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Data Analysis: Inferential Statistics Dr. Mark Baron University of South Dakota Inferential Statistics • that part of statistical procedures that deals with making inferences about population parameters from sample statistics • Statistics - sample measures • Parameters - population measures Dr. Mark Baron University of South Dakota Uses of Inferential Stats • Testing hypotheses about population parameters • Estimating population parameters • Point estimate • Interval estimate Dr. Mark Baron University of South Dakota Sampling Distribution • The distribution (usually theoretical) of all possible values of the statistic from all possible samples of a given size selected from the population Dr. Mark Baron University of South Dakota Central Limit Theorum • Given any population with mean μ and finite variance σ2, as the sample size increases without limit, the distribution of the sample mean approaches a normal distribution with mean μ and variance σ2/n, where n is the sample size Dr. Mark Baron University of South Dakota Standard Normal Distribution Dr. Mark Baron University of South Dakota Standard Normal Distribution • The normal distribution with a mean of 0 and a standard deviation of 1.0 • Z-score: Dr. Mark Baron x-x z= s University of South Dakota Significance Level (α) • Maximum probability that a sample statistic would differ significantly from the corresponding population parameter (or from another statistic) due to chance alone. • A criterion used in making the decision of whether or not to reject a hypothesis. Dr. Mark Baron University of South Dakota Errors in Hypothesis Testing • Null Hypothesis (Ho) - a hypothesis stated such that no difference or no relationship exists. • Ho: μ1 = μ2 OR Ho: μ1 - μ2 = 0 • Type I Error (α) - rejection of a true null hypothesis (i.e. finding a significant difference when it does not actually exist) • Type II Error (β) - failure to reject a false null hypothesis (i.e. failure to find a significant difference when it does exist) Dr. Mark Baron University of South Dakota Possible Testing Outcomes Reject Fail to Reject True Ho False Ho Type I Error (α) Correct Correct Type II Error (β) Dr. Mark Baron University of South Dakota Parametric Analyses • A set of statistical analyses that make the following parametric assumptions: • measurement of the dependent variable is on the interval scale • individuals' scores are independent • the scores are selected from a normally distributed population • when two or more populations are being studied, they have homogeneous variance (i.e. both have similar dispersions in their distributions) Dr. Mark Baron University of South Dakota Parametric Analyses • t test • independent means • dependent means / correlated means • Analysis of Variance (ANOVA) • • • • one-way ANOVA Independent variable(s) / dependent variable Post-hoc tests (Tukey / Scheffé / etc.) two-way ANOVA (main effects / interaction) Dr. Mark Baron University of South Dakota Parametric Analyses • Analysis of covariance (ANCOVA) • covariate • Multivariate ANOVA (MANOVA) • Regression (linear / multiple) • predictors / outcomes • regression coefficient (R) • Pearson product-moment • Canonical correlation Dr. Mark Baron University of South Dakota Nonparametric Analyses • Inferential statistics used to test null hypotheses when the parametric assumptions cannot be met • require few (if any) assumptions about the population • usually nominal and ordinal data • involve statistics other than means Dr. Mark Baron University of South Dakota Nonparametric Analyses • Chi Square (Χ2) • Goodness of Fit • Test of Independence • Correlation • Phi / Contingency Coefficient • Spearman Rho • Biserial / Point Biserial / Tetrachoric / Gamma Dr. Mark Baron University of South Dakota Nonparametric Analyses • • • • • Sign Test Rank-Sums Test Mann-Whitney U Test Kruskal-Wallis Test Friedman’s Test Dr. Mark Baron University of South Dakota Meta-analyses • a statistical procedure used to synthesize the results across numerous independently conducted research studies X exper - X control EFFECT SIZE = SD Dr. Mark Baron University of South Dakota