Gerhard Tutz


Ontology type: schema:Person     


Person Info

NAME

Gerhard

SURNAME

Tutz

Publications in SciGraph latest 50 shown

  • 2019-03 Tree-structured modelling of varying coefficients in STATISTICS AND COMPUTING
  • 2018-09 Tree-structured modelling of categorical predictors in generalized additive regression in ADVANCES IN DATA ANALYSIS AND CLASSIFICATION
  • 2017-06 Mixture models for ordinal responses to account for uncertainty of choice in ADVANCES IN DATA ANALYSIS AND CLASSIFICATION
  • 2017-04 Variable selection in discrete survival models including heterogeneity in LIFETIME DATA ANALYSIS
  • 2017-03 A uniform framework for the combination of penalties in generalized structured models in ADVANCES IN DATA ANALYSIS AND CLASSIFICATION
  • 2016-09 Item-focussed Trees for the Identification of Items in Differential Item Functioning in PSYCHOMETRIKA
  • 2016-09 Improved nearest neighbor classifiers by weighting and selection of predictors in STATISTICS AND COMPUTING
  • 2016-07 Variable selection for discrete competing risks models in QUALITY & QUANTITY
  • 2016 Springer-Lehrbuch in NONE
  • 2016-01 Additive mixed models with approximate Dirichlet process mixtures: the EM approach in STATISTICS AND COMPUTING
  • 2016 Modeling Discrete Time-to-Event Data in NONE
  • 2015-04 Extended ordered paired comparison models with application to football data from German Bundesliga in ASTA ADVANCES IN STATISTICAL ANALYSIS
  • 2015-03 A Penalty Approach to Differential Item Functioning in Rasch Models in PSYCHOMETRIKA
  • 2015 Regularization Methods in Economic Forecasting in EMPIRICAL ECONOMIC AND FINANCIAL RESEARCH
  • 2014-07 Rating Scales as Predictors—The Old Question of Scale Level and Some Answers in PSYCHOMETRIKA
  • 2014-03 Variable selection for generalized linear mixed models by L1-penalized estimation in STATISTICS AND COMPUTING
  • 2013-12 Multinomial logit models with implicit variable selection in ADVANCES IN DATA ANALYSIS AND CLASSIFICATION
  • 2013-06 Ridge estimation for multinomial logit models with symmetric side constraints in COMPUTATIONAL STATISTICS
  • 2013 Regularization and Model Selection with Categorical Covariates in ALGORITHMS FROM AND FOR NATURE AND LIFE
  • 2012-03 Nonparametric estimation of the link function including variable selection in STATISTICS AND COMPUTING
  • 2012-01 Boosting techniques for nonlinear time series models in ASTA ADVANCES IN STATISTICAL ANALYSIS
  • 2011 Poisson Regression in INTERNATIONAL ENCYCLOPEDIA OF STATISTICAL SCIENCE
  • 2010-04 Guest Editorial: Regularisation Methods in Regression and Classification in STATISTICS AND COMPUTING
  • 2010 Statistik in NONE
  • 2010 Generalized Linear Mixed Models Based on Boosting in STATISTICAL MODELLING AND REGRESSION STRUCTURES
  • 2010 Regression für Zählvariablen in HANDBUCH DER SOZIALWISSENSCHAFTLICHEN DATENANALYSE
  • 2009-09 Penalized regression with correlation-based penalty in STATISTICS AND COMPUTING
  • 2009 Arbeitsbuch Statistik in NONE
  • 2008-03 A comparison of methods for the fitting of generalized additive models in STATISTICS AND COMPUTING
  • 2008 Boosting Correlation Based Penalization in Generalized Linear Models in RECENT ADVANCES IN LINEAR MODELS AND RELATED AREAS
  • 2007 Spezielle Testprobleme in STATISTIK
  • 2007 Mehrdimensionale Zufallsvariablen in STATISTIK
  • 2007 Varianzanalyse in STATISTIK
  • 2007 Univariate Deskription und Exploration von Daten in STATISTIK
  • 2007 Wahrscheinlichkeitsrechnung in STATISTIK
  • 2007 Stetige Zufallsvariablen in STATISTIK
  • 2007 Zeitreihen in STATISTIK
  • 2007 A Boosting Approach to Generalized Monotonic Regression in ADVANCES IN DATA ANALYSIS
  • 2007 Einführung in STATISTIK
  • 2007 Regressionsanalyse in STATISTIK
  • 2007 Mehr über Zufallsvariablen und Verteilungen in STATISTIK
  • 2007 Diskrete Zufallsvariablen in STATISTIK
  • 2007 Parameterschätzung in STATISTIK
  • 2007 Testen von Hypothesen in STATISTIK
  • 2007 Multivariate Deskription und Exploration in STATISTIK
  • 2006-03 Genetic algorithms for the selection of smoothing parameters in additive models in COMPUTATIONAL STATISTICS
  • 2005-10 Local principal curves in STATISTICS AND COMPUTING
  • 2005-07 Localized classification in STATISTICS AND COMPUTING
  • 2005 Varianzanalyse in ARBEITSBUCH STATISTIK
  • 2005 Multivariate Deskription und Exploration in ARBEITSBUCH STATISTIK
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