Linear Regression for Business Statistics
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Linear Regression for Business Statistics
This course is part of Business Statistics and Analysis Specialization
Instructor: Sharad Borle
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There are 4 modules in this course
Regression Analysis is perhaps the single most important Business Statistics tool used in the industry. Regression is the engine behind a multitude of data analytics applications used for many forms of forecasting and prediction.
This is the fourth course in the specialization, "Business Statistics and Analysis". The course introduces you to the very important tool known as Linear Regression. You will learn to apply various procedures such as dummy variable regressions, transforming variables, and interaction effects. All these are introduced and explained using easy to understand examples in Microsoft Excel. The focus of the course is on understanding and application, rather than detailed mathematical derivations. Note: This course uses the ‘Data Analysis’ tool box which is standard with the Windows version of Microsoft Excel. It is also standard with the 2016 or later Mac version of Excel. However, it is not standard with earlier versions of Excel for Mac. WEEK 1 Module 1: Regression Analysis: An Introduction In this module you will get introduced to the Linear Regression Model. We will build a regression model and estimate it using Excel. We will use the estimated model to infer relationships between various variables and use the model to make predictions. The module also introduces the notion of errors, residuals and R-square in a regression model. Topics covered include: • Introducing the Linear Regression • Building a Regression Model and estimating it using Excel • Making inferences using the estimated model • Using the Regression model to make predictions • Errors, Residuals and R-square WEEK 2 Module 2: Regression Analysis: Hypothesis Testing and Goodness of Fit This module presents different hypothesis tests you could do using the Regression output. These tests are an important part of inference and the module introduces them using Excel based examples. The p-values are introduced along with goodness of fit measures R-square and the adjusted R-square. Towards the end of module we introduce the ‘Dummy variable regression’ which is used to incorporate categorical variables in a regression. Topics covered include: • Hypothesis testing in a Linear Regression • ‘Goodness of Fit’ measures (R-square, adjusted R-square) • Dummy variable Regression (using Categorical variables in a Regression) WEEK 3 Module 3: Regression Analysis: Dummy Variables, Multicollinearity This module continues with the application of Dummy variable Regression. You get to understand the interpretation of Regression output in the presence of categorical variables. Examples are worked out to re-inforce various concepts introduced. The module also explains what is Multicollinearity and how to deal with it. Topics covered include: • Dummy variable Regression (using Categorical variables in a Regression) • Interpretation of coefficients and p-values in the presence of Dummy variables • Multicollinearity in Regression Models WEEK 4 Module 4: Regression Analysis: Various Extensions The module extends your understanding of the Linear Regression, introducing techniques such as mean-centering of variables and building confidence bounds for predictions using the Regression model. A powerful regression extension known as ‘Interaction variables’ is introduced and explained using examples. We also study the transformation of variables in a regression and in that context introduce the log-log and the semi-log regression models. Topics covered include: • Mean centering of variables in a Regression model • Building confidence bounds for predictions using a Regression model • Interaction effects in a Regression • Transformation of variables • The log-log and semi-log regression models
What's included
7 videos13 readings7 assignments
7 videos•Total 65 minutes
- Meet the Professor•2 minutes
- Introducing Linear Regression: Building a Model•8 minutes
- Introducing Linear Regression: Estimating the Model•10 minutes
- Introducing Linear Regression: Interpreting the Model•12 minutes
- Introducing Linear Regression: Predictions using the Model•10 minutes
- Errors, Residuals and R-square•15 minutes
- Normality Assumption on the Errors•8 minutes
13 readings•Total 130 minutes
- Course FAQs•10 minutes
