This richly illustrated book provides an overview of the design and analysis of experiments with a focus on non-clinical experiments in the life sciences, including animal research. It covers the most common aspects of experimental design such as handling multiple treatment factors and improving pre
Statistical Methods in Biology: Design and Analysis of Experiments and Regression
โ Scribed by Gezan, Salvador Alejandro
- Publisher
- Chapman & Hall/CRC
- Year
- 2014
- Tongue
- English
- Leaves
- 592
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Table of Contents
Content: Introduction. A Review of Basic Statistics Principles for Designing Experiments Models for a Single Factor Checking Model Assumptions Transformations of the Response Models with Simple Blocking Structure Extracting Information about Treatments Models with Complex Blocking Structure Replication and Power Dealing with Non-Orthogonality Models for a Single Variate: Simple Linear Regression Checking Model Fit Models for Several Variates: Multiple Linear Regression Models for Variates and Factors Incorporating Structure: Mixed Models Models for Curved Relationships Models for Non-Normal Responses: Generalized Linear Models Practical Design and Data Analysis for Real Studies References Appendices
โฆ Subjects
ะะธะพะปะพะณะธัะตัะบะธะต ะดะธััะธะฟะปะธะฝั;ะะฐัะผะตัะพะดั ะธ ะผะพะดะตะปะธัะพะฒะฐะฝะธะต ะฒ ะฑะธะพะปะพะณะธะธ;
๐ SIMILAR VOLUMES
This is a reprint of Peter John classic book on experimental designs originally published by MacMillan but now reprinted by the Society for Industrial and Applied Mathematics in their Classics in Applied Mathematics series. The book was written in 1971 and there have been many changes in philosophy
Readers will find this book an invaluable reference on the design of experiments. It contains hard-to-find information on topics such as change-over designs with residual effects and early treatment of analysis of covariance. Other topics include linear models and quadratic forms, experiments with o
A indispensable guide to understanding and designing modern experiments <p> The tools and techniques of Design of Experiments (DOE) allow researchers to successfully collect, analyze, and interpret data across a wide array of disciplines. Statistical Analysis of Designed Experiments provides a moder