209x Filetype PPTX File size 1.11 MB Source: medicine.wright.edu
Hypothesis Testing The second type of inferential statistics Hypothesis testing is a statistical method used to make comparisons between a single sample and a population, or between 2 or more samples. The result of a statistical hypothesis test is a probability, called a p-value, of obtaining the results (or more extreme results) from tests of samples, if the results really weren’t true in the population. Commonly Used Statistical Tests Tests for quantitative data (i.e. comparing means): Two groups: t-test (paired or 2-sample) Two or more groups (ANOVA: analysis of variance) Tests for categorical (nominal, ordinal) data (i.e. comparing proportions): Chi-square, Fisher’s exact test Tests for association between two quantitative variables: Correlation and regression Hypothesis Testing In all hypothesis testing, the numerical result from the statistical test is compared to a probability distribution to determine the probability of obtaining the result if the result is not true in the population. Examples of normal two distribution probability t distribution distributions: the normal and t- distributions -4 -3 -2 -1 0 1 2 3 4 Steps in Statistical Hypothesis Testing 1. Formulate null and research hypotheses 2. Set alpha error (Type I error) and beta error (Type II error) 3. Compute statistical test and determine statistical significance 4. Draw conclusion Step 1: Formulate Null and Research Hypotheses Null Hypothesis (H0): There is no difference between groups; there is no relationship between the independent and dependent variable(s). Research Hypothesis (H ): R There is a difference between groups; there is a relationship between the independent and dependent variable(s).
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