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Manvasanai serial episode 1. 21 An application of the Bradley-Terry model to the Corus chess tour-nament, and to World Cup football 99 22 Brief introduction to Survival Data Analysis 106 23 The London 2012 Olympics Men’s 200 metres, and reading data o the web 110.

Statistical
Format
Häftad (Paperback / softback)
Språk
Engelska
Antal sidor
264
Utgivningsdatum
1998-05-01
Förlag
John Wiley & Sons Inc
Medarbetare
Krzanowski
Illustrationer
black & white illustrations
Dimensioner
234 x 158 x 19 mm
Vikt
385 g
Antal komponenter
1
Komponenter
49:B&W 6.14 x 9.21 in or 234 x 156 mm (Royal 8vo) Perfect Bound on White w/Gloss Lam
ISBN
9780470711019

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Statisticians rely heavily on making models of 'causal situations' in order to fully explain and predict events. Modelling therefore plays a vital part in all applications of statistics and is a component of most undergraduate programmes. 'An Introduction to Statistical Modelling' provides a single reference with an applied slant that caters for all three years of a degree course. The book concentrates on core issues and only the most essential mathematical justifications are given in detail. Attention is firmly focused on the statistical aspects of the techniques, in this lively, practical approach.

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De som köpt den här boken har ofta också köpt Multivariate Analysis av W J Krzanowski, F H C Marriott (inbunden).

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Kundrecensioner

  • Multivariate Analysis

    A readable and user-friendly presentation of multivariate analysis A common and important statistical technique, multivariate analysis has applications in a wide range of fields of study, including subjects as diverse as biology and linguistics. M..

Bloggat om An Introduction to Statistical Modelling

W. J. Krzanowski is the author of An Introduction to Statistical Modelling, published by Wiley.

Series preface. Preface. 1. Introduction. 1.1 Models in data analysis. 1.2 Populations and samples. 1.3 Variables and factors. 1.4 Observational and experimental data. 1.5 Statistical models. 2. Distributions and inference. 2.1 Random variables and probability distributions. 2.2 Probability distributions as models. 2.3 Some common distributions. 2.4 Sampling distributions. 2.5 Inference. 2.6 Postscript. 3. Normal response and quantitative explanatory variables: regression. 3.1 Motivation. 3.2 Simple regression. 3.3 Multiple regression. 3.4 Model building. 3.5 Model validation and criticism. 3.6 Comparison of regressions. 3.7 Non-linear models. 4. Normal response and qualitative explanatory variables: analysis of variance. 4.1 Motivation. 4.2 One-way arrangements. 4.3 Cross-classifications. 4.4 Nested classifications. 4.5 A general approach via multiple regression. 4.6 Analysis of covariance. 5. Non-normality: the theory of generalized linear models. 5.1 Introduction. 5.2 The generalized linear model. 5.3 Fitting the model. 5.4 Assessing the fit of a model: deviance. 5.5 Comparing models: analysis of deviance. 5.6 Normal models. 5.7 Inspecting and checking models. 5.8 Software. 6. Binomial response variables: logistic regression and related method. 6.1 Binary response data. 6.2 Modelling binary response probabilities. 6.3 Logistic regression. 6.4 Related methods. 6.5 Ordered polytomous data. 7. Tables of counts and log-linear models. 7.1 Introduction. 7.2 Data mechanisms and distributions. 7.3 Log-linear models for means. 7.4 Models for contingency tables. 7.5 Analysis. 7.6 Applications. 8. Further topics. 8.1 Introduction. 8.2 Continuous non-normal responses. 8.3 Quasi-likelihood. 8.4 Overdispersion. 8.5 Non-parametric models. 8.6 Conclusion: the art of model building. References. Index.

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