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AP Statistics

AP Statistics . Section 5.1 Designing Samples. Objective: To be able to identify and use different sampling techniques. Observational Study : individuals are observed and variables of interest are measured. No influence on the responses.

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AP Statistics

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  1. AP Statistics Section 5.1 Designing Samples

  2. Objective: To be able to identify and use different sampling techniques. Observational Study: individuals are observed and variables of interest are measured. No influence on the responses. Experiment: actively impose a treatment on a group in order to observe a response. Population: the entire group of individuals that we desire information about.

  3. Sample: a subset of the population that we actually examine in order to gather information about the population. Census: attempts to contact every individual in the entire population. Sampling Method: the process used to choose the sample. Sampling frame: the actual list of individuals from which the sample is actually selected.

  4. Types of Sampling Techniques: • Voluntary Response Sample: consists of individuals who choose themselves to respond to a general appeal. • Convenience Sample: sampling which chooses individuals that are easiest to reach. Biased: systematically favors certain outcomes.

  5. Simple Random Sample: (SRS) a sample of size n in which each individual has the same chance of being selected and each set of n individuals has the same chance of being selected. Steps: 1. Label subjects. Using the RNT: • <10 use digits 0 – 9 • 11 – 100 use digits 00 – 99 • 101 – 1000 use digits 000 – 999 (and so on) • Select x digits at a time. • Skip repeats and specified digits. • Stopping rules

  6. Ex. Select a sample of size 3 from students in this class using line 110 of the RNT. • Probability Sample: a sample chosen by chance. We must know what samples are possible and what chance each sample has. • Stratified Random Sample: • Divide the population into groups of similar individuals called strata. • Choose an SRS from each strata. • Combine all the SRSs to form the one sample

  7. Ex. Choose a stratified random sample of size 4 from a population that has 20 individuals (15M / 5F). Use line 120 from the RNT to do so. • Cluster Sample: • Divide the population into heterogeneous groups (clusters). • Assign each cluster a number. • Choose an SRS of the clusters. • Combine all the members of the randomly selected clusters to form the sample. Ex of clusters:

  8. Multistage Sample: restricts random selection by choosing the samples in stages. Uses multiple sampling techniques within the sampling process. Ex. • Systematic Random Sample: • Begin by finding k. • Think of the population in k groups. • Randomly select the first subject/unit by randomly selecting a number from 1 to k. • This subject/unit is the first member of the sample. Continue to add k to this first number to get the remaining members of the sample.

  9. Ex. Choose a Systematic Random Sample from a class of 24 students where n = 4. Types of Bias: • Undercoverage: occurs when some subgroup of the population is unintentionally left out of the sampling process. • Nonresponse: occurs when an individual chosen for the sample can’t be contacted or refuses to cooperate.

  10. Response bias: when the behavior of the interviewer or the respondent affects the results. • Wording of the Question: when the phrasing of the questions leads to biased results. *Larger samples give more accurate and less variable results. However, if the data is poorly collected there is no way to fix biased results.

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