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Data Collection and Sampling Techniques
Objectives: Identify the four basic sampling techniques.
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Difference between census and sample
If the method of sample selection was successful, statistics such as median and range should have similar values for both the sample and the population.
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BIAS IN SAMPLING A biased sample is one in which the data has been unfairly influenced by the collection process and is not truly representative of the whole population.
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Population… …the larger group from which individuals are selected to participate in a study
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The purpose for sampling…
To gather data about the population in order to make an inference that can be generalized to the population
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The sampling process… POPULATION INFERENCE SAMPLE
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Steps in sampling... 1. Define population (N) to be sampled
2. Determine sample size (n) 3. Control for bias and error 4. Select sample
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Random sampling methods...
1. Simple random sampling 2. Stratified sampling 3. Cluster sampling 4. Systematic sampling
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1) Random Sampling Random samples are selected by using chance methods or random numbers. One such method is to number each subject in the population. Then place numbered cards in a bowl, mix them thoroughly, and select as many cards as needed. The subjects whose numbers are selected constitute the sample.
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advantages… …easy to conduct …strategy requires minimum knowledge of the population to be sampled
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disadvantages… …need names of all population members …may over- represent or under- estimate sample members …there is difficulty in reaching all selected in the sample
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2. Stratified sampling the process of selecting a sample that allows identified subgroups in the defined population to be represented in the same proportion that they exist in the population
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advantages… …more precise sample …can be used for both proportions and stratification sampling …sample represents the desired strata
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disadvantages… …need names of all population members …there is difficulty in reaching all selected in the sample …researcher must have names of all populations
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3. Cluster sampling The process of randomly selecting intact groups, not individuals, within the defined population sharing similar characteristics. some means such as geographic area or schools in a large school district, etc.
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advantages… …efficient …researcher doesn’t need names of all population members …reduces travel to site …useful for educational research
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disadvantages… …fewer sampling points make it less like that the sample is representative
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4. Systematic sampling The process of selecting individuals within the defined population from a list by taking every K th name.
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For example, suppose there were 2000 subjects in the population and a sample of 50 subjects were needed. Since , then k 40, and every 40th subject would be selected; however, the first subject (numbered between 1 and 40) would be selected at random. Suppose subject 12 were the first subject selected; then the sample would consist of the subjects whose numbers were 12, 52, 92, etc., until 50 subjects were obtained.
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advantages… …sample selection is simple
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disadvantages… …all members of the population do not have an equal chance of being selected …the Kth person may be related to a periodical order in the population list, producing unrepresentativeness in the sample
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assignment Work in groups of 4. create a sway that summarize the four sampling techniques that we studied today. Mention three example for each type. Submit your work in your Class Note Collaboration Section
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