Analysis of categorical data with R /
by Bilder, Christopher R; Loughin, Thomas M [jt. aut.].
Material type: BookSeries: Texts in statistical science.Publisher: Boca Raton : CRC Press, 2015Description: xiii, 533 p. : ill. ; 26 cm.ISBN: 9781439855676 (hbk).Subject(s): Multivariate analysisSummary: "We live in a categorical world! From a positive or negative disease diagnosis to choosing all items that apply in a survey, outcomes are frequently organized into categories so that people can more easily make sense of them. However, analyzing data from categorical responses requires specialized techniques beyond those learned in a first or second course in Statistics. We o er this book to help students and researchers learn how to properly analyze categorical data. Unlike other texts on similar topics, our book is a modern account using the vastly popular R software. We use R not only as a data analysis method but also as a learning tool. For example, we use data simulation to help readers understand the underlying assumptions of a procedure and then to evaluate that procedure's performance. We also provide numerous graphical demonstrations of the features and properties of various analysis methods. The focus of this book is on the analysis of data, rather than on the mathematical development of methods. We o er numerous examples from a wide rage of disciplines medicine, psychology, sports, ecology, and others and provide extensive R code and output as we work through the examples. We give detailed advice and guidelines regarding which procedures to use and why to use them. While we treat likelihood methods as a tool, they are not used blindly. For example, we write out likelihood functions and explain how they are maximized. We describe where Wald, likelihood ratio, and score procedures come from. However, except in Appendix B, where we give a general introduction to likelihood methods, we do not frequently emphasize calculus or carry out mathematical analysis in the text. The use of calculus is mostly from a conceptual focus, rather than a mathematical one"-- Provided by publisher.Item type | Current location | Collection | Call number | Copy number | Status | Notes | Date due | Barcode |
---|---|---|---|---|---|---|---|---|
Books | Dhaka University Science Library General Stacks | Non Fiction | 519.535 BIA (Browse shelf) | 1 | Available | Statistics | 525208 | |
Books | Dhaka University Science Library General Stacks | Non Fiction | 519.535 BIA (Browse shelf) | 2 | Available | Tr. to Statistics | 525209 |
Browsing Dhaka University Science Library Shelves , Shelving location: General Stacks , Collection code: Non Fiction Close shelf browser
519.535 ART The theory of linear models and multivariate analysis / | 519.535 BAI Interactive spatial data analysis / | 519.535 BIA Analysis of categorical data with R / | 519.535 BIA Analysis of categorical data with R / | 519.535 BIT Theory of multivariate statistics / | 519.535 BRM Multivariate analysis of variance / | 519.535 BYS Structural equation modeling with Mplus : |
Includes index.
Bibliography: p. 513-523.
"We live in a categorical world! From a positive or negative disease diagnosis to choosing all items that apply in a survey, outcomes are frequently organized into categories so that people can more easily make sense of them. However, analyzing data from categorical responses requires specialized techniques beyond those learned in a first or second course in Statistics. We o er this book to help students and researchers learn how to properly analyze categorical data. Unlike other texts on similar topics, our book is a modern account using the vastly popular R software. We use R not only as a data analysis method but also as a learning tool. For example, we use data simulation to help readers understand the underlying assumptions of a procedure and then to evaluate that procedure's performance. We also provide numerous graphical demonstrations of the features and properties of various analysis methods. The focus of this book is on the analysis of data, rather than on the mathematical development of methods. We o er numerous examples from a wide rage of disciplines medicine, psychology, sports, ecology, and others and provide extensive R code and output as we work through the examples. We give detailed advice and guidelines regarding which procedures to use and why to use them. While we treat likelihood methods as a tool, they are not used blindly. For example, we write out likelihood functions and explain how they are maximized. We describe where Wald, likelihood ratio, and score procedures come from. However, except in Appendix B, where we give a general introduction to likelihood methods, we do not frequently emphasize calculus or carry out mathematical analysis in the text. The use of calculus is mostly from a conceptual focus, rather than a mathematical one"-- Provided by publisher.
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