- Pre-Course Survey•10 minutes
- Toy Sales.xlsx•10 minutes
- Slides, Lesson 1•10 minutes
- Toy Sales.xlsx•10 minutes
- Slides, Lesson 2•10 minutes
- Toy Sales.xlsx•10 minutes
- Slides, Lesson 3•10 minutes
- Toy Sales.xlsx•10 minutes
- Slides, Lesson 4•10 minutes
- Toy Sales2.xlsx•10 minutes
- Slides, Lesson 5•10 minutes
- Slides, Lesson 6•10 minutes
7 assignments•Total 240 minutes
- Regression Analysis: An Introduction•60 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
What's included
6 videos15 readings7 assignments
6 videos•Total 74 minutes
- Hypothesis Testing in a Linear Regression•12 minutes
- Hypothesis Testing in a Linear Regression: using 'p-values'•8 minutes
- Hypothesis Testing in a Linear Regression: Confidence Intervals•9 minutes
- A Regression Application Using Housing Data•15 minutes
- 'Goodness of Fit' measures: R-square and Adjusted R-square•12 minutes
- Categorical Variables in a Regression: Dummy Variables•18 minutes
15 readings•Total 150 minutes
- Toy Sales.xlsx•10 minutes
- Toy Sales (with regression).xlsx•10 minutes
- Toy Sales (with regression, t-statistic).xlsx•10 minutes
- Toy Sales (with regression, t-cutoff)•10 minutes
- Slides, Lesson 1•10 minutes
- Toy Sales.xlsx•10 minutes
- Slides, Lesson 2•10 minutes
- Toy Sales.xlsx•10 minutes
- Slides, Lesson 3•10 minutes
- Home Prices.xlsx•10 minutes
- Slides, Lesson 4•10 minutes
- Home Prices.xlsx•10 minutes
- Slides, Lesson 5•10 minutes
- deliveries1.xlsx•10 minutes
- Slides, Lesson 6•10 minutes
7 assignments•Total 240 minutes
- Regression Analysis: Hypothesis Testing and Goodness of Fit•60 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
What's included
6 videos12 readings7 assignments
6 videos•Total 62 minutes
- Dummy Variable Regression: Extension to Multiple Categories•8 minutes
- Dummy Variable Regression: Interpretation of Coefficients•6 minutes
- Dummy Variable Regression: Estimation, Interpretation of p-values•18 minutes
- A Regression Application Using Refrigerator data•13 minutes
- A Regression Application Using Refrigerator data (continued...)•7 minutes
- Multicollinearity in Regression Models: What it is and How to Deal with it•10 minutes
12 readings•Total 120 minutes
- deliveries2.xlsx•10 minutes
- Slides, Lesson 1•10 minutes
- Slides, Lesson 2•10 minutes
- deliveries2.xlsx•10 minutes
- deliveries2 (for prediction).xlsx•10 minutes
- Slides, Lesson 3•10 minutes
- Refrigerators.xlsx•10 minutes
- Slides, Lesson 4•10 minutes
- Cars.xlsx•10 minutes
- Slides, Lesson 5•10 minutes
- Cars.xlsx•10 minutes
- Slides, Lesson 6•10 minutes
7 assignments•Total 200 minutes
- Regression Analysis: Model Application and Multicollinearity•20 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
What's included
7 videos11 readings7 assignments
7 videos•Total 63 minutes
- Mean Centering Variables in a Regression Model•13 minutes
- Building Confidence Bounds for Prediction Using a Regression Model•9 minutes
- Interaction Effects in a Regression: An Introduction•6 minutes
- Interaction Effects in a Regression: An Application•9 minutes
- Transformation of Variables in a Regression: Improving Linearity•7 minutes
- The Log-Log and the Semi-Log Regression Models•18 minutes
- Course 4 Recap•1 minute
11 readings•Total 110 minutes
- Height and Weight.xlsx•10 minutes
- Slides, Lesson 1•10 minutes
- Height and Weight.xlsx•10 minutes
- Slides, Lesson 2•10 minutes
- Slides, Lesson 3•10 minutes
- Height and Weight.xlsx•10 minutes
- Slides, Lesson 4•10 minutes
- Slides, Lesson 5•10 minutes
- Cocoa.xlsx•10 minutes
- Slides, Lesson 6•10 minutes
- End-of-Course Survey•10 minutes
7 assignments•Total 152 minutes
- Regression Analysis: Various Extensions•22 minutes
- Practice Quiz•30 minutes
- Practice Quiz•4 minutes
- Practice Quiz•30 minutes
- Practice Quiz•30 minutes
- Practice Quiz•6 minutes
- Practice Quiz•30 minutes
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Reviewed on Jun 19, 2020
Great learning with examples from real life, great approach to understand the concept without need to deep dive into the mathematical complexities. A great base to get into Data/Business Analytics.
Reviewed on Jun 21, 2020
Its a wonderful course and all the concept has been covered and it is highly recommended to a person who wants to pursue career in business analyst.
Reviewed on Aug 12, 2020
A very complex last quiz in comparison with the others, truly serves as a skill-checker, without directly asking about a lot of topics. Loved the course, thank you!
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