<i>Statistical Estimation of Epidemiological Risk</i>Β provides coverage of the most important epidemiological indices, and includes recent developments in the field.Β AΒ useful reference source for biostatisticians and epidemiologists working in disease prevention, as the chapters are self-contained a
Statistical Estimation of Epidemiological Risk (Statistics in Practice)
β Scribed by Kung-Jong Lui
- Year
- 2004
- Tongue
- English
- Leaves
- 213
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Statistical Estimation of Epidemiological RiskΒ provides coverage of the most important epidemiological indices, and includes recent developments in the field.Β AΒ useful reference source for biostatisticians and epidemiologists working in disease prevention, as the chapters are self-contained and feature numerous real examples. It has been written at a level suitable for public health professionals with a limited knowledge of statistics.Other key features include:Provides comprehensive coverage of the key epidemiological indices.Includes coverage of various sampling methods, and pointers to where each should be used.Includes up-to-date references and recent developments in the field.Features many real examples, emphasising the practical nature of the book.Each chapter is self-contained, allowing the book to be used as a useful reference source.Includes exercises, enabling use as a course text.
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