Difference between revisions of "MediaWiki:Sidebar"
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* Models | * Models | ||
− | ** | + | ** Introduction_&_notation | Introduction & notation |
** Introduction_to_Modeling_the_Individual_Parameters | Modeling the individual parameters | ** Introduction_to_Modeling_the_Individual_Parameters | Modeling the individual parameters | ||
** Introduction_to_Modeling_the_observations | Modeling the observations | ** Introduction_to_Modeling_the_observations | Modeling the observations | ||
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* Tasks & Tools | * Tasks & Tools | ||
+ | ** Introduction | Introduction | ||
** Modelisation|Modelisation | ** Modelisation|Modelisation | ||
** Simulation | Simulation | ** Simulation | Simulation |
Revision as of 16:01, 13 May 2013
- WikiPopix
- Home_page| Home page
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- Introduction
- Overview | Overview
- The_individual_approach | The individual approach
- What is a model? A joint probability distribution! | What is a model? A joint probability distribution!
- Description_representation_and_implementation_of_a_model | Description, representation and implementation of a model
- Models
- Introduction_&_notation | Introduction & notation
- Introduction_to_Modeling_the_Individual_Parameters | Modeling the individual parameters
- Introduction_to_Modeling_the_observations | Modeling the observations
- Introduction_to_Extensions | Extensions
- Tasks & Tools
- Introduction | Introduction
- Modelisation|Modelisation
- Simulation | Simulation
- Methods
- Introduction_and_Notations | Introduction and Notations
- The_SAEM_algorithm_for_estimating_population_parameters |The SAEM algorithm for estimating population parameters
- The_Metropolis-Hastings_algorithm_for_simulating_the_individual_parameters | The Metropolis-Hastings algorithm for simulating the individual parameters
- Estimation_of_the_observed_Fisher_information_matrix | Estimation of the observed Fisher information matrix
- Estimation of the log-likelihood via importance sampling | Estimation of the log-likelihood via importance sampling
- Case study
- SEARCH
- TOOLBOX
- LANGUAGES