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Excel Statistics Essential Training: 1 (2019)

Excel Statistics Essential Training: 1 (2019)

3h 38mIntermediate2019-06-11

Authors

Joseph Schmuller

Joseph Schmuller

Teacher, Writer

Course details

Data isn’t valuable until you put it to good use. Statistics transforms data into meaningful information, enabling organizations to make better decisions and predictions. That’s why statistics—collecting, analyzing, and presenting data—is a valuable skill for anyone in business or academia. In this course, Joseph Schmuller teaches the fundamentals of descriptive and inferential statistics and shows you how to apply them in Microsoft Excel—an inexpensive and accessible application that offers an array of powerful statistical tools. Using the built-in functions, and charts, along with the Analysis Toolpak add-on, Joe explains how to organize and present data, understand sampling distributions, test hypotheses, and draw conclusions. He covers probabilities, averages, variability, distribution, estimation, variance, regression testing, and more. By the end of the course, you should be able to fully understand and apply basic statistical concepts to a wide variety of data.

Learning objectives
Explain how to calculate simple probability.
Review the Excel statistical formulas for finding mean, median, and mode.
Differentiate statistical nomenclature when calculating variance.
Identify components when graphing frequency polygons.
Explain how t-distributions operate.
Describe the process of determining a chi-square.

Skills covered

Microsoft OfficeSpreadsheetsMicrosoft ExcelData AnalysisEssential TrainingData ScienceBusiness Analysis and StrategyBusiness Software and ToolsMicrosoft

Concepts

0. Introduction

  • 01 - What is data
  • 02 - The big picture

1. Excel Statistics Fundamentals

  • 03 - Using Excel functions
  • 04 - Understanding Excel statistics functions
  • 05 - Working with Excel graphics
  • 06 - Installing the Excel Analysis Toolpak

2. Types of Data

  • 07 - Differentiating data types
  • 08 - Independent and dependent variables

3. Probability

  • 09 - Defining probability
  • 10 - Calculating probability
  • 11 - Understanding conditional probability

4. Central Tendency

  • 12 - The mean and its properties
  • 13 - Working with the median
  • 14 - Working with the mode

5. Variability

  • 15 - Understanding variance
  • 16 - Understanding standard deviation
  • 17 - Z-scores

6. Distributions

  • 18 - Organizing and graphing a distribution
  • 19 - Graphing frequency polygons
  • 20 - Properties of distributions
  • 21 - Probability distributions

7. Normal Distributions

  • 22 - The standard normal distribution
  • 23 - Meeting the normal distribution family
  • 24 - Standard normal distribution probability
  • 25 - Visualizing normal distributions

8. Sampling Distributions

  • 26 - Introducing sampling distributions
  • 27 - Understanding the central limit theorem
  • 28 - Meeting the t-distribution

9. Estimation

  • 29 - Confidence in estimation
  • 30 - Calculating confidence intervals

10. Hypothesis Testing

  • 31 - The logic of hypothesis testing
  • 32 - Type I errors and Type II errors

11. Testing Hypotheses about a Mean

  • 33 - Applying the central limit theorem
  • 34 - The z-test and the t-test

12. Testing Hypotheses about a Variance

  • 35 - The chi-squared distribution

13. Independent Samples Hypothesis Testing

  • 36 - Understanding independent samples
  • 37 - Distributions for independent samples
  • 38 - The z-test for independent samples
  • 39 - The t-test for independent samples

14. Matched Samples Hypothesis Testing

  • 40 - Understanding matched samples
  • 41 - Distributions for matched samples
  • 42 - The t-test for matched samples

15. Testing Hypotheses about Two Variances

  • 43 - Working with the F-test

16. The Analysis of Variance

  • 44 - Testing more than two parameters
  • 45 - Introducing ANOVA
  • 46 - Applying ANOVA

17. After the Analysis of Variance

  • 47 - Types of post-ANOVA testing
  • 48 - Post-ANOVA planned comparisons

18. Repeated Measures Analysis

  • 49 - What is repeated measures
  • 50 - Applying repeated measures ANOVA

19. Hypothesis Testing with Two Factors

  • 51 - Statistical interactions
  • 52 - Two-factor ANOVA
  • 53 - Performing two-factor ANOVA

20. Regression

  • 54 - Understanding the regression line
  • 55 - Variation around the regression line
  • 56 - Analysis of variance for regression
  • 57 - Multiple regression analysis

21. Correlation

  • 58 - Hypothesis testing with correlation
  • 59 - Understanding correlation
  • 60 - The correlation coefficient
  • 61 - Correlation and regression

Conclusion

  • 62 - Next steps

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