This text covers both multiple linear regression and some experimental design models. The text uses the response plot to visualize the model and to detect outliers, does not assume that the error distribution has a known parametric distribution, develops prediction intervals that work when the error distribution is unknown, suggests bootstrap hypothesis tests that may be useful for inference after variable selection, and develops prediction regions and large sample theory for the multivariate linear regression model that has m response variables. A relationship between multivariate prediction regions and confidence regions provides a simple way to bootstrap confidence regions. These confidence regions often provide a practical method for testing hypotheses. There is also a chapter on generalized linear models and generalized additive models. There are many R functions to produce response and residual plots, to simulate prediction intervals and hypothesis tests, to detect outliers, and to choose response transformations for multiple linear regression or experimental design models. This text is for graduates and undergraduates with a strong mathematical background. The prerequisites for this text are linear algebra and a calculus based course in statistics.
... Linear, and Mixed Models McFADDEN - Management of Data in Clinical Trials McLACHLAN - Discriminant Analysis and Statistical Pattern Recognition McLACHLAN and KRISHNAN - The EM Algorithm and Extensions McLACHLAN and PEEL ' Finite ...
Praise for the Third Edition "...this is an excellent book which could easily be used as a course text..." —International Statistical Institute The Fourth Edition of Applied Linear Regression provides a thorough update of the basic theory ...
Praise for the Fourth Edition "As with previous editions, the authors have produced a leading textbook on regression." —Journal of the American Statistical Association A comprehensive and up-to-date introduction to the fundamentals of ...
2004, p. xvi; Mclean et al. 1991). We can use the methods of Section 7.8 as a starting point in approaching such data, but those methods are actually of limited practical use because we rarely, if ever, know V. On the other hand, ...
Douglas C. Montgomery, Elizabeth A. Peck, G. Geoffrey Vining ... Second Edition CLARKE · Linear Models: The Theory and Application of Analysis of Variance CLARKE and DISNEY· Probability and Random Processes: A First Course with ...
This popular book blends both theory and application to equip the reader with an understanding of the basic principles necessary to apply regression model-building techniques in a wide variety of application environments.
"This volume presents in detail the fundamental theories of linear regression analysis and diagnosis, as well as the relevant statistical computing techniques so that readers are able to actually model the data using the techniques ...
Cohen's f2 for regressorX j is a ratio of the proportion of the variance inY uniquely explained byX j to the proportion of the variance inY unexplained by any variable in the model. Suppose you have estimated Y from two regressors X1 ...
Kutner, Neter, Nachtsheim, Wasserman, Applied Linear Regression Models, 4/e (ALRM4e) is the long established leading authoritative text and reference on regression (previously Neter was lead author.) For students in most...
Payton, Mark E., Matthew H. Greenstone, and Nathaniel Schenker. 2003. “Overlapping Confidence Intervals or Standard Error Intervals: What Do They Mean in Terms of Statistical Significance?” Journal of Insect Science 3: 34–39.