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Introduction to Data Science: Statistics and Prediction Algorithms Through Case Studies: Chapman & Hall/CRC Data Science Series

Autor Rafael A. Irizarry
en Limba Engleză Paperback – 3 dec 2026
Introduction to Data Science: Statistics and Prediction Algorithms Through Case Studies teaches data science as a way of thinking statistically, not just as a collection of computational tools. Building on the topics covered in Introduction to Data Science: Data Wrangling and Visualization with R, this book is designed for students with some programming experience and basic mathematical maturity, this book builds the foundations of probability, statistical inference, regression, high-dimensional data analysis, and machine learning through real data examples and reproducible R code. It is suitable for one-semester course in advanced data science.
The book shows how to reason about variability, uncertainty, prediction error, model assumptions, and validation. Through case studies involving polling, genetics, baseball, recommendation systems, image classification, and other modern datasets, readers learn how to connect probability models to data, summarize complex information, quantify uncertainty, fit and interpret models, evaluate prediction algorithms, and understand the statistical ideas behind machine learning. Each chapter is designed to support classroom teaching, self-study, and hands-on analysis, with exercises and companion web materials available through the book website.
Key Features:
  • Includes base R, data.table, and tidyverse code.
  • Focuses on the statistical and probabilistic foundations of machine learning.
  • Contains real-world case studies.
Rafael A. Irizarry is Professor and Chair of the Department of Data Science at Dana-Farber Cancer Institute and Professor of Applied Statistics at Harvard. His research focuses on Genomics and he has taught several Data Science courses.
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Specificații

ISBN-13: 9781032419879
ISBN-10: 1032419873
Pagini: 480
Ilustrații: 438
Dimensiuni: 178 x 254 mm
Ediția:2
Editura: CRC Press
Colecția Chapman and Hall/CRC
Seria Chapman & Hall/CRC Data Science Series


Public țintă

Postgraduate, Undergraduate Advanced, and Undergraduate Core

Cuprins

Distributions Numerical Summaries Comparing Groups Connecting Data and Probability Discrete Probability Continuous Probability Random Variables Sampling Models and the Central Limit Theorem Estimates and Confidence Intervals Data-Driven Models Bayesian Statistics Hierarchical Models Hypothesis Testing Bootstrap Introduction to Regression The Linear Model Framework Treatment Effect Models Generalized Linear Models Association Is Not Causation Multivariable Regression Working with Matrices in R Applied Linear Algebra Dimension Reduction Regularization Latent Factor Models Notation and Terminology Performance Metrics Conditional Expectations and Smoothing Resampling and Model Assessment Supervised Learning Methods Building Machine Learning Models Unsupervised Learning: Clustering

Notă biografică

Rafael A. Irizarry is Professor and Chair of the Department of Data Science at Dana-Farber Cancer Institute and Professor of Applied Statistics at Harvard. His research focuses on Genomics and he has taught several Data Science courses.

Descriere

Introduction to Data Science: Statistics and Prediction Algorithms Through Case Studies teaches data science as a way of thinking statistically, not just as a collection of computational tools.

Recenzii

Praise for the first edition:
"I think the book would be perfect for schools looking to make a transition to a model where introduction to data science takes the place of introduction to statistics and maybe introductory computer science."
- Arend Kuyper, Northwestern University
"A great introduction to data science and modern R programing, with tons of examples of application of the R abilities throughout the whole volume. The book suggests multiple links to the internet websites related to the topics under consideration that makes it an incredibly useful source of contemporary data science and programing, helping to students and researchers in their projects."
- Technometrics
"Introduction to Data Science will teach you to juggle with your data and get maximum results from it using R. I highly recommended this book for students and everybody taking the first steps in data science using R."
- Maria Ivanchuk, ISCB News