The classical approach to statistical analysis is usually based upon finding values for model parameters that maximize the likelihood function. Model choice in this context is often also based on the likelihood function, but with the addition of a penalty term for the number of parameters. Though models may be compared pairwise by using likelihood ratio tests for example, various criteria such as the Akaike information criterion have been proposed as alternatives when multiple models need to be compared. In practical terms, the classical approach to model selection usually involves maximizing the likelihood function associated with each competing model and then calculating the corresponding criteria value(s). However, when large numbers of ...
When the aim of an experiment is the estimation of a generalized linear model (GLM), standard design...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
We study simulated annealing algorithms to maximise a function psi on a subset of R-d. In classical ...
The classical approach to statistical analysis is usually based upon finding values for model parame...
It has been shown in the literature that the task of estimating the parameters of nonlinear models m...
In image analysis and image processing most methods require the selection of model parameters such a...
In image analysis and image processing most methods require the selection of model parameters such a...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
Many popular methods of model selection involve minimizing a penalized function of the data (such as...
Since its introduction as a generic heuristic for discrete optimisation in 1983, simulated annealing...
This paper presents both estimation and simulation as optimization problems that differ in the optim...
Since its introduction as a generic heuristic for discrete optimisation in 1983, simulated annealing...
This chapter discusses simulated annealing and generalizations. The simulated annealing algorithm as...
This chapter discusses simulated annealing and generalizations. The simulated annealing algorithm as...
This chapter discusses simulated annealing and generalizations. The simulated annealing algorithm as...
When the aim of an experiment is the estimation of a generalized linear model (GLM), standard design...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
We study simulated annealing algorithms to maximise a function psi on a subset of R-d. In classical ...
The classical approach to statistical analysis is usually based upon finding values for model parame...
It has been shown in the literature that the task of estimating the parameters of nonlinear models m...
In image analysis and image processing most methods require the selection of model parameters such a...
In image analysis and image processing most methods require the selection of model parameters such a...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
Many popular methods of model selection involve minimizing a penalized function of the data (such as...
Since its introduction as a generic heuristic for discrete optimisation in 1983, simulated annealing...
This paper presents both estimation and simulation as optimization problems that differ in the optim...
Since its introduction as a generic heuristic for discrete optimisation in 1983, simulated annealing...
This chapter discusses simulated annealing and generalizations. The simulated annealing algorithm as...
This chapter discusses simulated annealing and generalizations. The simulated annealing algorithm as...
This chapter discusses simulated annealing and generalizations. The simulated annealing algorithm as...
When the aim of an experiment is the estimation of a generalized linear model (GLM), standard design...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
We study simulated annealing algorithms to maximise a function psi on a subset of R-d. In classical ...