Agent-based modelling has been proved to be extremely useful for learning about real world societies through the analysis of simulations. Recent agent-based models usually contain a large number of parameters that capture the interactions among microheterogeneous subjects and the multistructure of the complex system. However, this can result in the “curse of dimensionality” phenomenon and decrease the robustness of the model’s output. Hence, it is still a great challenge to efficiently calibrate agent-based models to actual data. In this paper, we present a surrogate analysis method for calibration by combining supervised machine-learning and intelligent iterative sampling. Without any prior assumptions regarding the distribution of the par...
Simulations are increasingly employed to evaluate alternative planning strategies. With the number o...
Multi-agent market simulation is commonly used to create an environment for downstream machine learn...
International audienceModels of social systems generally contain free parameters that can-not be eva...
Économie et finance quantitativeTaking agent-based models (ABM) closer to the data is an open challe...
Efficiently calibrating agent-based models (ABMs) to real data is an open challenge. This paper expl...
Abstract In this paper we deal with some validation and calibration experiments on a modified versio...
Agent-based simulations form a valuable tool for learning about real world societies and global beha...
Since the survey by Windrum et al. (Journal of Artificial Societies and Social Simulation 10:8, 2007...
In this proof-of-concept work, we evaluate the performance of multiple machine-learning methods as s...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
A dissertation submitted in fulfillment of the requirements of the degree of Master of Science in ...
Surrogate models are commonly used to approximate the multivariate input or output behavior of compl...
Agent based models are very widely used in different disciplines. In financial markets, they can be ...
Simulations are increasingly employed to evaluate alternative planning strategies. With the number o...
Multi-agent market simulation is commonly used to create an environment for downstream machine learn...
International audienceModels of social systems generally contain free parameters that can-not be eva...
Économie et finance quantitativeTaking agent-based models (ABM) closer to the data is an open challe...
Efficiently calibrating agent-based models (ABMs) to real data is an open challenge. This paper expl...
Abstract In this paper we deal with some validation and calibration experiments on a modified versio...
Agent-based simulations form a valuable tool for learning about real world societies and global beha...
Since the survey by Windrum et al. (Journal of Artificial Societies and Social Simulation 10:8, 2007...
In this proof-of-concept work, we evaluate the performance of multiple machine-learning methods as s...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
A dissertation submitted in fulfillment of the requirements of the degree of Master of Science in ...
Surrogate models are commonly used to approximate the multivariate input or output behavior of compl...
Agent based models are very widely used in different disciplines. In financial markets, they can be ...
Simulations are increasingly employed to evaluate alternative planning strategies. With the number o...
Multi-agent market simulation is commonly used to create an environment for downstream machine learn...
International audienceModels of social systems generally contain free parameters that can-not be eva...