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Introductory Statistics Introductory Statistics
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The Five Processes in Statistics
(Daniel) Design the Study (Can) Collect Data (Discern) Describe the Data (More) Make Inference (Truth) Take Action
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Questions that you may address
Who are safer drivers at BYU-I, male/female, Utahns or non-Utahns? Who is likely to win the presidential race? Is a vaccination effective in treating children? Is this drug rehabilitation program effective?
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Population and Sample What would be population of interest? Who are safer drivers at BYU-I, male/female, Utahns or non-Utahns? Who is likely to win the presidential race? Is a vaccination effective in treating children? Is this drug rehabilitation program effective? Feasible to get data from everyone?
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Descriptive Statistics
Two Types of Descriptive Statistics Graphical Numerical (e.g. Average, Median, Percentage, correlation)
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Inferential Statistics - then Take Action
Inference vs Deduction Deduction – Most Math Inference - Statistics Take Sample of U.S. to find that 49% of sample would vote for Obama. We would infer this percent (with Margin of Error) to the whole population of the U.S. Large Small Small - Sample Large - Population
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Quantitative vs Categorical
Quantitative (Numerical) Ex. Height, Body Temperature, Cost of new medical equipment, Number of Siblings, Typical Questionnaire ratings Categorical (Non-numerical) Ex. Gender, Class in College, Race
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Types of Data Collecting
Census Taken every Ten Year Observational Study – Collects Data but does not attempt to manipulate or influence the outcomes Examples: Household and Governmental Surveys, Exit Polls after elections Designed Experiment – applies a treatment to individuals and attempts to isolate the effect on the outcome Examples: Drug, Vaccination Treatment
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Sampling from the Population
Simple Random Sample – A Probability Sample Consists of individuals from the population chosen in such a way that every set of n individuals has an equal chance of being selected (names out of a hat) – class example We do Random Sampling to Minimize Bias Other Valid Sampling Methods Stratified Sampling – Divide Population into groups and do a SRS for each group Cluster Sampling – Divide the Population into groups, take a SRS of the groups and sample everyone in the selected groups Systematic Sampling - Select every kth individual and then choose the first person with a random start. Invalid Sampling Methods – Introduce Bias Voluntary Response Sampling Convenience Sampling
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Vocabulary for Experiments
Subjects – Person or object in study Response Variable – Variable of Interest Treatment Groups – Variable(s) that describe or explain the changes in the response variable Principles of Experimental Design Control – Control any possible lurking variables Randomize – Randomize Subjects to Specific Treatments Replicate – Have as many Subjects for each Treatment Example - Jonas Salk – Vaccination for Polio Double Blind Study Placebo Group
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