Stratified Sampling
Political Science
Statistics
Examples of Stratified Sampling in the following topics:
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Lab 2: Sampling Experiment
- The student will demonstrate the simple random, systematic, stratified, and cluster sampling techniques.
- Pick a stratified sample, by city, of 20 restaurants.
- Pick a stratified sample, by entree cost, of 21 restaurants.
- Pick a cluster sample of restaurants from two cities.
- 1.14.7 Restaurants Stratified by City and Entree CostRestaurants Used in Sample
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Three sampling methods (special topic)
- Stratified sampling is a divide-and-conquer sampling strategy.
- The downside is that analyzing data from a stratified sample is a more complex task than analyzing data from a simple random sample.
- The analysis methods introduced in this book would need to be extended to analyze data collected using stratified sampling.
- Examples of simple random, stratified, and cluster sampling.
- In the middle panel, stratified sampling was used: cases were grouped into strata, and then simple random sampling was employed within each stratum.
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Summary
- Each member of the population has an equal chance of being selected- Sampling Methods
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Sampling Techniques
- As long as the starting point is randomized, systematic sampling is a type of probability sampling.
- Stratified sampling can increase the cost and complicate the research design.
- In quota sampling, the population is first segmented into mutually exclusive subgroups, just as in stratified sampling.
- In quota sampling the selection of the sample is non-random.
- Accidental sampling (or grab, convenience, or opportunity sampling) is a type of non-probability sampling which involves the sample being drawn from that part of the population which is close to hand.
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Random Sampling
- A random sample, also called a probability sample, is taken when each individual has an equal probability of being chosen for the sample.
- Systematic and stratified techniques, discussed below, attempt to overcome this problem by using information about the population to choose a more representative sample.
- Stratified sampling, which is discussed below, addresses this weakness of SRS.
- Each sample would be combined to form the full sample.
- Categorize a random sample as a simple random sample, a stratified random sample, a cluster sample, or a systematic sample
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Inferential Statistics
- What is the sample?
- Was the sample picked by simple random sampling?
- Sometimes it is not feasible to build a sample using simple random sampling.
- Since simple random sampling often does not ensure a representative sample, a sampling method called stratified random sampling is sometimes used to make the sample more representative of the population.
- In stratified sampling, you first identify members of your sample who belong to each group.
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Random Samples
- In survey sampling, weights can be applied to the data to adjust for the sample design, particularly stratified sampling (blocking).
- Simple random sampling is a basic type of sampling, since it can be a component of other more complex sampling methods.
- Further, for a small sample from a large population, sampling without replacement is approximately the same as sampling with replacement, since the odds of choosing the same individual twice is low.
- Conceptually, simple random sampling is the simplest of the probability sampling techniques.
- If these conditions are not true, stratified sampling or cluster sampling may be a better choice.
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Defining the Sample and Collecting Data
- The stages of the sampling process are defining the population of interest, specifying the sampling frame, determining the sampling method and sample size, and sampling and data collecting.
- There are various types of samples.
- Examples of types of samples include simple random samples, stratified samples, cluster samples, and convenience samples.
- Sampling errors and biases, such as selection bias and random sampling error, are induced by the sample design.
- Non-sampling errors are other errors which can impact the results, caused by problems in data collection, processing, or sample design.
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Determining Sample Size
- Sample size determination is the act of choosing the number of observations or replicates to include in a statistical sample.
- The sample size is an important feature of any empirical study in which the goal is to make inferences about a population from a sample.
- In complicated studies there may be several different sample sizes involved.
- For example, in a survey sampling involving stratified sampling there would be different sample sizes for each population.
- Sample sizes are judged based on the quality of the resulting estimates.
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Samples
- This process of collecting information from a sample is referred to as sampling.
- The best way to avoid a biased or unrepresentative sample is to select a random sample, also known as a probability sample.
- Several types of random samples are simple random samples, systematic samples, stratified random samples, and cluster random samples.
- A sample that is not random is called a non-random sample, or a non-probability sampling.
- Some examples of nonrandom samples are convenience samples, judgment samples, and quota samples.