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. Subgroup analysis is crucial for tailoring treatments to specific patient groups, optimizing healthcare outcomes.
This technique is beneficial in cases where the population is heterogeneous, and a simple random sample may not provide accurate results. By dividing the population into strata, researchers can ensure that their sample is representative of the population and avoid sampling biases.
Stratified random sampling is a type of probability method using which a research organization can branch off the entire population into multiple non-overlapping, homogeneous groups (strata) and randomly choose final members from the various strata for research which reduces cost and improves efficiency. Members in each of these groups should be distinct so that every member of all groups gets an equal opportunity to be selected using simple probability. This sampling method is also called “random quota sampling.”
Let’s consider a situation where a research team seeks opinions about religion among various age groups. Instead of collecting feedback from 326,044,985 U.S citizens, random samples of around 10000 can be selected for research. These 10000 citizens can be divided into groups according to age, i.e., 18-29, 30-39, 40-49, 50-59, and 60 and above. Each stratum will have distinct members and the number of members—age, socioeconomic divisions, nationality, religion, educational achievements, and other classifications.
The following are the steps to select a stratified random sample:
Using this method helps ensure that the sample is representative of the population and reduces sampling error, leading to more accurate results.
In this approach, each stratum sample size is directly proportional to the population size of the entire population of strata. That means each strata sample has the same sampling fraction.
Proportionate Stratified Random Sampling Formula: n h = ( N h / N ) * n |
nh= Sample size for h th stratum
Nh= Population size for h th stratum
N = Size of entire population
n = Size of entire sample
If you have four strata with 500, 1000, 1500, and 2000 respective sizes, the research organization selects ½ as the sampling fraction. A researcher must choose 250, 500, 750, and 1000 members from the separate stratum.
Stratum | A | B | C | D |
Population Size | 500 | 1000 | 1500 | 2000 |
Sampling Fraction | 1/2 | 1/2 | 1/2 | 1/2 |
Final Sampling Size Results | 250 | 500 | 750 | 1000 |
Irrespective of the sample size of the population, the sampling fraction will remain uniform across all the strata.
T he sampling fraction is the primary differentiating factor between proportionate and disproportionate stratified random sampling. In excessive sampling, each stratum will have a different sampling fraction.
The success of this sampling method depends on the researcher’s precision at fraction allocation. If the allotted fractions aren’t accurate, the results may be biased due to the overrepresented or underrepresented strata.
Stratum | A | B | C | D |
Population Size | 500 | 1000 | 1500 | 2000 |
Sampling Fraction | 1/2 | 1/3 | 1/4 | 1/5 |
Final Sampling Size Results | 250 | 333 | 375 | 400 |
Researchers and statisticians use stratified random sampling to analyze relationships between two or more strata. As stratified random sampling involves multiple layers or strata, it’s crucial to calculate the strata before calculating the sample value.
Following is a classic stratified random sampling example:
Let’s say 100 (Nh) students of a school having 1000 (N) students were asked questions about their favorite subject. It’s a fact that the students of the 8th grade will have different subject preferences than the students of the 9th grade. For the survey to deliver precise results, the ideal manner is to divide each step into various strata.
Here’s a table of the number of students in each grade:
Grade | Number of students (n) |
5 | 150 |
6 | 250 |
7 | 300 |
8 | 200 |
9 | 100 |
Stratified Sample (n 5 ) = 100 / 1000 * 150 = 15 |
Stratified Sample (n 6 ) = 100 / 1000 * 250 = 25 |
Stratified Sample (n 7 ) = 100 / 1000 * 300 = 30 |
Stratified Sample (n 8 ) = 100 / 1000 * 200 = 20 |
Stratified Sample (n 9 ) = 100 / 1000 * 100 = 10 |
Stratified random sampling is a statistical technique that offers several advantages over other methods. Some of the critical benefits include the following:
Stratified random sampling is a valuable and efficient method for a population with distinct subgroups. Its ability to increase precision, represent each subgroup proportionately, control for bias, save costs, and improve data quality make it a valuable tool for researchers in many fields.
Stratified random sampling should be used when the population under study has distinct subgroups, and the goal is to make inferences about each subgroup or the population as a whole. This technique is beneficial when:
LEARN ABOUT: Survey Sampling
Stratified random sampling is practical when the population has distinct subgroups, and the goal is to make inferences about each subgroup or the population as a whole.
Read more about Sampling:
Stratified random sampling is essential for researchers as it helps increase the results’ validity and reliability. Using QuestionPro, you can use its built-in sampling tools to ensure that your sample is representative of the population. You can also use QuestionPro’s analytics tools to analyze your data, including descriptive statistics, crosstabulation, and regression analysis.
Overall, QuestionPro provides an effective platform for conducting stratified random sampling studies, allowing you to ensure that your sample is representative of your population and to analyze your data in a user-friendly environment.