Non-probability sampling is a sampling technique in which selecting a sample is based on the researcher’s subjective judgment rather than random selection. Unlike methods such as stratified sampling, which divides the population into strata to ensure that each stratum is representative of the population, non-probability sampling does not rely on a sampling frame or ensure that each member of the population has an equal chance of being selected.

A nonprobability sample is often sample based on availability or specific characteristics the researcher deems relevant, making it more suitable for exploratory research where the goal is to gain insights rather than to achieve statistical generalization. This method is particularly useful when it’s impractical or unnecessary to stratify the population.

Types of Non-Probability Sampling

Non-probability sampling methods do not rely on random selection. Instead, the researcher uses their judgment or convenience to choose the sample. Here are the main types of non-probability sampling:

Convenience Sampling

Convenience sampling is a non-probability technique in which participants are selected based on their availability and accessibility to the researcher. This method is often used when random sampling is not feasible or the research has a specific focus.

The key factors that determine convenience sampling include:

  • Ease of access to potential participants
  • Geographic proximity to the researcher’s location
  • Existing relationships or connections within the target population

Convenience samples are sometimes called “accidental samples” because participants can be selected simply because they happen to be nearby when the researcher collects the data.

Example: Convenience Sampling 

As an undergraduate student, you are conducting a research project on your peers’ study habits and academic performance. However, you cannot access a comprehensive list of all students enrolled at your university. Instead of using a more rigorous probability sampling method, you employ convenience sampling. During your breaks between classes, you position yourself in the campus library and approach students who are studying, politely asking if they would be willing to participate in a brief survey about their learning strategies and academic experiences.

Quota Sampling

Quota sampling is a non-probability sampling technique where the researcher sets quotas to ensure that the sample is representative of the target population’s known characteristics. This method helps to control the proportions of different subgroups within the sample.

The key factors that determine quota sampling include:

  • Identifying the relevant subgroups or characteristics of the population
  • Determining the relative sizes or proportions of each subgroup
  • Setting quotas to ensure the sample matches these known population proportions

Quota sampling is often used when the researcher wants to ensure certain demographics or other subgroups are adequately represented rather than relying on a purely random selection process.

Example: Quota Sampling 

You are researching consumer attitudes towards a new financial services product. Rather than using a simple random sample, you employ quota sampling to ensure the sample represents your target market. Through preliminary analysis, you determine that the product appeals to three main age groups: 18-34, 35-54, and 55+. You then set quotas to interview an equal number of participants from each age group – for example, 100 respondents from each group, totaling 300 participants.

Quota sampling can be categorized into two types:

Proportional quota sampling

This method is employed when the population size is known, allowing researchers to determine sample quotas that accurately represent the population’s composition.

Example: A city with 100,000 residents wants to survey citizens about a new park proposal. The population is 60% homeowners and 40% renters. For a sample of 1,000 people, the researcher would include 600 homeowners and 400 renters to maintain the same proportions as the overall population.

Non-proportional quota sampling

This approach is used when the population size is unknown, requiring researchers to predetermine the quotas for different subgroups in their sample.

Example: A market researcher studying smartphone usage patterns interviews 200 people. Without knowing the exact population demographics, they might set quotas of 100 iOS and 100 Android users to ensure equal representation of both operating systems in the study.

Self-selection (volunteer) sampling

Self-selection sampling, also known as volunteer sampling, is a non-probability sampling method in which participants choose to participate on their own accord. This method is often used when it’s difficult to reach a specific population or when the research topic requires participants willing to volunteer information.

Key characteristics of self-selection sampling are:

  • Participants volunteer for the study rather than being chosen by the researcher. This can lead to a highly motivated sample or interest in the research topic.
  • The method is often used in studies that require participants to invest significant time or effort or when dealing with sensitive topics where willing participants are crucial.
  • While it can be an efficient way to gather participants, self-selection sampling can introduce bias into the study, as volunteers may not represent the entire population.

Example: Self-selection sampling

A researcher is studying the long-term effects of meditation on stress levels. They post flyers around local yoga studios and wellness centers, inviting people who practice meditation regularly to participate in a year-long study. Those who respond and volunteer are included in the sample.

Snowball Sampling

Snowball sampling is a non-probability technique particularly useful when the target population is difficult to access or identify. This method involves starting with a few initial participants and then leveraging their social networks to recruit additional participants.

The critical steps in snowball sampling include:

  • Identifying a small number of initial participants who meet the criteria for the study.
  • Asking these initial participants to refer or introduce the researcher to other individuals who share the same characteristics.
  • Continuing the process, with new participants suggesting additional people to include, until the desired sample size is reached.

