What are Random Sampling and Non-Random Sampling:
An Overview To Explain Random sampling and non random sampling :
Sampling methods play a very important role in the study of populations, species, and ecosystems. In biological research, data collection involves two approaches that include random sampling and non-random sampling. Random sampling involves sampling members of a population in such a manner that each has an equal chance of being selected, thus ensuring unbiased representation and reduced chances of skewered results.
Non-random sampling involves selecting individuals based on certain criteria or convenience instead of random selection. Non-random sampling techniques encompass purposive sampling, convenience sampling, and stratified sampling.
Although both the methods- random and non-random sampling methods have their advantages and can well be applied in biological research, the choice of the method is determined by the objectives of the study, constraints, and particular characteristics of organisms or populations involved in the research.
Defining Random Sampling:
The biological field uses random sampling to carry out a proportion of the individuals present in a population in such a way that each individual has an equal probability of being selected. It is a technique aiming at minimum bias with which an experiment would be able to have enough representation of the biological phenomena under study.
In random sampling, a group of people is purely selected at random using random number generators or any other means of randomization. This enables all the population members to have an equal chance of being selected.
Random sampling is extensively applied in the biological sciences:
It can find use in estimating population sizes, measuring species diversity and establishing distributions of traits, or managing prevalent diseases and behaviour. It aids in statistical inferences and generalisations about the population with far greater confidence.
Defining Non Random Sampling:
Non-random sampling is commonly referred to as non-probability sampling. It involves the selection of people within a given population on specific criteria or convenience rather than random selection. That is to say, equal chance for the selection of an individual does not go with non-random sampling as is with random sampling. Non-random sampling methods include studies of rare or elusive species, and specific traits or characteristics. Examples of nonrandom sampling methods include purposive, convenience, and snowball sampling.
Purposive sampling involves choosing individuals who have something to contribute towards your answerable research question, based on the ease with which they were accessed or where they were located. Convenience sampling is chosen according to how accessible an individual is, and snowball sampling is selected based on referrals by the existing participants.
Where random sampling is practically impossible or hard to be applied, the best technique for sampling will be nonrandom. However, results of samples from nonrandom sampling tend to be biassed; therefore, care has to be taken before applying them to populations.
Difference Between Random Sampling and Non Random Sampling
Here we will discuss Random Sampling and Non Random Sampling difference in different categories:
S.No |
Category |
Random Sampling |
Non Random Sampling |
1 | Selection Method | Individuals are chosen purely by chance | Individuals are selected using specific criteria or convenience |
2 | Bias | Minimizes bias and provides representative sample | May introduce bias and may not be representative |
3 | Equal Chance | Every person has an equal opportunity of being chosen. | Unequal chance of selection for individuals |
4 | Generalizability | Findings can be generalized to the larger population | Results may not be applicable to the broader population. |
5 | Statistical Inference | Allows for statistical inference and hypothesis testing | Restricted statistical conclusions and may depend on qualitative assessment. |
6 | Sample Representativeness | Provides a more representative sample of the population | Sample may not accurately reflect the population |
7 | Examples | Simple random sampling, stratified sampling | Convenience sampling, purposive sampling, quota sampling |
Summary:
Random sampling and non-random sampling are two different approaches utilized in biological research. Random sampling entails the impartial selection of individuals from a population, guaranteeing that each individual has an equal opportunity to be part of the sample. This technique is often employed to acquire a representative sample, facilitating the generalization of results to the broader population and permitting statistical analysis. Non-random sampling, on the other hand, involves selecting individuals based on specific criteria or convenience, which may introduce bias and limit the generalizability of the results. Researchers must carefully consider the advantages and limitations of each sampling method to ensure accurate and reliable scientific outcomes.