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Lecture 3 -- Sampling

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Lecture 3 on Sampling explores various probabilistic and non-probabilistic sampling methods, their advantages, limitations, and applications in software engineering research, emphasizing the challenges of defining sampling frames and ensuring representativeness in studies.

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Representativeness is a very difficult matter. In a way, representativeness is the degree to which the properties of a sample resemble those of a target population. Obviously, a sample can be representative with respect to one dimension and not with respect to another dimension.

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