5. Quick Recap: Populations and Samples

5. Quick Recap: Populations and Samples

Foundations of Quantitative Research in Political Science

Quick Recap: Populations and Samples

Population

  • The entire group of units that we want to draw conclusions about.
  • Whatever unit or thing we are interested in, the population would be composed of every one of those units.
  • A population does not necessarily refer to people: it can be composed of countries, states, organizations, groups of people, etc.

Sample

  • A subset of units taken from the population that we collect data on.
  • A sample is representative of the population if it accurately reflects the characteristics of the population.
    • In other words, a sample is representative of the population if it looks very similar to the population.

Measuring populations and samples

  • Parameter
    • A measure of a characteristic of a population (ex. mean, median, mode, standard deviation, etc.)
    • The “true” value we want to know
    • A fixed measure that does not change
  • Statistic
    • A measure of a characteristic of a sample (ex. mean, median, mode, standard deviation, etc.)
    • Unique to each sample, so it changes depending on the sample

Inference

  • Drawing conclusions about populations using samples.
  • Can only be done with samples that are representative of the population.
  • Can only be done with samples that are large enough.

Types of samples

    • Nonprobability samples
      • Not everyone in the population has a probability of being selected into the sample.
      • Are not representative of the population.
      • Cannot use to make inferences about population.
    • Probability samples
      • Everyone in the population has some probability of being selected into the sample.
      • Can create samples that are representative of the population.
      • Includes various types of samples, most well-known is the simple random sample (here referred to as “random sample”).

Random sample

    • Each unit in the population has the same probability of being selected to be in the sample
      • Each unit has an equal chance of being in the sample
    • Gives us samples that are representative of the population
      • Sample will look very similar to our population across various characteristics
    • We can use random samples for inference!
    • Funny video linkLinks to an external site.

Dig Deeper

Populations, samples, and inference

Types of samples

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