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Arrangements or patterns for producing data are called designs

Arrangements or patterns for producing data are called designs. Anecdotal Evidence. Evidence based on haphazardly selected individual cases, which often come to our attention because they are striking in some way.

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Arrangements or patterns for producing data are called designs

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  1. Arrangements or patterns for producing data are called designs

  2. Anecdotal Evidence • Evidence based on haphazardly selected individual cases, which often come to our attention because they are striking in some way. • One of the scientific rules is that anecdotal evidence doesn't cut it (at least not alone). • The main value of the collection of anecdotal evidence is that it might inspire someone to look into the matter properly.

  3. Basic Terms • Available data are data that were produced in the past for some other purpose but that may help answer a present question. • Population: The collection of individuals or items of interest • examples: all residents of KY, all hospitals in U.S., all trees in a forest • Sample: The subset of the population on which we make measurements. We call the measurements data.

  4. Experiment: a planned activity whose results yields data • Select 3 people and record weight • Flip 8 coins and count # of heads • Sampling frame: list of elements in population • Simple random sample: sample selected such that all possible samples have an equal chance of being selected

  5. Inferential Statistics • Methods of making inference about a population based on the information in a sample  • We wish to control the probability of errors • How do we select the sample? • How large is the sample? • How do we collect the data? • How do we analyze the data?

  6. Types of Data • qualitative: non-numerical categorization • Gender, religion preference, hair color • quantitative: numerical data • discrete: things that can be counted • # of children, # of accidents • continuous: things that are measured • time, weight, distance

  7. statistic: a numerical characteristic of a sample • parameter: a numerical characteristic of a population

  8. Design of Experiments: Basic Vocabulary • The individuals on which the experiment is done are the experimental units. • If human, they are called subjects. • Treatments are specific experimental conditions applied to the units. • Independent variables in an experiment are often called factors. • Specific values of these factors are classified as levels.

  9. Principles of Statistical Design of Experiments • Control the effects of lurking variables on the response, most simply by comparing two or more treatments • Randomize: use chance to assign subjects to the treatments • Table of random digits • Random number generator • Replicate: reduces the role of chance variation and makes the experiment more sensitive to differences among the treatments

  10. Sampling Design • Voluntary Response Sample: consists of people who choose themselves by responding to a general appeal • Simple Random Sample: consists of n individuals from the population chosen in such a way that every set of n individuals has an equal chance to be the sample actually selected • Probability Sample: sample chosen by chance; must know what samples are possible, and what probability each possible sample has

  11. Stratified Random Sample: Divides population into groups of similar individuals, called strata, then chooses separate simple random samples in each stratum and combines these to form the full sample • Multistage samples select successively smaller groups within the population in stages, resulting in a sample consisting of clusters of individuals. Each stage may employ a simple random sample, a stratified sample, or another type of sample.

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