Random Sampling (2024)

The random selection of sample participants to derive conclusions and assumptions about an entire population

Over 1.8 million professionals use CFI to learn accounting, financial analysis, modeling and more. Start with a free account to explore 20+ always-free courses and hundreds of finance templates and cheat sheets.

What is Random Sampling?

Random sampling, or probability sampling, is a sampling method that allows for the randomization of sample selection, i.e., each sample has the same probability as other samples to be selected to serve as a representation of an entire population.

Random Sampling (1)

Random sampling is considered one of the most popular and simple data collection methods in research fields (probability and statistics, mathematics, etc.). It allows for unbiased data collection, which lets studies arrive at unbiased conclusions.

Summary

  • Random sampling, also known as probability sampling, is a sampling method that allows for the randomization of sample selection.
  • It is essential to keep in mind that samples do not always produce an accurate representation of a population in its entirety; hence, any variations are referred to as sampling errors.
  • There are four primary, random (probability) sampling methods – simple random sampling, systematic sampling, stratified sampling, and cluster sampling.

Types of Random Sampling Methods

There are four primary, random (probability) sampling methods. These methods are:

1. Simple random sampling

Simple random sampling is the randomized selection of a small segment of individuals or members from a whole population. It provides each individual or member of a population with an equal and fair probability of being chosen. The simple random sampling method is one of the most convenient and simple sample selection techniques.

2. Systematic sampling

Systematic sampling is the selection of specific individuals or members from an entire population. The selection often follows a predetermined interval (k). The systematic sampling method is comparable to the simple random sampling method; however, it is less complicated to conduct.

3. Stratified sampling

Stratified sampling, which includes the partitioning of a population into subclasses with notable distinctions and variances. The stratified sampling method is useful, as it allows the researcher to make more reliable and informed conclusions by confirming that each respective subclass has been adequately represented in the selected sample.

4. Cluster sampling

Cluster sampling, which, similar to the stratified sampling method, includes dividing a population into subclasses. Each of the subclasses should portray comparable characteristics to the entire selected sample. This method entails the random selection of a whole subclass, as opposed to the sampling of members from each subclass. This method is ideal for studies that involve widely spread populations.

Practical Example

A company currently employs 850 individuals. The company wishes to conduct a survey to determine employee satisfaction based on a few identified variables. The research team decides to have the sample set at 85 employees. The 85 employees will be part of the survey and will be used as a representation for the total population of 850 employees.

In such a scenario, the sample is the 85 employees, and the population is the entire workforce consisting of 850 individuals. Based on the sample size, any employee from the workforce can be selected for the survey. It goes to say that each employee has an equivalent probability of being randomly selected for the survey.

It is important to keep in mind that samples do not always produce an accurate representation of a population in its entirety; hence, any variations are referred to as sampling errors. A sampling error can be defined as the difference between the respective statistics (sample values) and parameters (population values). The sampling error is inevitable when sample data is being used.

Why an Unbiased Random Sample Matters

Unbiased random sampling results in more reliable and unbiased conclusions.

For example, the employee satisfaction survey mentioned above makes use of a sample size of 85 employees. Of these employees, it is possible to have selected more females than males for the study, despite the entire workforce having 450 men and 400 women. It would result in a sampling error, as it causes variations in the results obtained. Ideally, results should be objective and unbiased.

Probability (Random) Sampling vs. Non-Probability Sampling

Probability – or random sampling – is the random selection of sample participants to derive conclusions and assumptions about an entire population. On the other hand, non-probability sampling is the selection of sample participants based on specified criteria or suitability.

More Resources

Thank you for reading CFI’s guide to Random Sampling. To keep advancing your career, the additional CFI resources below will be useful:

Random Sampling (2024)

FAQs

How effective is random sampling? ›

Random sampling is considered one of the most popular and simple data collection methods in research fields (probability and statistics, mathematics, etc.). It allows for unbiased data collection, which lets studies arrive at unbiased conclusions.

What is simple random sampling answer? ›

What Is a Simple Random Sample? A simple random sample is a subset of a statistical population in which each member of the subset has an equal probability of being chosen. A simple random sample is meant to be an unbiased representation of a group.

