9781138469297-1138469297-Data Science in R: A Case Studies Approach to Computational Reasoning and Problem Solving (Chapman & Hall/CRC The R Series)

Data Science in R: A Case Studies Approach to Computational Reasoning and Problem Solving (Chapman & Hall/CRC The R Series)

ISBN-13: 9781138469297
ISBN-10: 1138469297
Edition: 1
Author: Deborah Nolan, Duncan Temple Lang
Publication date: 2017
Publisher: Chapman and Hall/CRC
Format: Hardcover 540 pages
FREE US shipping

Book details

ISBN-13: 9781138469297
ISBN-10: 1138469297
Edition: 1
Author: Deborah Nolan, Duncan Temple Lang
Publication date: 2017
Publisher: Chapman and Hall/CRC
Format: Hardcover 540 pages

Summary

Data Science in R: A Case Studies Approach to Computational Reasoning and Problem Solving (Chapman & Hall/CRC The R Series) (ISBN-13: 9781138469297 and ISBN-10: 1138469297), written by authors Deborah Nolan, Duncan Temple Lang, was published by Chapman and Hall/CRC in 2017. With an overall rating of 3.7 stars, it's a notable title among other Statistics (Education & Reference) books. You can easily purchase or rent Data Science in R: A Case Studies Approach to Computational Reasoning and Problem Solving (Chapman & Hall/CRC The R Series) (Hardcover) from BooksRun, along with many other new and used Statistics books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.5.

Description

Effectively Access, Transform, Manipulate, Visualize, and Reason about Data and Computation Data Science in R: A Case Studies Approach to Computational Reasoning and Problem Solving illustrates the details involved in solving real computational problems encountered in data analysis. It reveals the dynamic and iterative process by which data analysts approach a problem and reason about different ways of implementing solutions. The book�s collection of projects, comprehensive sample solutions, and follow-up exercises encompass practical topics pertaining to data processing, including: Non-standard, complex data formats, such as robot logs and email messages Text processing and regular expressions Newer technologies, such as Web scraping, Web services, Keyhole Markup Language (KML), and Google Earth Statistical methods, such as classification trees, k-nearest neighbors, and na� Bayes Visualization and exploratory data analysis Relational databases and Structured Query Language (SQL) Simulation Algorithm implementation Large data and efficiency Suitable for self-study or as supplementary reading in a statistical computing course, the book enables instructors to incorporate interesting problems into their courses so that students gain valuable experience and data science skills. Students learn how to acquire and work with unstructured or semistructured data as well as how to narrow down and carefully frame the questions of interest about the data. Blending computational details with statistical and data analysis concepts, this book provides readers with an understanding of how professional data scientists think about daily computational tasks. It will improve readers� computational reasoning of real-world data analyses.
Rate this book Rate this book

We would LOVE it if you could help us and other readers by reviewing the book