Collecting data from every individual within a target population is often impractical or impossible when researching a specific group. In such cases, researchers rely on different sampling techniques to select a subset, or sample units, from the whole population to participate in the study. The sample would need to be representative of the population to ensure valid generalizations can be made from the research findings.

A sampling method refers to the process used to choose this subset. There are two main categories:

  • Probability sampling
  • Non-probability sampling

In probability sampling, individuals from the population are divided randomly, ensuring that each sample unit has an equal chance of being selected in the sample, which helps minimize sampling bias. Techniques such as multistage sampling, where the population is divided into smaller groups, are commonly used for large, complex populations.

Non-probability sampling involves non-random selection based on convenience or specific criteria. Although this method can be more cost-effective, it can result in a sample that may not fully reflect the whole population, thus limiting the accuracy of generalizations, e.g if a convenient group is selected, the results may not apply broadly.

In any research, clearly explaining the chosen sampling method in the methodology section is crucial for transparency and to assess the study’s reliability. This is especially important for understanding potential sampling bias and whether the sample truly reflects the population being studied.

Population vs. sample

In research, it is essential to understand the difference between a population and a sample. These two concepts are fundamental to designing and conducting studies to draw meaningful conclusions about a larger group based on a smaller subset of individuals.

A population refers to the entire group of individuals, objects, or events a researcher is interested in studying. It encompasses all the members who share a common characteristic or set of factors relevant to the research question.

A sample is a subset of the population selected for the research study. A smaller, more manageable group is chosen to represent the larger population. The sample should be selected using appropriate sampling techniques to ensure that it accurately reflects the characteristics of the population.

Sampling frame

A sampling frame is a comprehensive list of all the population members from which a sample can be drawn. It serves as a basis for selecting a representative sample and is crucial for ensuring the accuracy and validity of research findings.

Example: Sampling frame

Suppose a researcher wants to study the reading habits of university students in a particular city. The sampling frame would be a list of all the university students in that city, which could be obtained from the enrollment records of the universities. This list should include all the relevant information needed to contact and identify the students, such as their names, email addresses, and student ID numbers.

Sample size

Sample size refers to the number of individuals or units selected from the population to participate in a research study. Determining the appropriate sample size is crucial for ensuring the reliability and validity of the research findings.

Probability Sampling Methods

Probability sampling methods are based on the principle of random selection, where each element in the population has a known, non-zero chance of being included in the sample. This allows researchers to make statistical inferences about the population based on the sample data.

Here are the main types of probability sampling:

Simple Random Sampling

Simple random sampling is a method in which each member of the population has an equal chance of being selected for the sample. This is typically done by assigning a unique number to each member of the population and then using a random number generator to select the sample.

Example: To conduct a simple random sample of a company’s 1,000 employees, the researcher assigns each employee a unique number from 1 to 1,000. Using a random number generator, the researcher selects 100 numbers, and the employees corresponding to those numbers are included in the sample.

Systematic Sampling

Systematic sampling involves selecting members of the population at regular intervals from a sampling frame. The first member is chosen randomly, and then every nth member is selected, where n is determined by dividing the population size by the desired sample size.

Example: A researcher wants to select a sample of 100 students from a population of 1,000. The researcher randomly selects a starting point (e.g., the 5th student on the list) and then selects every 10th student thereafter (5, 15, 25, …, 995) to create the sample.

Stratified Sampling

Stratified sampling involves dividing the population into mutually exclusive and exhaustive subgroups (strata) based on a specific characteristic, such as age, gender, or income level. A random sample is then selected from each stratum in proportion to the size of the population.

Example: A researcher wants to study employees’ job satisfaction in a company with 500 workers. The researcher divides the population into three strata based on job level: entry-level (200 employees), mid-level (200 employees), and senior-level (100 employees). The researcher then randomly selects 20 employees from each stratum to create a sample proportional to the population.

Cluster Sampling

Cluster sampling involves dividing the population into naturally occurring, mutually exclusive subgroups (clusters), such as schools or city blocks. A random sample of clusters is then selected, and all members within the chosen clusters are included.

Example: A researcher wants to study the academic performance of high school students in a city with 50 high schools. The researcher randomly selects 5 high schools (clusters) and includes all the students within those schools in the sample.

Non-Probability Sampling Methods

Non-probability sampling methods do not rely on random selection. Instead, the researcher uses their judgment or convenience to choose the sample. These methods are often used when random sampling is not feasible, or the research has a specific focus.

Here are some common types of non-probability sampling:

Convenience Sampling 

Convenience sampling involves selecting participants who are easily accessible or readily available to the researcher. This method is often used when the population is large and the research aims are exploratory or not focused on generalizing to a larger population.

Example: A researcher wants to study the opinions of university students about a new campus policy. The researcher stands outside the university library and asks students who walk by to participate in the study. The sample consists of those who agree to participate, which may not represent the entire student population.

Purposive Sampling 

Purposive sampling, or judgmental sampling, involves selecting participants based on specific characteristics or criteria relevant to the research question. The researcher deliberately chooses individuals likely to provide rich, applicable data.

Example: A researcher wants to study the experiences of breast cancer survivors. The researcher identifies and selects participants who have been diagnosed with breast cancer, have undergone treatment, and are willing to share their experiences. This sample does not represent the general population but is well-suited to provide insights into the research topic.

Quota Sampling

Quota sampling involves selecting participants based on predetermined quotas for specific characteristics like age, gender, or race. The researcher ensures that the sample includes a certain number or proportion of individuals from each subgroup.

Example: A market researcher wants to study consumer preferences for a new product. The researcher establishes quotas based on age groups (e.g., 25% aged 18-24, 25% aged 25-34, etc.) and gender (50% male, 50% female). The researcher then selects participants who fit these quotas until the desired sample size is reached.

Snowball Sampling

Snowball sampling, or chain-referral sampling, involves asking initial participants to recruit additional participants from their social networks. This method is often used when the population is hard to reach or not well-defined.

Example: A researcher wants to study the experiences of undocumented immigrants. The researcher identifies a few initial participants through community organizations and asks them to refer other undocumented immigrants who might be willing to participate. The sample grows through these referrals, like a snowball rolling down a hill.

Voluntary response Sampling

Voluntary response sampling, or self-selected sampling, is a non-probability sampling method in which participants voluntarily participate in the study. This method relies on individuals’ willingness to respond to an open invitation to participate, typically through advertisements, online forums, or social media.

Example: A researcher wants to study public opinion on a controversial political issue. The researcher creates an online survey and posts the link on various social media platforms, inviting people to participate. The sample consists of those who see the invitation and choose to complete the survey.

Choosing the Right Sampling Method

The choice of sampling method depends on various factors, such as the research objectives, population data availability, the desired precision level, and the resources (time, budget, and personnel) available.

Probability sampling methods are generally preferred when the goal is to make statistical inferences about the population, as they allow for the calculation of sampling error and the generalization of findings. Conversely, non-probability sampling is often used when the research focus is more exploratory or when the population is difficult to access.

Regardless of the sampling method chosen, it’s crucial to clearly explain the sampling procedure and its limitations in the research report or publication. This helps readers understand the validity and generalizability of the study’s findings.

By understanding the different types of sampling methods and their applications, you can make informed decisions about how to approach your research projects and data analysis tasks, ensuring that your conclusions are robust and representative of the larger population.