An Introduction to Statistical Learning with Applications in R
Book Details
| Author | Gareth James • Daniela Witten • Trevor Hastie Robert Tibshirani |
|---|---|
| Publisher | Springer |
| Published Year | 1905 |
| Pages | 440 |
| Language | English |
| ISBN-10 | 1071614177 |
| ISBN-13 | 978-1071614174 |
An Introduction to Statistical Learning with Applications in R is a widely acclaimed textbook by Gareth James, Daniela Witten, Trevor Hastie, and Robert Tibshirani. It provides a clear and accessible introduction to statistical and machine learning techniques, with a strong focus on practical applications using the R programming language. The book covers key topics such as linear regression, classification, resampling methods, model selection, and more, making it ideal for beginners and practitioners in data science and statistics.
Prepare for Interview
- JavaScript Interview Questions for 5+ Years Experience
- JavaScript Interview Questions for 2–5 Years Experience
- JavaScript Interview Questions for 1–2 Years Experience
- JavaScript Interview Questions for 0–1 Year Experience
- JavaScript Interview Questions For Fresher
- SQL Interview Questions for 5+ Years Experience
- SQL Interview Questions for 2–5 Years Experience
- SQL Interview Questions for 1–2 Years Experience
- SQL Interview Questions for 0–1 Year Experience
- SQL Interview Questions for Freshers
- Design Patterns in Python
- Dynamic Programming and Recursion in Python
- Trees and Graphs in Python
- Linked Lists, Stacks, and Queues in Python
- Sorting and Searching in Python
- Debugging in Python
- Unit Testing in Python
- Asynchronous Programming in PYthon
Tutorials
Follow us on Linkedin
Random Blogs
- Extract RGB Color From a Image Using CV2
- AI is Replacing Search Engines: The Future of Online Search
- Why to learn Digital Marketing?
- OLTP vs. OLAP Databases: Advanced Insights and Query Optimization Techniques
- AI & Space Exploration – AI’s Role in Deep Space Missions and Planetary Research
- Understanding LLMs (Large Language Models): The Ultimate Guide for 2025
- Mastering Python in 2025: A Complete Roadmap for Beginners
- How AI Companies Are Making Humans Fools and Exploiting Their Data
- AI in Cybersecurity: The Future of Digital Protection
- The Beginner’s Guide to Normalization and Denormalization in Databases
- Transforming Logistics: The Power of AI in Supply Chain Management
- Understanding Data Lake, Data Warehouse, Data Mart, and Data Lakehouse – And Why We Need Them
- Create Virtual Host for Nginx on Ubuntu (For Yii2 Basic & Advanced Templates)
- Mastering SQL in 2025: A Complete Roadmap for Beginners
- What to Do When Your MySQL Table Grows Too Wide
- The Ultimate Guide to Data Science: Everything You Need to Know
Datasets for Machine Learning
- Awesome-ChatGPT-Prompts
- Amazon Product Reviews Dataset
- Ozone Level Detection Dataset
- Bank Transaction Fraud Detection
- YouTube Trending Video Dataset (updated daily)
- Covid-19 Case Surveillance Public Use Dataset
- US Election 2020
- Forest Fires Dataset
- Mobile Robots Dataset
- Safety Helmet Detection
- All Space Missions from 1957
- OSIC Pulmonary Fibrosis Progression Dataset
- Wine Quality Dataset
- Google Audio Dataset
- Iris flower dataset










