Overview
Machine Learning with R (Second Edition) provides a thorough introduction to machine learning techniques and their application using the R programming language. You'll gain hands-on experience implementing various algorithms and solving real-world data challenges, making it an invaluable resource for aspiring data scientists and analysts.
What this Book will help me do
- Understand the fundamentals of machine learning and its applications in data analysis.
- Master the use of R for cleaning, exploring, and visualizing data to prepare it for modeling.
- Build and apply machine learning models for classification, prediction, and clustering tasks.
- Evaluate and fine-tune model performance to ensure accurate predictions.
- Explore advanced topics like text mining, handling social network data, and big data analytics.
Author(s)
Brett Lantz is a data scientist with significant experience as both a practitioner and communicator in the machine learning field. With a focus on accessibility, he aims to demystify complex concepts for readers interested in data science. His blend of hands-on methods and theoretical insight has made his work a favorite for both beginners and experienced professionals.
Who is it for?
Ideal for data analysts and aspiring data scientists who have intermediate programming skills and are exploring machine learning. Perfect for R users ready to expand their skill set to include predictive modeling techniques. Also fits those with some experience in machine learning but new to the R environment. Provides insightful guidance for anyone looking to apply machine learning in practical, real-world scenarios.