What are the pros and cons of simple random sampling?
Simple random sampling is one of the most commonly used probability sampling methods.
The most important pros of simple random sampling are:
- Ease of implementation. This method is relatively easy to implement. You don’t have to think about strata (like with stratified sampling) or clusters (like with cluster sampling).
- Representative sample. Simple random sampling provides a representative sample of the population, with each unit having an equal chance of being selected.
- Lack of bias. Because of the random nature of this technique, the risk of research biases is minimized. Researchers can’t influence the selection process.
The most important cons of simple random sampling are:
- Limited flexibility. This sampling method is a fixed-probability sampling method, which means it can’t be adapted to changing circumstances during the sampling process.
- Requirement of a large sample size. This technique typically requires large sample sizes to achieve acceptable levels of precision and accuracy, which can be expensive and time-consuming.
- Difficulty of obtaining a list of entire population. It can be very difficult to obtain an exhaustive list of the entire population. This means some individuals who should be on the list have no chance of ending up in the sample.