Snowball sampling is often used in research on sensitive or hidden populations, such as people dealing with substance abuse, homelessness, or other socially marginalized groups. By starting with a few trusted contacts and building outward from there, the researcher can gradually gain access to a population that may be challenging to reach through other means.

Example: Snowball Sampling 

A psychology researcher is investigating the experiences of individuals who have overcome addiction without formal treatment. They post an announcement on social media platforms and recovery-focused online forums, describing the study and inviting individuals who meet the criteria to participate in in-depth interviews. People who see the announcement and feel that their experiences align with the study’s focus can choose to contact the researcher and volunteer for the study. The final sample consists of those who stepped forward to share their stories.

Purposive Sampling

Judgmental or purposive sampling is a non-probability sampling technique where the researcher selects participants based on their knowledge and judgment about the population. This method is particularly useful when a specific population subset is needed to meet the research objectives.

Factors influencing judgmental sampling include:

  • Expertise of the researcher
  • Specific characteristics of the population
  • Purpose of the research

This method is often used in qualitative research, where an in-depth understanding of a particular phenomenon is sought, and the researcher believes that certain individuals are more likely to provide valuable insights.

Example: Judgmental or Purposive Sampling

You are researching the impact of advanced technology on teaching methodologies in high schools. To gather relevant information, you decide to interview teachers known for integrating innovative technology into their classrooms. You rely on recommendations from school principals and your knowledge of educators who are pioneers in this area.

Common purposive sampling techniques are:

Maximum variation (heterogeneous) sampling

Maximum variation sampling, also known as heterogeneous sampling, is a purposive sampling technique aimed at capturing a wide array of perspectives on a research topic. This method involves deliberately selecting participants with diverse characteristics or experiences relevant to the study. The primary goal is to identify common themes that cut across a varied sample and understand how the phenomenon under study manifests in different contexts.

Example: Maximum variation sampling

You’re studying international students’ experiences adjusting to university life in a new country. To capture a wide range of perspectives, you use maximum variation sampling. You select participants with diverse backgrounds and characteristics. Your sample includes students from different countries studying various fields and at different academic levels. You also consider their prior international experience, language proficiency, and stay in the host country.  

Homogeneous sampling

Homogeneous sampling is a purposive sampling technique that involves selecting participants with similar traits or characteristics. This method is particularly useful when researchers aim to study a specific subgroup in-depth, focusing on their shared experiences or perspectives. By concentrating on a homogeneous group, researchers can reduce variation and simplify analysis, allowing for a more focused examination of particular phenomena within a specific context.

Example: Homogeneous sampling

You’re investigating the challenges faced by female entrepreneurs in the tech industry. To focus on a specific subgroup, you employ homogeneous sampling. Your sample consists of 15 women between 25 and 40 years old who have founded tech startups within the last five years. Each participant has raised at least one round of venture capital funding and is based in a major tech hub.

Typical case sampling

Typical case sampling is a purposive technique that involves selecting participants who are considered average or representative of the studied phenomenon. This method is useful when researchers want to examine what is typical within a given context. By focusing on these representative cases, researchers can gain insights into common experiences, behaviors, or characteristics prevalent in the broader group.

Example: Typical case sampling

You’re studying work-life balance among middle managers in a large corporation. You select participants representing the typical experience: those in middle management for 3-5 years, working 45-50 hours weekly, with “meets expectations” performance ratings. Through interviews with these typical cases, you explore their daily routines, work-life balance challenges, and coping strategies.

Extreme (or deviant) case sampling

Extreme case sampling, also known as deviant case sampling, involves selecting participants who represent unusual or special instances of the phenomenon you’re studying. This method allows you to explore the boundaries of a particular experience or situation, providing insights into exceptional cases that might reveal important factors or patterns not evident in more typical cases.

Example: Extreme case sampling

You are conducting a study on academic resilience among high school students. Instead of focusing on average performers, you examine extreme cases of students who have overcome significant adversity to achieve exceptional academic success. You select participants who have experienced homelessness, severe illness, or other major life challenges yet have maintained top grades and gained admission to prestigious universities.

Critical case sampling

Critical case sampling is a technique where you select participants or particularly important cases or can make a point dramatically. You choose these cases because they are likely to “prove” your point in a compelling way. The logic behind this method is that if something is true for a critical case, it’s likely to be true for others. This approach can be especially useful when you have limited resources and must make a strong argument with a small sample size.

Example: Critical case sampling

You’re evaluating the effectiveness of a new anti-bullying program in schools. Instead of implementing it in multiple schools, you focus on a single school known for having the highest bullying incidents in the district. You reason that if the program can significantly reduce bullying in this challenging environment, it’s likely to be successful in other schools as well. You carefully monitor and document the program’s implementation and results in this critical case.

