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Linear models (Statistics)
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The concept ** Linear models (Statistics)** represents the subject, aboutness, idea or notion of resources found in **European University Institute Library**.

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Linear models (Statistics)
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The concept

**Linear models (Statistics)**represents the subject, aboutness, idea or notion of resources found in**European University Institute Library**.- Label
- Linear models (Statistics)

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- A course in linear models
- A first course in linear model theory
- A primer on linear models
- A unified theory of estimation and inference for nonlinear dynamic models
- An introduction to generalized linear models
- An introduction to generalized linear models
- Applied linear models with SAS
- Applied regression analysis and generalized linear models
- Applying generalized linear models
- Bayesian forecasting and dynamic models
- Bayesian full information analysis of simultaneous equation models using integration by Monte Carlo
- Design of experiments : an introduction based on linear models
- Design of experiments for generalized linear models
- Dynamic nonlinear econometric models : asymptotic theory
- Flexible regression and smoothing : using GAMLSS in R
- Foundations of linear and generalized linear models
- Generalized additive models : an introduction with R
- Generalized additive models : an introduction with R
- Generalized additive models : an introduction with R
- Generalized linear models
- Generalized linear models : a unified approach
- Generalized linear models : a unified approach
- Generalized linear models and extensions
- Generalized linear models and extensions
- Generalized linear models and extensions
- Generalized linear models for bounded and limited quantitative variables
- Generalized linear models for bounded and limited quantitative variables
- Generalized linear models for categorical and continuous limited dependent variables
- Generalized linear models for insurance data
- Generalized linear models for insurance data
- Generalized linear models with random effects : unified analysis via h-likelihood
- Generalized, linear, and mixed models
- Hierarchical linear modeling : guide and applications
- Hierarchical linear models : applications and data analysis methods
- Interaction effects in linear and generalized linear models : examples and applications using Stata
- Interaction effects in linear and generalized linear models : examples and applications using Stata®
- Interpreting probability models : logit, probit and other generalized linear models
- Interpreting probability models : logit, probit, and other generalized linear models
- Linear mixed models for longitudinal data
- Linear models
- Linear models and regression with R : an integrated approach
- Linear models for optimal test design
- Linear models for unbalanced data
- Linear models in statistics
- Linear models in statistics
- Linear models with Python
- Modeling count data
- Modeling count data
- Modelling binary data
- Multilevel and longitudinal modeling using Stata
- Multivariate models and dependence concepts
- Multivariate statistical modelling based on generalized linear models
- Nonlinear economic models : cross-sectional, times series and neural network applications
- Nonlinear regression analysis and its applications
- Panel data : theory and applications
- Regression & linear modeling : best practices and modern methods
- Regression analysis and linear models : concepts, applications, and implementation
- Statistical modelling and regression structures : festschrift in honour of Ludwig Fahrmeir
- Statistical models and causal inference : a dialogue with the social sciences
- Statistics for high-dimensional data : methods, theory and applications
- Testing regression models based on sample survey data
- The analysis of linear models
- The coordinate-free approach to linear models

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`<div class="citation" vocab="http://schema.org/"><i class="fa fa-external-link-square fa-fw"></i> Data from <span resource="http://link.library.eui.eu/resource/wbRmsoCMNFc/" typeof="CategoryCode http://bibfra.me/vocab/lite/Concept"><span property="name http://bibfra.me/vocab/lite/label"><a href="http://link.library.eui.eu/resource/wbRmsoCMNFc/">Linear models (Statistics)</a></span> - <span property="potentialAction" typeOf="OrganizeAction"><span property="agent" typeof="LibrarySystem http://library.link/vocab/LibrarySystem" resource="http://link.library.eui.eu/"><span property="name http://bibfra.me/vocab/lite/label"><a property="url" href="http://link.library.eui.eu/">European University Institute Library</a></span></span></span></span></div>`