For practical considerations, it is in some case impossible to simulate MAS models at population level. The current paper shows that MAS models applied to samples with heterogeneous costs of interactions between agents have biased results. Heterogeneous costs of interactions in MAS models can come from the spatial dimension in MAS models or from fixed costs per interaction. The paper presents two correction procedures to remove the sampling bias and to increase the reliability of the outcome. The correction procedures can be very promising for future applications of MAS models because it becomes possible to deploy more complex models without bias on more detailed datasets that are only available at sample level, which will be the case for c...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty. Pr...
Agent Based Models (ABMs) have become extremely popular tools for simulating certain kinds of comple...
Supplementary Fig. 8. Lumping and oversplitting behavior of the GMYC model in simulations in relatio...
For practical considerations, it is in some case impossible to simulate MAS models at population lev...
Abstract. How to ensure that two different implementations of a sim-ulation will produce the same re...
This paper discusses a series of Monte Carlo experiments designed to evaluate the empirical properti...
Abstract. How to ensure that two different implementations of a sim-ulation will produce the same re...
Starting from an agent-based interpretation of the well-known Bass innovation diffusion model, we pe...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty tha...
International audienceThe computational cost of large-scale multi-agent based simulations (MABS) can...
The potentialities of the MAS should not hide the difficulties the modelisator can encounter. More p...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty tha...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty. Pr...
Thesis (Master's)--University of Washington, 2017-08Multi-agent systems (MAS) assist with studying e...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty. Pr...
Agent Based Models (ABMs) have become extremely popular tools for simulating certain kinds of comple...
Supplementary Fig. 8. Lumping and oversplitting behavior of the GMYC model in simulations in relatio...
For practical considerations, it is in some case impossible to simulate MAS models at population lev...
Abstract. How to ensure that two different implementations of a sim-ulation will produce the same re...
This paper discusses a series of Monte Carlo experiments designed to evaluate the empirical properti...
Abstract. How to ensure that two different implementations of a sim-ulation will produce the same re...
Starting from an agent-based interpretation of the well-known Bass innovation diffusion model, we pe...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty tha...
International audienceThe computational cost of large-scale multi-agent based simulations (MABS) can...
The potentialities of the MAS should not hide the difficulties the modelisator can encounter. More p...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty tha...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty. Pr...
Thesis (Master's)--University of Washington, 2017-08Multi-agent systems (MAS) assist with studying e...
A new algorithm is developed to solve models with heterogeneous agents and aggregate uncertainty. Pr...
Agent Based Models (ABMs) have become extremely popular tools for simulating certain kinds of comple...
Supplementary Fig. 8. Lumping and oversplitting behavior of the GMYC model in simulations in relatio...