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Quantifying Relationships with Regression Models

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Quantifying Relationships with Regression Models

This course is part of Data Literacy Specialization

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Gain insight into a topic and learn the fundamentals.
4.6

23 reviews

Intermediate level
Some related experience required
1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
4.6

23 reviews

Intermediate level
Some related experience required
1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Build your subject-matter expertise

This course is part of the Data Literacy Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
  • Learn new concepts from industry experts
  • Gain a foundational understanding of a subject or tool
  • Develop job-relevant skills with hands-on projects
  • Earn a shareable career certificate

There are 4 modules in this course

This course will introduce you to the linear regression model, which is a powerful tool that researchers can use to measure the relationship between multiple variables. We’ll begin by exploring the components of a bivariate regression model, which estimates the relationship between an independent and dependent variable. Building on this foundation, we’ll then discuss how to create and interpret a multivariate model, binary dependent variable model and interactive model. We’ll also consider how different types of variables, such as categorical and dummy variables, can be appropriately incorporated into a model. Overall, we’ll discuss some of the many different ways a regression model can be used for both descriptive and causal inference, as well as the limitations of this analytical tool. By the end of the course, you should be able to interpret and critically evaluate a multivariate regression analysis.

While graphs are useful for visualizing relationships, they don't provide precise measures of the relationships between variables. Suppose you want to determine how an outcome of interest is expected to change if we change a related variable. We need more than just a scatter plot to answer this question. What should you do, for example, if you want to calculate whether air quality changes when vehicle emissions decline? Or if you want to calculate how consumer purchasing behavior changes if a new tax policy is implemented? To calculate these predicted effects, we can use a regression model. This module will first introduce correlation as an initial means of measuring the relationship between two variables. The module will then discuss prediction error as a framework for evaluating the accuracy of estimates. Finally, the module will introduce the linear regression model, which is a powerful tool we can use to develop precise measures of how variables are related to each other.

What's included

5 videos4 readings4 assignments

5 videosβ€’Total 28 minutes
  • Welcome Videoβ€’1 minute
  • Correlationβ€’6 minutes
  • Prediction Errorβ€’6 minutes
  • Introducing the Linear Regression Modelβ€’7 minutes
  • Interpreting Regression Modelsβ€’7 minutes
4 readingsβ€’Total 75 minutes
  • Spurious Correlationsβ€’15 minutes
  • Correlation in Statisticsβ€’15 minutes
  • What is a confusion matrix?β€’15 minutes
  • Linear Regression and Correlation (Intro & Sections 12.1-12.3)β€’30 minutes
4 assignmentsβ€’Total 70 minutes
  • Final Quiz on Regression Models: What They Are and Why We Need Themβ€’45 minutes
  • Correlation Practice Problemsβ€’5 minutes
  • Prediction Error Practice Problemsβ€’5 minutes
  • Linear Regression Practice Problemsβ€’15 minutes

Now that you've got a handle on the basics of regression analysis, the next step is to consider how to evaluate and modify a basic regression model. This module will introduce you to a common measure of model fit and the three core assumptions of regression analysis. In addition, we'll explore the special circumstance of conducting a regression analysis with a binary (AKA dummy) treatment variable. Dummy variables, which take on two values, are frequently used in statistics. Understanding how to use and interpret dummy variables provides a foundation for developing a multivariate regression model, which we'll get to in the next module.

What's included

3 videos4 readings4 assignments

3 videosβ€’Total 21 minutes
  • Model Fitβ€’6 minutes
  • Linear Regression Assumptionsβ€’6 minutes
  • Regression with a Binary Treatment Variableβ€’8 minutes
4 readingsβ€’Total 65 minutes
  • Measures of Fitβ€’10 minutes
  • The Regression Equationβ€’20 minutes
  • The Least Squares Assumptionsβ€’20 minutes
  • Dummy Variablesβ€’15 minutes
4 assignmentsβ€’Total 70 minutes
  • Final Quiz on Fitting and Evaluating a Bivariate Regressionβ€’45 minutes
  • Model Fit Practice Problemsβ€’5 minutes
  • Linear Regression Assumptions Practice Problemsβ€’5 minutes
  • Regression with a Binary Treatment Variable Practice Problemsβ€’15 minutes

The bivariate regression model is an essential building block of statistics, but it is usually insufficient in practice as a useful model for descriptive, causal or predictive inference. This is because there are usually multiple variables that impact a particular dynamic. Whether you are modeling political behavior, environmental processes or drug treatment outcomes, it is almost always necessary to account for multiple influences on an outcome of interest. This module will introduce the multivariate model of regression analysis and explain the appropriate ways to interpret and evaluate the results from a multivariate analysis.

What's included

4 videos3 readings4 assignments

4 videosβ€’Total 26 minutes
  • Constructing and Interpreting a Multivariate Modelβ€’8 minutes
  • Dummy Variable Setsβ€’8 minutes
  • Linear vs. Nonlinear Categorical Variablesβ€’7 minutes
  • Multivariate Model Fitβ€’4 minutes
3 readingsβ€’Total 55 minutes
  • Introduction to Multivariate Regression Analysisβ€’30 minutes
  • Interpreting Regression Coefficientsβ€’15 minutes
  • Adjusted R-Squared: What is it used for?β€’10 minutes
4 assignmentsβ€’Total 83 minutes
  • Final Assessment on Multivariate Regressionβ€’45 minutes
  • Multivariate Model Interpretation Practice Problemsβ€’8 minutes
  • Categorical Variable and Dummy Sets Practice Problemsβ€’20 minutes
  • Multivariate Model Fit Practice Problemβ€’10 minutes

Once you've mastered the OLS multivariate model, you're ready to learn about a wide array of regression modeling techniques. Remember, researchers should always employ modeling tools that best enable them to answer the question at hand. This module will focus on two tools in particular, interaction terms and models for binary dependent variables. Keep in mind, however, that there are numerous regression modeling tools that you can learn and implement based on the research question you're trying to answer. After you've developed a solid understanding of regression basics, you should feel capable of expanding this knowledge base as you move forward as a producer and consumer of analytics.

What's included

5 videos2 readings2 assignments1 peer review

5 videosβ€’Total 35 minutes
  • Interaction Terms: Introductionβ€’7 minutes
  • Interacting a Continuous and Dummy Variableβ€’9 minutes
  • Interacting Two Continuous or Two Dummy Variablesβ€’6 minutes
  • Linear Probability Modelβ€’6 minutes
  • Logit and Probit Modelsβ€’8 minutes
2 readingsβ€’Total 45 minutes
  • Interpreting Interactions in Regressionβ€’15 minutes
  • Regression with a Binary Dependent Variableβ€’30 minutes
2 assignmentsβ€’Total 40 minutes
  • Interaction Terms: Practice Problemsβ€’25 minutes
  • Binary Dependent Variable Practice Problemsβ€’15 minutes
1 peer reviewβ€’Total 60 minutes
  • Making Sense of Regression Models with Interaction Terms and Binary Dependent Variablesβ€’60 minutes

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Instructor ratings
4.7 (6 ratings)
Johns Hopkins University
5 Coursesβ€’18,866 learners

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MT
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Reviewed on Jul 8, 2021

G​reat refresher on regression models. Simple and concise.

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