CLCC32
LanguageENG
PublishYear2021
publishCompany
Cambridge University Press
EISBN
9781108880046
PISBN
9781108812900
edition
1st ed.
- Product Details
- Contents
This textbook bypasses the need for advanced mathematics by providing in-text computer code, allowing students to explore bayesian data analysis without the calculus background normally considered a prerequisite for this material. Now, students can use the best methods without needing advanced mathematical techniques. This approach goes beyond “frequentist” concepts of p-values and null hypothesis testing, using the full power of modern probability theory to solve real-world problems. The book offers a fully self-contained course, which demonstrates analysis techniques throughout with worked examples crafted specifically for students in the behavioral and neural sciences. The book presents two general algorithms that help students solve the measurement and model selection (also called “hypothesis testing”) problems most frequently encountered in real-world applications.
Collected by
- Columbia University Library
- Beijing Normal University at Zhuhai