Course Hive
Search

Welcome

Sign in or create your account

Continue with Google
or
Statistical Learning: 3.5 Extensions of the Linear Model
Play lesson

Statistical Learning with Python - Statistical Learning: 3.5 Extensions of the Linear Model

5.0 (2)
23 learners

What you'll learn

This course includes

  • 20.3 hours of video
  • Certificate of completion
  • Access on mobile and TV

Summary

Keywords

Full Transcript

Statistical Learning, featuring Deep Learning, Survival Analysis and Multiple Testing Trevor Hastie, Professor of Statistics and Biomedical Data Sciences at Stanford University - https://statistics.stanford.edu/people/trevor-j-hastie Robert Tibshirani, Professor of Statistics and Biomedical Data Sciences at Stanford University - https://statistics.stanford.edu/people/robert-tibshirani Jonathan Taylor, Professor Statistics at Stanford University - https://statistics.stanford.edu/people/jonathan-taylor You are able to take Statistical Learning as an online course on EdX, and you are able to choose a verified path and get a certificate for its completion. You can choose to take the course in R (https://www.edx.org/course/statistica) or in Python (https://www.edx.org/learn/data-analysis-statistics/stanford-university-statistical-learning-with-python) For more information about courses on Statistics, you can browse our Stanford Online Catalog: https://stanford.io/3QHRi72 0:00 Extensions of the Linear Model 1:16 Interaction in the Advertising data? 1:57 Modelling interactions - Advertising data 4:07 Interpretation continued 6:24 Interactions between qualitative and quantitative variables 9:22 Non-linear effects of predictors 11:35 What we did not cover 12:26 Generalizations of the Linear Model

Course Hive

Continue this lesson in the app

Install CourseHive on Android or iOS to keep learning while you move.

Related Courses

FAQs

Course Hive
Download CourseHive
Keep learning anywhere