Back to Regression Models
Johns Hopkins University

Regression Models

Linear models, as their name implies, relates an outcome to a set of predictors of interest using linear assumptions. Regression models, a subset of linear models, are the most important statistical analysis tool in a data scientist’s toolkit. This course covers regression analysis, least squares and inference using regression models. Special cases of the regression model, ANOVA and ANCOVA will be covered as well. Analysis of residuals and variability will be investigated. The course will cover modern thinking on model selection and novel uses of regression models including scatterplot smoothing.

Status: Probability & Statistics
Status: Statistical Analysis
Course54 hours

Featured reviews

SR

5.0Reviewed Jan 3, 2022

One Star for the Video Lecture, One star for the free E-book, one star for the swirl lesson and two star for the video solutions of the exercises from the ebook (posted in youtube). Thank you.

BK

4.0Reviewed Feb 9, 2016

This was a tough class covering a lot of material. The last week on logistic regression completely lost me. If you're new to stats like me you might want to take it more than once.

DJ

5.0Reviewed Aug 1, 2017

Great introductory course on Regression Models. Super practical and well explained. Definitely doing the exercises and final project is a must to get all the learnings!

JV

5.0Reviewed Oct 15, 2017

It is very interesting, however is difficult to follow the math explanations, it could be more easy with practical examples.... like the final assignment, it was difficult to me.

GG

5.0Reviewed Apr 25, 2021

I have been involved with regression models for a long time.I was amazed on the capabilities that have been developed in R. I think that an open Source software is the way to build knowledge

CJ

5.0Reviewed Jan 3, 2018

The best course in my mind, but I am chocked about how Data Science people approach regression type of problems, it is almost 100% data mining and no theory!! I wonder where it will take us..

MR

4.0Reviewed Mar 21, 2019

Really Fun Course. There is a lot to learn in this topic and this could be studied for a lifetime. I feel like I could apply this to discover solutions for issues at work.

AC

5.0Reviewed Aug 10, 2017

Regression analysis is something that is kind of easy for people to understand (outcome and predictor - people get that!). It's easy to explain to people. So much practice using the lm function!

LR

5.0Reviewed Oct 6, 2016

Excellent overview of a very broad and complex topic with plenty of useful applications within R. The course project does an outstanding job at teaching the pitfalls of omitted variable bias.

AA

5.0Reviewed Feb 28, 2017

This course has been the most difficult in the Dara Science track so far, but you get a more in depth knowledge in data analysis and interpretation based on statistical models.

VS

5.0Reviewed Apr 22, 2018

Great course to get the basics on Linear Models and Inference. Great Introduction to Logistic Regression and Poisson Regression. Good emphasis in Diagnostics of the main assumptions

VV

4.0Reviewed Apr 19, 2018

Good course, worth taking. It points out the importance of looking deeper into the world of regression models and creates right mindset and anchors for future development.

All reviews

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