Expert sampling

Expert sampling involves selecting participants based on their specialized knowledge or expertise in a particular field. You use this method when your research requires insights from individuals with deep understanding or extensive experience in a specific domain. By gathering expert perspectives, you can gain valuable, informed opinions on complex or technical issues that might not be accessible through other sampling methods.

Example: Expert sampling

You’re conducting a study on the future of renewable energy technologies. To gather the most informed perspectives, you decide to use expert sampling. You select a diverse group of participants, including leading solar and wind energy researchers, policymakers specializing in energy regulation, CEOs of renewable energy companies, and environmental economists. Through in-depth interviews with these experts, you aim to gain insights into emerging technologies, potential policy changes, and market trends that could shape the renewable energy landscape over the next decade.  

These purposive sampling techniques can be used individually or in combination, depending on the research objectives, the characteristics of the target population, and the resources available to the researcher.

Non-Probability Sampling Examples

You can use several methods to draw a non-probability sample for your research. Here are a few examples:

Social media: You might recruit participants through social media platforms like Facebook, Twitter, or LinkedIn.

Example: You’re researching young adults’ attitudes towards climate change. You create a Facebook post with a link to your online survey, asking people aged 18-30 to participate. You also share the link to environmental interest groups on Facebook.

River sampling: This method involves collecting data from website visitors. You could set up a pop-up survey related to your research topic on a popular website, inviting visitors to participate as they “flow” through the site.

Example: You’re conducting market research for a new fitness app. You arrange for a pop-up survey to appear on a popular health and wellness website. As visitors browse the site, they’re invited to participate in your short questionnaire about their fitness habits and app preferences.

Street research: You might research by approaching people in public spaces. 

Example: You’re studying residents’ opinions on a proposed city park renovation. On a Saturday morning, you set up a small booth near the current park entrance. As people walk by, you invite them to answer questions about their park usage and views on the proposed changes.

Probability vs. Non-Probability Sampling

Probability sampling involves random selection, giving all individuals in the population an equal chance of being chosen. 

Non-probability sampling doesn’t involve random selection and is often based on convenience or the researcher’s judgment.

Example: Probability Sampling

You’re conducting a study on voter preferences in your city. You obtain a list of all registered voters and use a random number generator to select 500 participants. Each voter has an equal chance of being chosen, making this a probability sample.

Example: Non-Probability Sampling

You’re researching customer satisfaction at a local coffee shop. You decide to interview customers who visit the shop during your shift on Tuesday afternoons. This is a non-probability sample because not all customers have an equal chance of being selected – you only include those who happen to visit during your specific timeframe.

Differences between non-probability and probability sampling

Here are the key differences between non-probability sampling and probability sampling:

AspectNon-probability samplingNon-probability sampling
Selection methodBased on the researcher’s judgment or convenience    Every member of the population has an equal chance of being selected
Sampling frameDoes not require a complete sampling frame   Requires a complete sampling frame
ObjectiveUsed for exploratory research; not focused on generalization    Aims to produce a representative sample for generalization to the population
BiasProne to sampling bias due to non-random selection    Reduces bias through random selection
Statistical generalization  Difficult to generalize results to the entire population    Results can be generalized to the total population with confidence
Types of  sampling methodsConvenience sampling, quota sampling, purposive sampling    Stratified sampling, simple random sampling, systematic sampling
Use caseUsed for hard-to-reach populations or limited resources    Suitable for research that requires statistical validity and generalization

When do you use Non-Probability Sampling?

Non-probability sampling is used in the following situations:

  • Exploratory Research: When the goal is to gain initial insights or explore a phenomenon rather than generalize findings to the entire population. Researchers use this technique in the early stages to identify trends or develop hypotheses.
  • Limited Resources: When time, budget, or access to a full sampling frame is limited, non-probability sampling allows researchers to gather data more quickly and efficiently without the need for random selection.
  • Hard-to-Reach Populations: In cases where the population is difficult to access, such as with specialized or niche groups, non-probability sampling helps identify participants that meet the specific criteria of the study.
  • Qualitative Research: For studies focused on in-depth understanding, such as interviews or case studies, where the goal is not statistical representativeness but rich, detailed data.
  • Pilot Studies: To test research instruments or refine the methodology before conducting a larger, more comprehensive study using probability sampling methods.

Advantages and Disadvantages of Non-Probability Sampling

Non-probability sampling has strengths and limitations to consider when deciding on your research methodology.

Advantages of Non-Probability Sampling

  • More flexible and convenient to implement than probability sampling
  • Useful for exploratory research or when the population is difficult to access
  • Can provide rich, in-depth insights about a specific target group

Disadvantages of Non-Probability Sampling

  • Results cannot be statistically generalized to the larger population
  • Increased risk of sampling bias, as the researcher’s judgment plays a role in selecting participants
  • Difficult to assess the representativeness of the sample