03057cam a22003498i 450000100090000000300050000900500170001400800410003101000170007202000310008903500130012004000290013304200080016205000230017008200230019310000310021624500700024725000190031726300090033626400450034530000280039033600260041833700280044433800270047249000790049950400510057850506020062952012540123165000440248565000350252977601430256422117661CSPC20250905143347.0210707s2021 flu b 001 0 eng  a 2021033196 a9780367753665q(paperback) a22117661 aDLCbengerdacDLCdCSPC apcc00aQA278.2b.H64 202100a519.536bH675l2231 aHoffman, John P.,eauthor.10aLinear regression models :bapplications in R /cJohn P. Hoffman. aFirst edition. a2109 1aBoca Raton, Florida :bCRC Press,c2021. axv, 420 pages ;c23 cm. atextbtxt2rdacontent aunmediatedbn2rdamedia avolumebnc2rdacarrier0 aChapman & Hall/CRC statistics in the social and behavioral sciences series aIncludes bibliographical references and index.0 aIntroduction -- Review of elementary statistical concepts -- Simple linear regression models -- Multiple linear regression models -- The ANOVA table and goodness-of-fit statistics -- Comparing linear regression models -- Indicator variables in linear regression models -- Independence -- Homoscedasticity -- Collinearity and multicollinearity -- Normality, linearity, and interaction effects -- Models specification -- Measurement errors -- Influential observations: leverage points and outliers -- Multilevel linear regression models -- A brief introduction to logistic regression -- Conclusions. a"Research in the social and behavioral sciences has benefited from linear regression models (LRMs) for decades to identify and understand the associations among a set of explanatory variables and an outcome variable. Linear Regression Models: Applications in R provides you with a comprehensive treatment of these models and indispensable guidance about how to estimate them using the R software environment. After furnishing some background material, the author explains how to estimate simple and multiple LRMs in R, including how interpret their coefficients and understand their assumptions. Several chapters thoroughly describe these assumptions, and explain how to determine whether they are satisfied and how to modify the regression model if they are not. The book also includes chapters on specifying the correct model, adjusting for measurement error, understanding the effects of influential observations, and using the model with multilevel data. The concluding chapter presents an alternative model - logistic regression - designed for binary or two-category outcome variables. The book includes appendices that discuss data management and missing data, and provides simulations in R to test model assumptions"--cProvided by publisher. 0aRegression analysisxComputer programs. 0aR (Computer program language).08iOnline version:aHoffman, John P.tLinear regression modelsbFirst edition.dBoca Raton : CRC Press, 2021z9781003162230w(DLC) 2021033197