Stratified Sampling is a statistical method in which a population is divided into smaller, distinct subgroups known as strata. Random samples are then taken from each stratum to ensure that all key groups are proportionally represented. This approach improves the accuracy and fairness of results compared to simple random sampling, especially when the population is diverse.
Stratified Sampling was developed to address the limitations of purely random sampling in heterogeneous populations. When important subgroups differ significantly, random selection alone may overlook or underrepresent them. By dividing the population into meaningful strata based on shared characteristics, researchers ensure balanced representation and more reliable estimates. This method is widely used in social sciences, healthcare, and market research to produce unbiased and comprehensive results.
Example: In a survey of 1,000 employees, a company divides staff by department and randomly selects individuals from each one, ensuring all departments contribute to the sample.
Stratified Sampling increases representativeness and statistical precision. It helps reduce bias and improves the generalisability of results across diverse populations. Although it requires detailed information about the population to define strata accurately, it remains one of the most effective sampling methods for balanced and dependable research outcomes.