Applied Linear Regression for Longitudinal Data is popular PDF and ePub book, written by Frans E.S. Tan in 2022-12-09, it is a fantastic choice for those who relish reading online the Mathematics genre. Let's immerse ourselves in this engaging Mathematics book by exploring the summary and details provided below. Remember, Applied Linear Regression for Longitudinal Data can be Read Online from any device for your convenience.
Applied Linear Regression for Longitudinal Data Book PDF Summary
This book introduces best practices in longitudinal data analysis at intermediate level, with a minimum number of formulas without sacrificing depths. It meets the need to understand statistical concepts of longitudinal data analysis by visualizing important techniques instead of using abstract mathematical formulas. Different solutions such as multiple imputation are explained conceptually and consequences of missing observations are clarified using visualization techniques. Key features include the following: Provides datasets and examples online Gives state-of-the-art methods of dealing with missing observations in a non-technical way with a special focus on sensitivity analysis Conceptualises the analysis of comparative (experimental and observational) studies It is the ideal companion for researchers and students in epidemiological, health, and social and behavioral sciences working with longitudinal studies without a mathematical background.
Detail Book of Applied Linear Regression for Longitudinal Data PDF
- Author : Frans E.S. Tan
- Release : 09 December 2022
- Publisher : CRC Press
- ISBN : 9781000798227
- Genre : Mathematics
- Total Page : 249 pages
- Language : English
- PDF File Size : 12,7 Mb
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