Applied Linear Statistical Models by John Neter, Michael H. Kutner and Christopher J. Nachtsheim (1996, Trade Paperback)

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About this product

Product Identifiers

PublisherMcGraw-Hill Higher Education
ISBN-100256119872
ISBN-139780256119879
eBay Product ID (ePID)790654

Product Key Features

LanguageEnglish
Publication NameApplied Linear Statistical Models
Publication Year1996
SubjectProbability & Statistics / General
TypeTextbook
AuthorJohn Neter, Michael H. Kutner, Christopher J. Nachtsheim
Subject AreaMathematics, Non-Classifiable
FormatTrade Paperback

Dimensions

Item Height0.4 in
Item Weight10.4 Oz
Item Length10.8 in
Item Width8.1 in

Additional Product Features

Edition Number4
Dewey Edition20
Dewey Decimal519.5
Edition DescriptionStudent edition,Revised edition
SynopsisThere are two approaches to undergraduate and graduate courses in linear statistical models and experimental design in applied statistics. One is a two-term sequence focusing on regression followed by ANOVA/Experimental design. Applied Linear Statistical Models serves that market. It is offered in business, economics, statistics, industrial engineering, public health, medicine, and psychology departments in four-year colleges and universities, and graduate schools. Applied Linear Statistical Models is the leading text in the market. It is noted for its quality and clarity, and its authorship is first-rate. The approach used in the text is an applied one, with an emphasis on understanding of concepts and exposition by means of examples. Sufficient theoretical foundations are provided so that applications of regression analysis can be carried out comfortably. The fourth edition has been updated to keep it current with important new developments in regression analysis.
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