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Like most academic authors, my views are a joint product of my
teaching and my research. Needless to say, my views reflect the
biases that I have acquired. One way to articulate the rationale
(and limitations) of my biases is through the preface of a truly
great text of a previous era, Cooley and Lohnes (1971, p. v). They
draw a distinction between mathematical statisticians whose intel
lect gave birth to the field of multivariate analysis, such as
Hotelling, Bartlett, and Wilks, and those who chose to "concentrate
much of their attention on methods of analyzing data in the
sciences and of interpreting the results of statistical analysis .
. . . (and) . . . who are more interested in the sciences than in
mathematics, among other characteristics. " I find the distinction
between individuals who are temperamentally "mathe maticians" (whom
philosophy students might call "Platonists") and "scientists"
("Aristotelians") useful as long as it is not pushed to the point
where one assumes "mathematicians" completely disdain data and
"scientists" are never interested in contributing to the
mathematical foundations of their discipline. I certainly feel more
comfortable attempting to contribute in the "scientist" rather than
the "mathematician" role. As a consequence, this book is primarily
written for individuals concerned with data analysis. However, as
noted in Chapter 1, true expertise demands familiarity with both
traditions."
What should you see when you?re analyzing real data using one of the major statistical packages, such as SPSS, SAS or Microsoft Excel? This book will show you, and will walk you through the output from a variety of statistical outcomes, such as data reflecting a single common factor. Through the use of actual demonstrations, the authors supply readers with the computer programs necessary to simulate data sets with the statistical properties (usually multivariate) that are often assumed of real data. The reader is then shown how to analyze these data sets and how to interpret the results. The book begins with a general introduction to doing research and tips for using the three statistical packages. The authors next explore how to create data structures and perform univariate, bivariate, and multivariate simulations. They then show how to use the simulations to understand common statistical algorithms and their outputs when doing a basic correlation analysis, exploratory factor analysis, confirmatory factor analysis, multidimensional scaling, multiple regression, discriminate analysis, classification analysis and MANOVA. Throughout the book, the authors provide the reader with helpful guides, such as: *Hint boxes to give readers tips for executing particular techniques using the statistical software packages. *Steps that show each stage of a procedure, such as importing an Excel file into SAS. *Problems end each chapter so the reader can practice the techniques described. *Web Site with the SAS and SPSS programs and sample data.
What should you see when you?re analyzing real data using one of the major statistical packages, such as SPSS, SAS or Microsoft Excel? This book will show you, and will walk you through the output from a variety of statistical outcomes, such as data reflecting a single common factor. Through the use of actual demonstrations, the authors supply readers with the computer programs necessary to simulate data sets with the statistical properties (usually multivariate) that are often assumed of real data. The reader is then shown how to analyze these data sets and how to interpret the results. The book begins with a general introduction to doing research and tips for using the three statistical packages. The authors next explore how to create data structures and perform univariate, bivariate, and multivariate simulations. They then show how to use the simulations to understand common statistical algorithms and their outputs when doing a basic correlation analysis, exploratory factor analysis, confirmatory factor analysis, multidimensional scaling, multiple regression, discriminate analysis, classification analysis and MANOVA. Throughout the book, the authors provide the reader with helpful guides, such as: *Hint boxes to give readers tips for executing particular techniques using the statistical software packages. *Steps that show each stage of a procedure, such as importing an Excel file into SAS. *Problems end each chapter so the reader can practice the techniques described. *Web Site with the SAS and SPSS programs and sample data.
Using a horizontal organization (i.e., by task rather than program)
Computer Literacy introduces students in the behavioral sciences to
the computer resources they use on campus to do their work.
Beginning with an introduction to computers, authors Ira H.
Bernstein and Paul Havig use numerous examples with demonstrations
(such as how to export an Excel file to a Word file) to show the
reader how to select between programs for their specific needs, how
to use the computer for communication and literature search
purposes, how to use computers for databases and statistical
programming, and some basics of computer programming. To enhance
your students reading, the authors provide:
Using a horizontal organization (i.e., by task rather than program)
Computer Literacy introduces students in the behavioral sciences to
the computer resources they use on campus to do their work.
Beginning with an introduction to computers, authors Ira H.
Bernstein and Paul Havig use numerous examples with demonstrations
(such as how to export an Excel file to a Word file) to show the
reader how to select between programs for their specific needs, how
to use the computer for communication and literature search
purposes, how to use computers for databases and statistical
programming, and some basics of computer programming. To enhance
your students reading, the authors provide:
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