.

What is stratified sampling simple? ›

What is stratified sampling? In stratified sampling, researchers divide subjects into subgroups called strata based on characteristics that they share (e.g., race, gender, educational attainment). Once divided, each subgroup is randomly sampled using another probability sampling method.

What are the 5 main types of sampling? ›

There are five types of sampling: Random, Systematic, Convenience, Cluster, and Stratified. Random sampling is analogous to putting everyone's name into a hat and drawing out several names.

What is an example of a systematic sample? ›

Example: Suppose a supermarket wants to study its customers' buying habits. With systematic random sampling, they can choose every 10th or 15th customer entering the supermarket. Then, they can conduct the study on this sample.

What is stratified random sample simple? ›

Stratified random sampling is a widely used statistical technique in which a population is divided into different subgroups, or strata, based on some shared characteristics. The purpose of stratification is to ensure that each stratum in the sample and to make inferences about specific population subgroups.

What is a stratified random sample in simple terms? ›

Stratified random sampling is a method of selecting a sample in which researchers first divide a population into smaller subgroups, or strata, based on shared characteristics of the members and then randomly select among each stratum to form the final sample.

What is an example of a stratified randomization? ›

Stratified randomization refers to the situation where the strata are based on level of prognostic factors or covariates. For example, if “sex” is the chosen prognostic factor, the number of strata is two (male and female), and randomization is applied to each stratum.

What is an example of a stratified sample in AP Stats? ›

A stratified random sample is random sampling within each strata. A strata is when a population is divided into hom*ogeneous groups. For example, splitting the four grades of high school into four hom*ogeneous groups 9th, 10th, 11th, and 12th grade.

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