Dynamic programming problems are common in economics, finance and natural resource management. However, exact solutions to these problems are exceptional. Instead, solutions typically rely on numerical approximation techniques which vary in use, complexity and computational requirements. Perturbation, projection and linear programming approaches are among the most useful of these numerical techniques. In this paper, we extend the parametric linear programming technique to include continuous-time problems with jump-diffusion processes, and compare it to projection and perturbation techniques for solving dynamic programming problems in terms of computational speed, accuracy, ease of use and scope. The comparisons are drawn from solutions to t...
Uncertainty in the value chain of fisheries exists and as a result, a production model taking uncert...
In this paper we put forward an easy-to-implement methodology for solving deterministic or stochasti...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...
We compare three parametric techniques to approximate Hamilton-Jacobi-Bellman equations via unidimen...
Standard dynamic resource optimization approaches, such as value function iteration, are challenged ...
Stochastic dynamic programming (SDP) is a useful tool for analyzing policy questions in fisheries ma...
An approximation approach with computable error bounds is derived for a class of stochastic dynamic ...
Abstract We present modeling and solution strategies for large-scale resource allocation problems th...
A wide range of problems in economics, agriculture, and natural resource management have been analyz...
International audienceAs most natural resources, fisheries are affected by random disturbances. The ...
Sustainable resource management in many domains presents large continuous stochastic optimization pr...
Uncertainty has long been recognised as an important aspect of renewable resource assessment and man...
Abstract We present modeling and solution strategies for large-scale resource allocation prob-lems t...
This paper compares the performance of approximately optimal current period analytical solution meth...
Another approach to finite differences is the well developed Markov Chain Approximation (MCA) of Kus...
Uncertainty in the value chain of fisheries exists and as a result, a production model taking uncert...
In this paper we put forward an easy-to-implement methodology for solving deterministic or stochasti...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...
We compare three parametric techniques to approximate Hamilton-Jacobi-Bellman equations via unidimen...
Standard dynamic resource optimization approaches, such as value function iteration, are challenged ...
Stochastic dynamic programming (SDP) is a useful tool for analyzing policy questions in fisheries ma...
An approximation approach with computable error bounds is derived for a class of stochastic dynamic ...
Abstract We present modeling and solution strategies for large-scale resource allocation problems th...
A wide range of problems in economics, agriculture, and natural resource management have been analyz...
International audienceAs most natural resources, fisheries are affected by random disturbances. The ...
Sustainable resource management in many domains presents large continuous stochastic optimization pr...
Uncertainty has long been recognised as an important aspect of renewable resource assessment and man...
Abstract We present modeling and solution strategies for large-scale resource allocation prob-lems t...
This paper compares the performance of approximately optimal current period analytical solution meth...
Another approach to finite differences is the well developed Markov Chain Approximation (MCA) of Kus...
Uncertainty in the value chain of fisheries exists and as a result, a production model taking uncert...
In this paper we put forward an easy-to-implement methodology for solving deterministic or stochasti...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...