Sampling design

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In the theory of finite population sampling, a sampling design specifies for every possible sample its probability of being drawn.

Mathematical formulation

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Mathematically, a sampling design is denoted by the function P(S) which gives the probability of drawing a sample S.

An example of a sampling design

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During Bernoulli sampling, P(S) is given by

P(S)=qNsample(S)×(1q)(NpopNsample(S))

where for each element q is the probability of being included in the sample and Nsample(S) is the total number of elements in the sample S and Npop is the total number of elements in the population (before sampling commenced).

Sample design for managerial research

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In business research, companies must often generate samples of customers, clients, employees, and so forth to gather their opinions. Sample design is also a critical component of marketing research and employee research for many organizations. During sample design, firms must answer questions such as:

  • What is the relevant population, sampling frame, and sampling unit?
  • What is the appropriate margin of error that should be achieved?
  • How should sampling error and non-sampling error be assessed and balanced?

These issues require very careful consideration, and good commentaries are provided in several sources.[1][2]

See also

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References

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  1. ^ Salant, Priscilla, I. Dillman, and A. Don. How to conduct your own survey. No. 300.723 S3.. 1994.
  2. ^ Hansen, Morris H., William N. Hurwitz, and William G. Madow. "Sample Survey Methods and Theory." (1953).

Further reading

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  • Sarndal, Swenson, and Wretman (1992), Model Assisted Survey Sampling, Springer-Verlag, Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).