Is random sampling the most accurate? ›

The primary benefits of simple random sampling are its simplicity and accurate representation of the larger group. Researchers select at random the smaller selection from the larger group, which aids in the more accurate representation. A random sample is usually generated by a manual lottery or a computer.

What is a problem with random sampling? ›

Disadvantages. If the sampling frame is large random sampling may be impractical. A complete list of the population may not be available. Minority subgroups within the population may not be present in sample.

How valid is random sampling? ›

Random sampling uses chance to select the sampling units (participants) from the larger population. When random sampling has been employed in a study, the unbiasedness of the sampling method is strong evidence for external validity; we have a much higher belief in generalizations to the larger population.

Is random sampling the best method? ›

When Is It Best to Use Simple Random Sampling? It's always a good idea to use simple random sampling when you have smaller data sets to study. This allows you to produce better results that are more representative of the overall population.

What are the limitations of sampling? ›

Limitations of Sample Survey
Census Method (survey)Sample Method
The Census Method is more accurate and reliable.The Sample Method is less accurate and less reliable.
The Census Method rules out the possibility of any personal biases.Sample Method holds the chance of personal biases in the selection of samples.
3 more rows

What are the advantages of random sampling? ›

Random sampling
AdvantagesDisadvantages
Less chance of bias as respondents are chosen at randomThe sample may not truly reflect the target market
Simple and quick to select sampleIt can be expensive as a large sample is required

How to get a truly random sample? ›

To be a truly random sample, every subject in your target population must have an equal chance of being selected in your sample. An example of violating this assumption might be conducting a study to estimate the amount of time college students workout at your university each week.

Why is true random sampling so difficult? ›

To have a truely random sample, you need a complete sample frame. Since the population is most often far too vast, a "truely" random sample is not often accomplished.

Which type of sampling is most accurate? ›

Simple Random Sampling

This involves randomly selecting a subset of participants from the population you want to learn about. Some consider this the most accurate population sampling method because it prevents research bias, allowing for an impartial population representation.

What is the biggest challenge in doing random sampling? ›

One of the main challenges with random sampling is the risk of introducing bias, which can skew your results. Selection bias occurs when certain members of the population are more likely to be selected than others, leading to a sample that isn't truly representative.

Why is random sampling easy? ›

Simple random sampling has several advantages, including: It is a fair sampling method, and if applied appropriately, it helps reduce any bias involved compared to any other sampling method. Since it involves a large sample frame, it is usually easy to pick a smaller sample size from the existing larger population.

What is the error in random sampling? ›

Sampling error arises when a survey sample does not accurately represent the population being researched due to random sampling. Sampling and non-response bias, measurement error, and sampling variability can cause this. Non-sampling error includes all survey errors other than sampling errors.

What are the benefits of random sampling? ›

Here are the advantages of this sampling technique. Easy to conduct. Unlike more complicated sampling methods, researchers do not need to divide the population into subpopulations or take any other additional steps before selecting members. They simply select a random number of people from the total population.

How effective is sampling? ›

Sampling helps your sales staff to promote a product using their first-hand experience. Product sampling eliminates uncertainty and provides the consumer with a hands-on experience. It makes the new product much more authentic for the potential buyer.

Why is choosing a random sample an effective way? ›

In a random sample, every person in a population has the same chance of being chosen for the study. According to the laws of probability, random samples represent the population as a whole.

What are the chances of being selected in a random sample? ›

Simple random sampling. In simple random sampling (SRS), each sampling unit of a population has an equal chance of being included in the sample. Consequently, each possible sample also has an equal chance of being selected.

Top Articles
Latest Posts
Article information

Author: Melvina Ondricka

Last Updated:

Views: 5823

Rating: 4.8 / 5 (68 voted)

Reviews: 91% of readers found this page helpful

Author information

Name: Melvina Ondricka

Birthday: 2000-12-23

Address: Suite 382 139 Shaniqua Locks, Paulaborough, UT 90498

Phone: +636383657021

Job: Dynamic Government Specialist

Hobby: Kite flying, Watching movies, Knitting, Model building, Reading, Wood carving, Paintball

Introduction: My name is Melvina Ondricka, I am a helpful, fancy, friendly, innocent, outstanding, courageous, thoughtful person who loves writing and wants to share my knowledge and understanding with you.