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学生对 IBM 提供的 Supervised Machine Learning: Regression 的评价和反馈

4.7
784 个评分

课程概述

This course introduces you to one of the main types of modelling families of supervised Machine Learning: Regression. You will learn how to train regression models to predict continuous outcomes and how to use error metrics to compare across different models. This course also walks you through best practices, including train and test splits, and regularization techniques. By the end of this course you should be able to: Differentiate uses and applications of classification and regression in the context of supervised machine learning  Describe and use linear regression models Use a variety of error metrics to compare and select a linear regression model that best suits your data Articulate why regularization may help prevent overfitting Use regularization regressions: Ridge, LASSO, and Elastic net   Who should take this course? This course targets aspiring data scientists interested in acquiring hands-on experience  with Supervised Machine Learning Regression techniques in a business setting.   What skills should you have? To make the most out of this course, you should have familiarity with programming on a Python development environment, as well as fundamental understanding of Data Cleaning, Exploratory Data Analysis, Calculus, Linear Algebra, Probability, and Statistics....

热门审阅

MM

Sep 21, 2022

T​his course is very helpful. The wonderfull part in this course was the final course project in which I had to create my own linear regression model by adding polynimial features and regularization.

GP

Nov 23, 2022

Great Course curated by IBM team. It is really designed well and helps to achieve the goal. It is as per the industry standard, and practical. One can do this course thoroughly and get a job.

筛选依据:

101 - Supervised Machine Learning: Regression 的 125 个评论(共 150 个)

创建者 Subham D

Mar 8, 2025

bes5

创建者 shashank s

Sep 8, 2024

good

创建者 XiEL

Jun 27, 2024

Good

创建者 Chunduri S N V S M

Jul 20, 2022

good

创建者 Harshita B

Mar 28, 2022

Good

创建者 Rohit p

Oct 18, 2021

best

创建者 Saranya

Mar 24, 2025

nil

创建者 ABHIJIT P

Sep 22, 2025

hh

创建者 youssef s

Sep 4, 2025

,,

创建者 MUPPIDI H

Aug 16, 2022

ok

创建者 Dr. R M

Jun 2, 2024

-

创建者 Dan M

Feb 13, 2023

As someone with a science background, I have done a great deal of curve/model fitting. This course seems like it would be a useful introduction to these areas. As with other courses in this series, this course displays some useful shortcuts and streamlined methods for doing this work and the coded examples are useful to keep as go-bys for use in future work. On the downside, this course only covers variations on fitting a straight line to your data so it feels rather basic to be classed as "machine learning", and is simpler than I would have hoped for an intermediate course.

创建者 Nawab K

Sep 12, 2023

this course was awesome from learning point of view as it was more detailed and required pre beginners knowledge about key concepts to move ahead . i have learned many concepts about machine learning models,

statistics , theory implementation part.

what i most enjoyed was the lab work as it was more detailed and there were plenty of things to learn from .

创建者 Hossam G M

Jun 22, 2021

This course is very great. it focuses mainly on codes and how to get your models trained well with the best results. and for that a prior knowledge of the algorithms and the coding language in addition to the different libraries would be better.

创建者 Faizan K

Oct 3, 2025

Good, but only if someone has a good amount of prerequisite knowledge of statistics, probability, mathematics and coding in machine learning related libraries. Due to this, to me in the beginning, the course pace felt a bit too fast.

创建者 Sebastian W

Jun 20, 2024

Easy to understand and apply (+). Some code uses deprecated functions/methods. (-) Assignment answers seem to be mixed up (on very few occasions) so one has to randomly try out the correct answer to get 100%. (-) Issues reported.

创建者 Sid C

Mar 21, 2022

4/5 simply because not all the lesson Jupyter Notebooks are downloadable--the download links do not work. But the course content is very educational and has a good balance of difficulty enough to challenge you while learning.

创建者 Abdulwaliyi J

Aug 18, 2024

It's a nice course it deserve a 5/5 but some common and better regression algorithm like Decision Trees and Random Forest were not taught unlike the Classification part. Thanks

创建者 Gianluca P

Jun 3, 2021

very clear contents and explanations. Regression methods are thoroughly explained. Examples of coding are indeed a very good basis to start coding on the project.

创建者 Gourav G

Feb 24, 2022

AN amazing course and contain really time values content only regret is that coursera doesn't come in dark mode

创建者 Rizal A M

Oct 14, 2025

sebaiknya disediakan audio dengan bahasa indonesia agar lebih jelas dipahami

创建者 Rahmi R

Mar 19, 2025

Interesting course focusing more on the regression for the machine learning

创建者 Pankaj Z

Apr 18, 2021

Very helpful course. There are few ups and downs but overall its helpful.

创建者 Mehdi S

Jan 20, 2021

Good course with nice exemple for illustration

创建者 Keyur U

Dec 24, 2020

A great course to kick start your ML journey.