Chapter 4: Sampling Flashcards
1
Q
What are the four elements of a sampling plan?
A
- Who will be surveyed
- How many people should be surveyed
- how should the sample be chosen?
- When will the survey be given?
2
Q
What is the best predictor for reliable results in (survey) research?
A
- The quality of the sample
3
Q
What is a census and how is it different from a sample?
A
- Census - data collection of every member of the population.
Difference with a sample is that every member of the population is studies in a census
4
Q
What is a sampling frame?
A
- the list or resource that has elements of the defined population. It is the group of people that will participate in the study
5
Q
What are often pitfalls of a sampling frame?
A
- Impossible to generalize conclusion from web surveys to general populations (unless working with offline recruitment methods)
- Impossible to draw a sample out of the entire population
6
Q
What is coverage error?
A
- A mismatch between the target population and the frame population. The frame does not contain every member of the population
7
Q
What are the different forms of probability samples? (3)
A
- simple random sample –> every person has the same chance of being selected
- Stratified random sample - divide population into groups and draw samples of every group
- No sampling list available? Cluster sampling - large clusters divided into smaller clusters
8
Q
What are the different types of non-probability samples (5)?
A
- Convience sample - choose anyone who meets basic criteria
- Purposive sample - Choose people by interest, qualifications or typicallity
- Judgement sample - Choose based on judgement of the researcher
- Quota sample - Obtain participants in proportion to population size
- Snowball sample - identify one good participant who will invite the next and so on
9
Q
What is statistical power?
A
- The probability that you accept H1 (there is a difference) in case that there is an actual effect or difference.
10
Q
What is Type 1 error in statistics?
A
- A false rejection of H0. You say there is an effect when in real life there is not
11
Q
What is a Type 2 error in statistics?
A
- Failure to reject null hypothesis. You say there is no difference when in fact there is one!