Learn statistics. Dr. Joseph Schmuller uses Microsoft Excel to teach the fundamentals of descriptive and inferential statistics.
Overview
Syllabus
Introduction
- What is data?
- The big picture
- Using Excel functions
- Understanding Excel statistics functions
- Working with Excel graphics
- Installing the Excel Analysis Toolpak
- Differentiating data types
- Independent and dependent variables
- Defining probability
- Calculating probability
- Understanding conditional probability
- The mean and its properties
- Working with the median
- Working with the mode
- Understanding variance
- Understanding standard deviation
- Z-scores
- Organizing and graphing a distribution
- Graphing frequency polygons
- Properties of distributions
- Probability distributions
- The standard normal distribution
- Meeting the normal distribution family
- Standard normal distribution probability
- Visualizing normal distributions
- Introducing sampling distributions
- Understanding the central limit theorem
- Meeting the t-distribution
- Confidence in estimation
- Calculating confidence intervals
- The logic of hypothesis testing
- Type I errors and Type II errors
- Applying the central limit theorem
- The z-test and the t-test
- The chi-squared distribution
- Understanding independent samples
- Distributions for independent samples
- The z-test for independent samples
- The t-test for independent samples
- Understanding matched samples
- Distributions for matched samples
- The t-test for matched samples
- Working with the F-test
- Testing more than two parameters
- Introducing ANOVA
- Applying ANOVA
- Types of post-ANOVA testing
- Post-ANOVA planned comparisons
- What is repeated measures?
- Applying repeated measures ANOVA
- Statistical interactions
- Two-factor ANOVA
- Performing two-factor ANOVA
- Understanding the regression line
- Variation around the regression line
- Analysis of variance for regression
- Multiple regression analysis
- Hypothesis testing with correlation
- Understanding correlation
- The correlation coefficient
- Correlation and regression
- Next steps
Taught by
Joseph Schmuller