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28.08.2023
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Stanford University: Statistical Learning

Stanford University: Statistical Learning

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Stanford University: Statistical Learning

 

Learn some of the main tools used in statistical modeling and data science. We cover both traditional as well as exciting new methods, and how to use them in R. Course material updated in 2021 for second edition of the course textbook.

 

About this course


This is an introductory-level course in supervised learning, with a focus on regression and classification methods. The syllabus includes: linear and polynomial regression, logistic regression and linear discriminant analysis; cross-validation and the bootstrap, model selection and regularization methods (ridge and lasso); nonlinear models, splines and generalized additive models; tree-based methods, random forests and boosting; support-vector machines; neural networks and deep learning; survival models; multiple testing. Some unsupervised learning methods are discussed: principal components and clustering (k-means and hierarchical).

This is not a math-heavy class, so we try and describe the methods without heavy reliance on formulas and complex mathematics. We focus on what we consider to be the important elements of modern data science. Computing is done in R. There are lectures devoted to R, giving tutorials from the ground up, and progressing with more detailed sessions that implement the techniques in each chapter.

The lectures cover all the material in An Introduction to Statistical Learning, with Applications in R (second addition) by James, Witten, Hastie and Tibshirani (Springer, 2021). The pdf for this book is available for free on the book website.

 

At a glance

  • Language: English
  • Video Transcript: English
  • Associated skills: Boosting, Principal Component Analysis, Data Analysis, Random Forest Algorithm, Lasso (Programming Language), Data Science, Supervised Learning, Statistical Learning Theory, Bootstrap (Front-End Framework), Polynomial Regression, Artificial Neural Networks, K-Means Clustering, Statistical Modeling, R (Programming Language), Linear Discriminant Analysis, Support Vector Machine, Unsupervised Learning, Logistic Regression, Deep Learning, Lecturing

What you'll learn

Skip What you'll learn
  • Overview of statistical learning
  • Linear regression
  • Classification
  • Resampling methods
  • Linear model selection and regularization
  • Moving beyond linearity
  • Tree-based methods
  • Support vector machines
  • Deep learning
  • Survival modeling
  • Unsupervised learning
  • Multiple testing

More details about this course are available here:  https://www.edx.org/learn/statistics/stanford-university-statistical-learning?webview=false&campaign=Statistical+Learning&source=edx&product_category=course&placement_url=https%3A%2F%2Fwww.edx.org%2Fschool%2Fstanfordonline 

 

Prepared the material: Taras Griadil.

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