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Statistical Modelling in R

Statistical Modelling in R

9780199219131
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Description
R is now the most widely used statistical package/language in university statistics departments and many research organisations. Its great advantages are that for many years it has been the leading-edge statistical package/language and that it can be freely downloaded from the R web site. Its cooperative development and open code also attracts many contributors meaning that the modelling and data analysis possibilities in R are much richer than in GLIM4, and so the R edition can besubstantially more comprehensive than the GLIM4 edition of Statistical Modelling.This text provides a comprehensive treatment of the theory of statistical modelling in R with an emphasis on applications to practical problems and an expanded discussion of statistical theory. A wide range of case studies is provided, using the normal, binomial, Poisson, multinomial, gamma, exponential and Weibull distributions, making this book ideal for graduates and research students in applied statistics and a wide range of quantitative disciplines.
Product Details
OUP Oxford
86227
9780199219131
9780199219131

Data sheet

Publication date
2009
Issue number
1
Cover
paperback
Pages count
592
Dimensions (mm)
156 x 233
Weight (g)
877
  • Preface; Introducing R; Statistical modelling and inference; Regression and analysis of variance; Binary response data; Multinomial and Poisson response data; Survival data; Finite mixture models; Random effects models; Variance component models; Bibliography; R function and constant index; Dataset index; Subject index;
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