Название: Introductory Statistics for Data Analysis Автор: Warren J. Ewens, Katherine Brumberg Издательство: Springer Год: 2023 Страниц: 272 Язык: английский Формат: pdf (true), epub Размер: 10.6 MB
This book describes the probability theory associated with frequently used statistical procedures and the relation between probability theory and statistical inference. The first third of the book is dedicated to probability theory including topics relating to events, random variables, and the Central Limit Theorem. Statistical topics then include parameter estimation with confidence intervals, hypothesis testing, chi-square tests, t tests, and several non-parametric tests. Flow charts are frequently used to facilitate an understanding of the material considered. The examples and problems in the book all concern simple data sets which can be analyzed with a simple calculator; however, the R code required to complete many examples and problems is provided as well for those that are interested.
The word “Statistics” means different things to different people. For a baseball fan, it might relate to batting averages. For an actuary, it might relate to life tables. In this book, we mean the scientific definition of “Statistics”, which is Statistics is the science of analyzing data in whose generation chance has played some part. This sentence is the most important one in the entire book, and it permeates the entire book. Statistics as we understand it via this definition has become a central area of modern science and data analysis, as discussed below.
Why is Statistics now central to modern science and data analysis? This question is best answered by considering the historical context. In the past, Mathematics developed largely in association with areas of science in which chance mechanisms were either non-existent or not important. Thus in the past a great deal of progress was made in such areas as Physics, Engineering, Astronomy and Chemistry using mathematical methods which did not allow any chance, or random, features in the analysis. For example, no randomness is involved in Newton’s laws or in the theory of relativity, both of which are entirely deterministic. It is true that quantum theory is the prevailing paradigm in the physical sciences and that this theory intrinsically involves randomness. However, that intrinsic level of randomness is not discussed in this book.
Part I. Introduction 1. Statistics and Probability Theory Part II. Probability Theory 2. Events 3. Probabilities of Events 4. Probability: One Discrete Random Variable 5. Many Random Variables 6. Continuous Random Variables Part III. Statistics 7. Introduction 8. Estimation of a Parameter 9. Testing Hypotheses About the Value of a Parameter 10. Testing for the Equality of Two Binomial Parameters 11. Chi-Square Tests (i): Tables Bigger Than Two-by-Two 12. Chi-Square Tests (ii): Testing for a Specified Probability Distribution 13. Tests on Means 14. Non-parametric Tests