Common Errors in Statistics: and How to Avoid Them

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A guide to choosing and using the right techniques High-speed computers and prepackaged statistical routines would seem to take much of the guesswork out of statistical analysis and lend its applications readily accessible to all. Yet, as Phillip Good and James Hardin persuasively argue, statistical software no more makes one a statistician than a scalpel makes one a surgeon. Choosing the proper technique and understanding the analytical context is of paramount importance to the proper application of statistics. The highly readable Common Errors in Statistics (and How to Avoid Them) provides both newly minted academics and professionals who use statistics in their work with a handy field guide to statistical problems and solutions. Good and Hardin begin their handbook by establishing a mathematically rigorous but readily accessible foundation for statistical procedures. They focus on debunking popular myths, analyzing common mistakes, and instructing readers on how to choose the appropriate statistical technique to address their specific task. A handy checklist is provided to summarize the necessary steps. Topics covered include: * Creating a research plan * Formulating a hypothesis * Specifying sample size * Checking assumptions * Interpreting p-values and confidence intervals * Building a model * Data mining * Bayes' Theorem, the bootstrap, and many others Common Errors in Statistics (and How to Avoid Them) also contains reprints of classic articles from statistical literature to re-examine such bedrock subjects as linear regression, the analysis of variance, maximum likelihood, meta-analysis, and the bootstrap. With a final emphasis on finding solutions and on the great value of statistics when applied in the proper context, this book will prove eminently useful to students and professionals in the fields of research, industry, medicine, and government.

Author(s): Phillip I. Good, James W. Hardin
Publisher: Wiley-Interscience
Year: 2003

Language: English
Pages: 235

Common Errors in Statistics (and How to Avoid them)......Page 1
Copyright......Page 5
Contents......Page 6
Preface......Page 10
Part1 Foundations......Page 14
Ch1 Sources of Error......Page 16
Ch2 Hypotheses: Why of Your Research......Page 24
Ch3 Collecting Data......Page 38
Part2 Hypothesis Testing & Estimation......Page 52
Ch4 Estimation......Page 54
Ch5 Testing Hypotheses: Choosing Test Statistic......Page 64
Ch6 Strengths & Limitations of Some Miscellaneous Statistical Procedures......Page 90
Ch7 Reporting Your Results......Page 104
Ch8 Graphics......Page 120
Part3 Building Model......Page 140
Ch9 Univariate Regression......Page 142
Ch10 Multivariable Regression......Page 158
Ch11 Validation......Page 168
AppA Note on Screening Regression Equations......Page 176
AppB Cross-Validation, Jackknife & Bootstrap: Excess Error Estimation in Forward Logistic Regression......Page 186
Glossary, Grouped by Related but Distinct Terms......Page 200
Bibliography......Page 204
Author Index......Page 224
Subject Index......Page 230