342 BIBLIOGRAPHYKeele, L. J. (2008), Semiparametric Regression for the Social Sciences, NewYork, USA: John Wiley & Sons.Kelsey, J. L. and Hardy, R. J. (1975), “Driving of mo<strong>to</strong>r vehicles as a riskfac<strong>to</strong>r for acute herniated lumbar intervertebral disc,” American Journal ofEpidemiology, 102, 63–73.Kraepelin, E. (1919), Dementia Praecox and Paraphrenia, Edinburgh, UK:Livings<strong>to</strong>ne.Kruskal, J. B. (1964a), “Multidimensional scaling by optimizing goodness-offit<strong>to</strong> a nonmetric hypothesis,” Psychometrika, 29, 1–27.Kruskal, J. B. (1964b), “Nonmetric multidimensional scaling: A numericalmethod,” Psychometrika, 29, 115–129.Lanza, F. L. (1987),“A double-blind study of prophylactic effect of misopros<strong>to</strong>lon lesions of gastric and duodenal mucosa induced by oral administrationof <strong>to</strong>lmetin in healthy subjects,” British Journal of Clinical Practice, 40,91–101.Lanza, F. L., Aspinall, R. L., Swabb, E. A., Davis, R. E., Rack, M. F., and Rubin,A. (1988a),“Double-blind, placebo-controlled endoscopic comparison ofthe mucosal protective effects of misopros<strong>to</strong>l versus cimetidine on <strong>to</strong>lmetininducedmucosal injury <strong>to</strong> the s<strong>to</strong>mach and duodenum,” Gastroenterology,95, 289–294.Lanza, F. L., Fakouhi, D., Rubin, A., Davis, R. E., Rack, M. F., Nissen, C.,and Geis, S. (1989), “A double-blind placebo-controlled comparison of theefficacy and safety of 50, 100, and 200 micrograms of misopros<strong>to</strong>l QID inthe prevention of Ibuprofen-induced gastric and duodenal mucosal lesionsand symp<strong>to</strong>ms,” American Journal of Gastroenterology, 84, 633–636.Lanza, F. L., Peace, K., Gustitus, L., Rack, M. F., and Dickson, B. (1988b),“A blinded endoscopic comparative study of misopros<strong>to</strong>l versus sucralfateand placebo in the prevention of aspirin-induced gastric and duodenal ulceration,”American Journal of Gastroenterology, 83, 143–146.Leisch, F. (2002a), “Sweave: Dynamic generation of statistical reports usingliterate data analysis,” in Compstat 2002 — Proceedings in ComputationalStatistics, eds. W. Härdle and B. Rönz, Physica Verlag, Heidelberg, pp.575–580, ISBN 3-7908-1517-9.Leisch, F. (2002b), “Sweave, Part I: Mixing R and L A TEX,” R News, 2, 28–31,URL http://CRAN.R-project.org/doc/Rnews/.Leisch, F. (2003), “Sweave, Part II: Package vignettes,” R News, 3, 21–24,URL http://CRAN.R-project.org/doc/Rnews/.Leisch, F. (2004), “FlexMix: A general framework for finite mixture modelsand latent class regression in R,” Journal of Statistical Software, 11, URLhttp://www.jstatsoft.org/v11/i08/.Leisch, F. and Dimitriadou, E. (2009), mlbench: Machine Learning BenchmarkProblems, URL http://CRAN.R-project.org/package=mlbench, Rpackage version 1.1-6.© 2010 by Taylor and Francis Group, LLC
BIBLIOGRAPHY 343Leisch, F. and Rossini, A. J. (2003), “Reproducible statistical research,”Chance, 16, 46–50.Liang, K. and Zeger, S. L. (1986), “Longitudinal data analysis using generalizedlinear models,” Biometrika, 73, 13–22.Ligges, U. and Mächler, M. (2003), “Scatterplot3d – An R package for visualizingmultivariate data,” Journal of Statistical Software, 8, 1–20, URLhttp://www.jstatsoft.org/v08/i11.Longford, N. T. (1993), Random Coefficient Models, Oxford, UK: Oxford UniversityPress.Lumley, T. (2009), rmeta: Meta-Analysis, URL http://CRAN.R-project.org/package=rmeta, R package version 2.15.Lumley, T. and Miller, A. (2009), leaps: Regression Subset Selection, URLhttp://CRAN.R-project.org/package=leaps, R package version 2.8.Mann, L. (1981), “The baiting crowd in episodes of threatened suicide,” Journalof Personality and Social Psychology, 41, 703–709.Mardia, K. V., Kent, J. T., and Bibby, J. M. (1979), Multivariate Analysis,London, UK: Academic Press.Mardin, C. Y., Hothorn, T., Peters, A., Jünemann, A. G., Nguyen, N. X., andLausen, B. (2003), “New glaucoma classification method based on standardHRT parameters by bagging classification trees,” Journal of Glaucoma, 12,340–346.Marriott, F. H. C. (1982), “Optimization methods of cluster analysis,”Biometrika, 69, 417–421.Mayor, M. and Frei, P. (2003), New Worlds in the Cosmos: The Discovery ofExoplanets, Cambridge, UK: Cambridge University Press.Mayor, M. and Queloz, D. (1995), “A Jupiter-mass companion <strong>to</strong> a solar-typestar,” Nature, 378, 355.McCullagh, P. and Nelder, J. A. (1989), Generalized Linear Models, London,UK: Chapman & Hall/CRC.McLachlan, G. and Peel, D. (2000), Finite Mixture Models, New York, USA:John Wiley & Sons.Mehta, C. R. and Patel, N. R. (2003), StatXact-6: Statistical Software forExact Nonparametric Inference, Cytel Software Corporation, Cambridge,MA, USA.Meyer, D., Zeileis, A., Karatzoglou, A., and Hornik, K. (2009), vcd: VisualizingCategorical Data, URL http://CRAN.R-project.org/package=vcd,R package version 1.2-3.Miller, A. (2002), Subset Selection in Regression, New York, USA: Chapman& Hall, 2nd edition.Morrison, D. F. (2005), “Multivariate analysis of variance,” in Encyclopedia ofBiostatistics, eds. P. Armitage and T. Col<strong>to</strong>n, Chichester, UK: John Wiley& Sons, 2nd edition.© 2010 by Taylor and Francis Group, LLC
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A Handbook ofStatisticalAnalysesUsi
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DedicationTo our wives, Mary-Elizab
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Preface to First EditionThis book i
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List of Figures1.1 Histograms of th
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SUMMARY 23examples of these functio
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INTRODUCTION 47table. Here there ar
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SUMMARY 159Table 8.5:schizophrenia
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METHODS FOR NON-NORMAL DISTRIBUTION
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METHODS FOR NON-NORMAL DISTRIBUTION
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ANALYSIS USING R: GEE 239R> summary
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SUMMARY 251Table 13.3:schizophrenia
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254 SIMULTANEOUS INFERENCE AND MULT
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STATISTICS OF META-ANALYSIS 271Sele
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PRINCIPAL COMPONENT ANALYSIS 287nie
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- Page 359 and 360: BIBLIOGRAPHY 347Stevens, J. (2001),