Home
Design and Analysis of Experiments Observational Studies using R
Barnes and Noble
Design and Analysis of Experiments Observational Studies using R
Current price: $120.00


Barnes and Noble
Design and Analysis of Experiments Observational Studies using R
Current price: $120.00
Size: Hardcover
Loading Inventory...
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Barnes and Noble
Introduction to Design and Analysis of Scientific Studies
exposes undergraduate and graduate students to the foundations of classical experimental design and observational studies through a modern framework - The Rubin Causal Model. A causal inference framework is important in design, data collection and analysis since it provides a framework for investigators to readily evaluate study limitations and draw appropriate conclusions. R is used to implement designs and analyse the data collected.
Features:
Classical experimental design with an emphasis on computation using tidyverse packages in R.
Applications of experimental design to clinical trials, A/B testing, and other modern examples.
Discussion of the link between classical experimental design and causal inference.
The role of randomization in experimental design and sampling in the big data era.
Exercises with solutions.
Instructor slides in RMarkdown, a new R package will be developed to be used with book, and a bookdown version of the book will be freely available. The proposed book will emphasize ethics, communication and decision making as part of design, data analysis, and statistical thinking.
exposes undergraduate and graduate students to the foundations of classical experimental design and observational studies through a modern framework - The Rubin Causal Model. A causal inference framework is important in design, data collection and analysis since it provides a framework for investigators to readily evaluate study limitations and draw appropriate conclusions. R is used to implement designs and analyse the data collected.
Features:
Classical experimental design with an emphasis on computation using tidyverse packages in R.
Applications of experimental design to clinical trials, A/B testing, and other modern examples.
Discussion of the link between classical experimental design and causal inference.
The role of randomization in experimental design and sampling in the big data era.
Exercises with solutions.
Instructor slides in RMarkdown, a new R package will be developed to be used with book, and a bookdown version of the book will be freely available. The proposed book will emphasize ethics, communication and decision making as part of design, data analysis, and statistical thinking.