Chevron Left
Volver a Data Analytics: Scraping Data using Hadley Wickam's Rvest package in R

Opiniones y comentarios de aprendices correspondientes a Data Analytics: Scraping Data using Hadley Wickam's Rvest package in R por parte de Coursera Project Network

4.2
estrellas
33 calificaciones
8 reseña

Acerca del Curso

In this 1-hour long project-based course, you will learn how to (complete a training and test set using an R function, practice looking at data distribution using R and ggplot2, Apply a Random Forest model to the data using the FFTrees package in R, and examine the results using a Confusion Matrix. Note: This course works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions....

Principales reseñas

VP

Jun 22, 2020

Thank you so much for this project. It was really helpful. The style of teaching is 10/10.\n\nLooking forward to the next session.

PN

Aug 23, 2020

Very useful and easy to understand project.Thank you

Filtrar por:

1 - 8 de 8 revisiones para Data Analytics: Scraping Data using Hadley Wickam's Rvest package in R

por Vikash P

Jun 22, 2020

Thank you so much for this project. It was really helpful. The style of teaching is 10/10.

Looking forward to the next session.

por Phuong A N

Aug 23, 2020

Very useful and easy to understand project.Thank you

por Abdullah B H

Jul 15, 2020

Everything was great....new experience!

por CHERRY I T

Jul 05, 2020

you must learn

por p s

Jun 26, 2020

Good

por tale p

Jun 24, 2020

good

por Max

Sep 16, 2020

"practice looking at data distribution using R and ggplot2,

Apply a Random Forest model to the data using the FFTrees package in R, and examine the results using a Confusion Matrix."

Where is that in the course? I just saw an overview and some practice with Rvest package, but beyond that there was no RF, ggplot2 nor confusion matrix.

por Mayank A

Jun 24, 2020

It was a very quick overview of how to scrape the data. The instructor could have saved an R script on the desktop for learner's quick access.