Regression Analysis - Fundamentals & Practical Applications
Regression Analysis - Fundamentals & Practical Applications
This course is part of Practical Data Science for Data Analysts Specialization
Included with
Learn more
Ask Coursera
Skills you'll gain
Tools you'll learn
Details to know
3 assignments
See how employees at top companies are mastering in-demand skills
Build your subject-matter expertise
- 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 9 modules in this course
Linear regression analysis is critical for understanding and defining the strength of the relationship between variables. This analysis can be used to make predictions for a variable given the value of another known variable.
This course provides an overview of linear regression. You will learn how linear regression works, how to build effective linear regression models and how to use and interpret the information these models give us. In addition to the theory, we will perform linear regression on real data using both Excel and Python. The practical cases you will work through will be similar to those you might encounter in a business setting. Upon completing this course, you will be able to: β’ Define linear regression and its applications β’ Perform simple βpen and paperβ regression calculations in Excel β’ Apply Excelβs RegressIt plugin to solve advanced regression calculations β’ Construct linear regression models in Python using both statsmodels and sklearn modules β’ Explain the implicit assumptions behind linear regression β’ Interpret regression outputs such as coefficients and p-values β’ Recommend various regression techniques when appropriate Regression is the critical tool used for making inferences or predictions based on the relationships between variables. Whether youβre working as a business leader or data analyst, the theory and practical toolsets taught in this course will serve you throughout your career. No background in coding with Python is required for this course. Common career paths for students who take the BIDAβ’ program are Business Intelligence, Asset Management, Data Analyst, Quantitative Analyst, and other finance careers.
In this course, we will learn how linear regression works, how to build effective linear regression models and how to use and interpret the information these models give us. In addition to the theory, we will perform linear regression on real data using both Excel and Python.
What's included
2 videos1 reading
2 videosβ’Total 3 minutes
- Course Introductionβ’2 minutes
- Learning Objectivesβ’1 minute
1 readingβ’Total 10 minutes
- Downloadable Filesβ’10 minutes
What's included
24 videos
24 videosβ’Total 64 minutes
- Introduction - Simple Linear Regressionβ’1 minute
- Simple Linear Regressionβ’2 minutes
- The Linear Regression Equationβ’2 minutes
- Ordinary Least Squaresβ’2 minutes
- OLS Calculationβ’3 minutes
- Fitting the Parametersβ’1 minute
- Caution with Regressionβ’2 minutes
- Regression in Practiceβ’1 minute
- Manual Regression Calcs in Excelβ’1 minute
- Regression using Excel Data Analysisβ’4 minutes
- EDA Descriptive Stats with Regressit in Excelβ’4 minutes
- Regression with Regressit in Excelβ’3 minutes
- Regressit Scenario 2β’4 minutes
- Python Ex 1 - Import Data & EDAβ’2 minutes
- Python Ex 1 - Regression using Statsmodelsβ’4 minutes
- Python Ex 2 - Import Data & EDAβ’4 minutes
- Python Ex 2 - Fitting the model in Statsmodelsβ’3 minutes
- Python Ex 2 - Plotting the resultsβ’5 minutes
- Python Ex 3 - Import Data in Statsmodelsβ’2 minutes
- Python Ex 3 - Train Test Split in Statsmodelsβ’3 minutes
- Python Ex 3 - Plot Training Dataβ’1 minute
- Python Ex 3 - Fit Regression Modelβ’3 minutes
- Python Ex 3 - Plot the Resultsβ’3 minutes
- Python Ex 3 - Apply Model to test dataβ’4 minutes
What's included
1 assignment
1 assignmentβ’Total 15 minutes
- Week 1 Challengeβ’15 minutes
What's included
10 videos
10 videosβ’Total 24 minutes
- Introduction - Multiple Linear Regressionβ’1 minute
- Multiple Linear Regressionβ’3 minutes
- Multicollinearityβ’1 minute
- Caution with Multiple Linear Regressionβ’2 minutes
- Multiple Linear Regression in Excelβ’4 minutes
- Load & Assess the Data in Pythonβ’3 minutes
- Basic Multiple Regression Model in Pythonβ’2 minutes
- Full Multiple Regression Modelβ’4 minutes
- Fitting the Linear Regression Modelβ’3 minutes
- Multiple Linear Regression Model in Scikit-Learnβ’2 minutes
What's included
22 videos1 plugin
22 videosβ’Total 40 minutes
- Introduction - Interpreting Linear Regressionβ’1 minute
- Residualsβ’3 minutes
- OLS Assumptionsβ’1 minute
- OLS Assumptions - Linearityβ’1 minute
- OLS Assumptions - Normal & Heteroscedasticβ’2 minutes
- OLS Assumptions - Zero Mean Errorsβ’1 minute
- OLS Assumptions - Endogeneityβ’1 minute
- OLS Assumptions - Autocorrelation of Errorsβ’1 minute
- OLS Assumptions - Multicollinearityβ’2 minutes
- Linear Regression Evaluationβ’1 minute
- Linear Regression Evaluation - Squared Error Metricsβ’1 minute
- Linear Regression Evaluation - Absolute Error Metricsβ’1 minute
- Linear Regression Evaulation - R Squaredβ’3 minutes
- Linear Regression Evaluation - Adjusted R Squaredβ’2 minutes
- Regression Coefficientsβ’2 minutes
- Compare Coefficientsβ’1 minute
- Calculate p-valuesβ’4 minutes
- Interpretation Scenariosβ’2 minutes
- Interpreting Linear Regressionβ’3 minutes
- P-values & Coefficientsβ’4 minutes
- Residuals & Residual Plotsβ’2 minutes
- Evaluating Linear Regressionβ’2 minutes
1 pluginβ’Total 15 minutes
- Interactive Exerciseβ’15 minutes
What's included
1 assignment
1 assignmentβ’Total 45 minutes
- Week 2 Challengeβ’45 minutes
What's included
10 videos
10 videosβ’Total 15 minutes
- Introduction - Advanced Linear Regressionβ’1 minute
- Log Log Linear Regressionβ’1 minute
- Polynomial Regressionβ’2 minutes
- Logistic Regressionβ’1 minute
- Repeated Measure Regressionβ’1 minute
- Segmented Regression Modelsβ’1 minute
- Other Advanced Modelsβ’2 minutes
- Log Log Linear Regression - Investigating Problemsβ’3 minutes
- Log Log Linear Regression - Plotting Logsβ’1 minute
- Log Log Linear Regression - Model Evaluationβ’2 minutes
What's included
1 video
1 videoβ’Total 2 minutes
- Course Conclusionβ’2 minutes
What's included
1 assignment
1 assignmentβ’Total 15 minutes
- Week 3 Challengeβ’15 minutes
Earn a career certificate
Add this credential to your LinkedIn profile, resume, or CV. Share it on social media and in your performance review.
Instructor
Offered by
Explore more from Finance
- Status: Free TrialR
Rice University
Course
- Status: Free TrialU
University of Pittsburgh
Course
- Status: Preview
- Status: Free TrialU
University of Colorado Boulder
Course
Why people choose Coursera for their career
Advance your career with an online degree
Earn a degree from world-class universities - 100% online
Frequently asked questions
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Yes. In select learning programs, you can apply for financial aid or a scholarship if you canβt afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, youβll find a link to apply on the description page.
More questions
Financial aid available,
