Udemy

Statistics: Regression Analysis Using Excel

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  • 896 Students
  • Updated 7/2024
4.5
(47 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
1 Hour(s) 50 Minute(s)
Language
English
Taught by
Stephen Peplow
Rating
4.5
(47 Ratings)
2 views

Course Overview

Statistics: Regression Analysis Using Excel

Quantifying relationships within data using Excel

Regression is an important statistical tool. Using regression, we can detect and quantify relationships within a data set. For example, you have a data set of truck distances driven and stops made. Using this information, we can construct an equation which allows prediction of duration given distance number of stops. This would be of great use to anyone having to give out quotations.

I show you how to check whether your regression actually works and how accurate it is.

Indicator or 'dummy' variables are an important source of information, and I show you how to convert textual data into dummy variables for inclusion in the regression analysis. We know how long repair jobs take and months since last service. Does including information about whether the job was electrical or mechanical make predicted repair time any more accurate?

Sales go up at certain seasons: being able to measure those increases and predict them is highly useful.

We also cover elasticity, a topic often missed out in regression courses. Using elasticity, we can predict the effect on sales volume in precent of a percent change in selling price.

I provide detailed explanations and provide the datasets so that you can follow along.

The pace of the course is measured and step by step, each section building on the last. The datasets I use in the examples are included so that you can run your own regressions and compare results.

Course Content

  • 12 section(s)
  • 13 lecture(s)
  • Section 1 Introduction
  • Section 2 Defining the regression equation
  • Section 3 The method of least squares
  • Section 4 Loading Data Analysis
  • Section 5 Running a regression
  • Section 6 Accuracy and Significance
  • Section 7 Adding more variables
  • Section 8 Price elasticity
  • Section 9 The indicator variable
  • Section 10 Linear trends and time
  • Section 11 Seasonality
  • Section 12 Checking the assumptions

What You’ll Learn

  • Use Excel to quantify relationships within data, Use data to predict quantifiable outcomes, Incorporate seasonality into predictions, Measure the strength of the relationship between one or more independent and one dependent variable


Reviews

  • C
    Chris Cataldi
    4.5

    Great course with clear explanations of how to run regressions in Excel. I'd like to see more real-world examples with additional opportunities to practice running and interpreting regressions, but overall, this is a really great course.

  • A
    Ashutosh Sharma
    3.5

    Sir, can you please provide more clarity on checking assumptions for linear regression analysis.

  • J
    Jorge Cordero
    4.0

    overall very good, would have also loved to see lagged variable regression

  • K
    Karl Fischer
    5.0

    Fantastic teacher and examples - pace was perfect for me and level of detail and reasons why certain tactics are used were made quite clear for me --- Strongly recommend if you have to forecast

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