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way of thinking for which math is the tool |
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studying a portion of the population |
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studies the whole population by surveying the entire population |
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Convenience Sampling, Voluntary Response |
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Interviews easiest to reach (i.e. friends) |
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measures only strong opinions |
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Exploratory Data Analysis |
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discover and describe what data say by using graphs and numerical summaries |
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measures variables, but does not attempt to influence the responses. Records values for a variable of interest. |
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deliberately imposes some treatment on individuals to influence their response |
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effects on a response variable cannot be distinguished from another lurking variable.
Example: Those who attend church (explanatory variable x) generally live longer (response variable y). This is a correlation. However, lurking variable z (behavior, genes, etc) might affect variable y. |
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Simple Random Sampling (SRS) |
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Can be chosen through TRD. Each sample has an equal and random chance of being selected. |
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sample chosen by chance. must know which samples are possible and the probability it is. |
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for a large population spread over a wide area, sample important groups (strata) separately, then combine the results.
Congress is an example. |
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Differences between Studies and Experiments |
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Studies: can only show a correlation, no treatments Experiments: cost more, more time involved, can show cause, imposes treatment |
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Undercoverage, nonresponse, response, wording of questions |
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some parts of the population, when taking a survey, are missed |
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(can be 30% or more) higher in urban areas |
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Telescoping - fault memory - Bias towards interviewer's characteristics - Respondents may lie, especially about illegal behavior |
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word questions so they are not misleading or confusing |
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select small samples within a larger population |
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Divide population into clusters & randomly choose a few clusters to survey. Survey everyone in the clusters. |
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experiment objects; cannot be human. Humans are called subjects instead. |
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explains changes. generally the treatment. |
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Measure of what happened (or not) |
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generally the explanatory variable. combination of factor & level. |
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value or amount of a factor |
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Example: Those who do well on SAT Math (variable x) also do well on SAT Verbal (variable y). This is a correlation. However, lurking variable z (i.e. cheating, school education) can cause either of the good schools. |
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Principles of Experimentation |
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1. Randomization (balance subject variables - chance to assign E.U. to treatments) 2. Replication (each treatment on many units - reduce chance variation) 3. Control (for lurking variables) |
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just getting treatment, in this case - a treatment with no value, causes a change. |
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Design an experiment to test if SAT classes really work |
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1. Label students 01-90 and use TRD to separate them into 3 treatment groups. 3 different treatments, 1 for each group with a fixed time (factor). Then compare response variables (change in test scores) .
This employs 1 factor and 3 levels. |
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Design an experiment to test if SAT classes really work (other option) |
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30 students from Mills with a 3.5 GPA average are to take a practice SAT test at the same time. Then, the students are divided into 2 groups at random. One group (w/ the explanatory variable) will be forced to attend 8 weeks of SAT class 4x a week. The other half will be asked to study independently. |
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controls a single variable that we think will affect our response variable. |
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uses experimental units that are exactly the same except for treatment (i.e. twins) |
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the use of chance to divide experimental units into groups |
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describes response variables, factors (explanatory), layout of treatments. Focuses on comparison. |
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Statistically Significant |
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hope to see a difference in response so large its unlikely just chance variation |
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all E.U. are allocated at random among all treatments |
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neither the subjects nor those who work with them know which treatment a subject receives. Avoids unconscious bias. |
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subjects or treatments or setting of an experiment may not realistically duplicate the conditions we want to study |
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120 subjects -> block for gender = 60 men, 60 women -> split into groups of 20 (3 treatments each) |
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Subjects (twins) -> random assignment -> each group receives separate treatment |
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group of E.U.'s that are known before the experiment to be similar in some way that is expected to affect the response of the treatments |
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random assignment of units to treatments is carried out separately in each group |
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1. State the problem or describe the experiment. 2. State the assumptions. 3. Assign digits to represent outcomes. 4. Simulate many repetitions 5 State your conclusions |
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of trials means that the results of one trial does not influence the result of the next trial (EX: toin cosses, heads on first toss does not increase the chance that the next will be a tail) |
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Mr. Belzer wnats to get student input on a new tardy policy. He wants to be sure that he gets opinions from students in all grades. What would be the best sampling technique? |
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Stratified Random Sampling |
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Compare and contrast Stratified Random Sampling and Cluster Sampling. |
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In stratified random sapling, a population is separated into stratas (groups). Then, a subject(s) is selected randomly be surveyed. This subject(s) is designed to represent the whole strata.
In cluster sampling, a population is also separated into groups. A cluster is randomly chosen to be surveyed. However in this case, everyone in the cluster is surveyed. |
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He decides to choose 50 students from the student body of 800 students. |
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Population: 800, label: 01-800. |
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