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学生对 杜克大学 提供的 Linear Regression and Modeling 的评价和反馈

4.7
1,072 个评分
185 个审阅

课程概述

This course introduces simple and multiple linear regression models. These models allow you to assess the relationship between variables in a data set and a continuous response variable. Is there a relationship between the physical attractiveness of a professor and their student evaluation scores? Can we predict the test score for a child based on certain characteristics of his or her mother? In this course, you will learn the fundamental theory behind linear regression and, through data examples, learn to fit, examine, and utilize regression models to examine relationships between multiple variables, using the free statistical software R and RStudio....

热门审阅

PK

May 24, 2017

Very good course taught by Dr. Mine who is as always a very good teacher. The videos are very eloquent and easy to understand. Highly recommend it if you are looking for a basic refresher course.

RZ

May 25, 2019

I feel I'm running out of complement words for this course series. In conclusion, clear teaching, helpful project, and knowledgeable classmates that I can learn from through final project.

筛选依据:

26 - Linear Regression and Modeling 的 50 个评论(共 182 个)

创建者 Aidi B

Aug 12, 2018

Great Lesson!

创建者 Aravindan

Sep 03, 2018

Brilliant Course

创建者 vinit k p

Sep 12, 2018

Simple and easy way to understand statistics.

创建者 Lokesh M

Oct 02, 2018

Learnt a lot after doing the course project. Very good exposure.

创建者 Anne B

Oct 29, 2018

This course was very challenging. I learn a lot with the model we have to find and it is very interesting to note other students. None of us found the same results. For me, it is very strange not to know at the end what are the good results. It seems that you change the subject overtime. Do you send the correction?

It will be nice to know if we reasoned correctly.

创建者 Md H U

Aug 16, 2018

How I loved this course! Elegantly taught and lots of learning :)

创建者 Sophie G

Jul 25, 2018

Very interesting, well taught.

创建者 Julian A S

Nov 04, 2018

I enjoyed this course. It was quick, but I learned a lot! I thought the assignments were well-thought-out, and the custom R package for the course was a nice touch.

创建者 Vincent M

Sep 20, 2016

An awesome course with great resources and teaching style

创建者 Joseph K

Jan 24, 2017

The lessons from this course are very useful, and I will be able to apply them for work.

创建者 Prasad V S

Sep 15, 2017

fantastic course on linear regression, concepts are well explained followed by quiz and practical exercises.

though you need to complete the prior courses to understand this.

创建者 K.K.Thampi

Jan 19, 2017

Superb, Best course, Best data set for project analysis

创建者 ahmed i a e r

Jan 02, 2018

A great introduction to linear regression modeling.

创建者 Marina C R

Jul 19, 2017

Very interesting, I have learned a lot and I have been able to apply it to the final project

创建者 Prasant K S

Jan 31, 2017

Excellent easy going course

创建者 Hanyue Z

Oct 02, 2016

The structure of this course is really good. The slides demonstrates everything clearly. The speed that the instructor talks is good too.

创建者 Sinan J H

Aug 07, 2016

Good course well taught.

创建者 Gonzalo C S

Sep 08, 2016

Excelent, excelent, excelent, excelent

创建者 Marcus S

Jun 21, 2018

This was the first course where I started noticing that I'm really learning and was able to apply some of the earned knowledge at work.Totally recommended.

创建者 Jalal A

Apr 12, 2018

presenting linear regression concepts is amazing and worth to spend time for it.

创建者 Bruno R d C S

Jan 20, 2018

One of the most useful of the series, can be valuable as a standalone course on Regression and Correlation. It is also very accessible.

创建者 Utkarsh A

Jul 25, 2017

awesome coursework

创建者 Luo Y

May 30, 2018

Very helpful!

创建者 bin j

Dec 21, 2016

Great material.

创建者 Shao Y ( H

Nov 27, 2017

Nice course. Comparing this course with the second and fourth ones in the specialization, this is a rather light-weighted one.