Structured regression for categorical data
Structured regression for categorical data
2.2 hrs read
Rate this book:
About This Book
"Categorical data play an important role in many statistical analyses. They appear whenever the outcomes of one or more categorical variables are observed. A categorical variable can be seen as a variable for which the possible values form a set of categories, which can be finite or, in the case of count data, infinite. These categories can be records of answers (yes/no) in a questionnaire, diagnoses like normal/abnormal resulting from a medical examination or choices of brands in consumer behaviour. Data of this type are common in all sciences that use quantitative research tools, for example social sciences, economics, biology, genetics and medicine, but also engineering and agriculture. In some applications all of the observed variables are categorical and the resulting data can be summarized in contingency tables which contain the counts for combinations of possible outcomes. In other applications categorical data are collected together with continuous variables and one wants to investigate the dependence of one or more categorical variables on continuous and/or categorical variables"--
Buy This Book
As an Amazon Associate and Bookshop.org affiliate, BookOrb earns from qualifying purchases.
Write a Review
Sign in to write a review.
More by Gerhard Tutz
Die Analyse kategorialer Daten
Latent Trait-Modelle für ordinale Beobachtungen
Modeling Discrete Time-to-Event Data
Modelle fur kategoriale Daten
Modelle fur kategoriale Daten mit ordinalem Skalenniveau
Multivariate statistical modelling based on generalized linear models
Multivariate Statistische Verfahren