Foundations of Bayesian Statistics for Data Scientists Foundations of Bayesian Statistics for Data Scientists
Chapman & Hall/CRC Texts in Statistical Science

Foundations of Bayesian Statistics for Data Scientists

With R and Python

Alan Agresti and Others
    • 69,99 €
    • 69,99 €

Publisher Description

This book is an overview of the Bayesian approach to applying the most important inferential methods of statistical science. It is designed as a textbook for advanced undergraduate and master’s students in Data Science, Statistics, or Mathematics who are interested in learning about Bayesian statistics.

The reader should be familiar with calculus and should have taken a statistical inference Statistics course covering the basic rules of probability, probability distributions and expectations, as well as the fundamentals of the traditional, frequentist approach to statistics, including sampling distributions, likelihood functions, basic inferential methods such as point estimation, confidence intervals, significance tests, and linear regression models.

Key Features:

● Uses real world data examples and contains numerous exercises.

● Includes software appendices in R and Python.

● Offers slides, labs, and other materials on the book’s website.

Each chapter begins with a brief review of the primary frequentist methods for its topic before introducing corresponding Bayesian methods. This book presents some substantive theory as well as the methods, and is therefore intended for a reader who wishes to understand Bayesian methods rather than merely apply them. The focus is not just on presenting statistical methodologies but also on demonstrating how to implement them with modern software, emphasizing appropriate simulation methods.

GENRE
Science & Nature
RELEASED
2026
9 June
LANGUAGE
EN
English
LENGTH
450
Pages
PUBLISHER
CRC Press
SIZE
17.4
MB
Foundations of Statistics for Data Scientists Foundations of Statistics for Data Scientists
2021
An Introduction to Categorical Data Analysis An Introduction to Categorical Data Analysis
2018
Foundations of Linear and Generalized Linear Models Foundations of Linear and Generalized Linear Models
2015
Categorical Data Analysis Categorical Data Analysis
2013
Strength in Numbers: The Rising of Academic Statistics Departments in the U. S. Strength in Numbers: The Rising of Academic Statistics Departments in the U. S.
2012
Analysis of Ordinal Categorical Data Analysis of Ordinal Categorical Data
2012
Survival Analysis Survival Analysis
2026
Time Series Time Series
2026
Statistics in Survey Sampling Statistics in Survey Sampling
2025
Exercises and Solutions in Probability and Statistics Exercises and Solutions in Probability and Statistics
2025
Introduction to Probability with R Introduction to Probability with R
2008
Stationary Stochastic Processes Stationary Stochastic Processes
2012