Common Mistakes in Meta Analysis and How to Avoid Them 1st edition by Michael Borenstein – Ebook PDF Instant Download/Delivery: 1733436707 , 978-1733436700
Full download Common Mistakes in Meta Analysis and How to Avoid Them 1st edition after payment

Product details:
ISBN 10: 1733436707
ISBN 13: 978-1733436700
Author: Michael Borenstein
Among the thousands of meta-analyses that have been published over the past several decades, there are a number of mistakes that appear on a fairly regular basis. This book outlines the most common mistakes, using examples in medicine, epidemiology, education, psychology, criminal justice, and other fields. For each, it explains why it is a mistake, the implications of the mistake, and how to correct the mistake. The book is intended primarily for researchers, and so the discussion is conceptual rather than statistical. The examples show the real-world consequences of the mistakes, explaining (for example) how the mistakes can lead to the adoption of interventions that may actually be harmful in some populations. The book includes a section with examples that show how to report the results of an analysis correctly. These examples can serve as templates for reporting an analysis, while avoiding the mistakes discussed in earlier chapters. The book’s author is the co-author of the text Introduction to Meta-Analysis, the best-selling text in this field. In the current volume he draws on his experience teaching meta-analysis to thousands of researchers as well as his experience as a reviewer of meta-analyses for numerous journals.
Common Mistakes in Meta Analysis and How to Avoid Them 1st Table of contents:
Chapter1 : Introduction
Chapter 2: Content
Chapter 3: Conclusion
Chapter 4: Appendices
Chapter 5: Glossary
Chapter 6: References
Chapter 7: Index
People also search for Common Mistakes in Meta Analysis and How to Avoid Them 1st :
common mistakes in data analysis
common errors in apa format
mistakes in meta-analysis
common mistakes in meta-analysis
common mistakes in meta-analysis pdf
Tags: Michael Borenstein, Common Mistakes, Avoid Them, Meta Analysis



