Simulated models suffer intrinsically from validation and comparison problems. The choice of a suitable indicator quantifying the distance between the model and the data is pivotal to model selection. An information theoretic criterion, called GSL-div, is introduced to measure how closely models’ synthetic output replicates the properties of observable time series without the need to resort to the likelihood function or to impose stationarity requirements. The indicator is sufficiently general to be applied to any model able to simulate or predict time series data, from simple univariate models to more complex objects including Agent-Based Models. When a set of models is given, a simple function of the L-divergence is used to select the can...
This paper shows which statistical techniques can be used to validate simulation models, depending o...
The aim of this study is to define a new statistic, PVL, based on the relative distance between the ...
Ecologists are increasingly applying model selection to their data analyses, primarily to compare re...
Simulated models suffer intrinsically from validation and comparison problems. The choice of a suita...
Simulated models suffer intrinsically from validation and comparison problems. The choice of a suita...
Simulated economies suffer intrinsically from validation and comparison problems. The choice of a su...
A major concern about the use of simulation models regards their relationship with the empirical dat...
There are two types of simulation models: Demonstration models, essentially existence proofs for phe...
There centincreasein the breath of computational methodologies has been matched with a corresponding...
In the context of inverse or parameter estimation problems we demonstrate the use of statistically b...
To build good models, we need to know the appropriate model size. To handle this problem, a variety ...
This paper develops two weighted measures for model selection by generalizing the Kullback-Leibler d...
Information-theoretic approaches to model selection, such as Akaike's information criterion (AIC) an...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
We consider issues related to the order of an autoregression selected using information criteria. We...
This paper shows which statistical techniques can be used to validate simulation models, depending o...
The aim of this study is to define a new statistic, PVL, based on the relative distance between the ...
Ecologists are increasingly applying model selection to their data analyses, primarily to compare re...
Simulated models suffer intrinsically from validation and comparison problems. The choice of a suita...
Simulated models suffer intrinsically from validation and comparison problems. The choice of a suita...
Simulated economies suffer intrinsically from validation and comparison problems. The choice of a su...
A major concern about the use of simulation models regards their relationship with the empirical dat...
There are two types of simulation models: Demonstration models, essentially existence proofs for phe...
There centincreasein the breath of computational methodologies has been matched with a corresponding...
In the context of inverse or parameter estimation problems we demonstrate the use of statistically b...
To build good models, we need to know the appropriate model size. To handle this problem, a variety ...
This paper develops two weighted measures for model selection by generalizing the Kullback-Leibler d...
Information-theoretic approaches to model selection, such as Akaike's information criterion (AIC) an...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
We consider issues related to the order of an autoregression selected using information criteria. We...
This paper shows which statistical techniques can be used to validate simulation models, depending o...
The aim of this study is to define a new statistic, PVL, based on the relative distance between the ...
Ecologists are increasingly applying model selection to their data analyses, primarily to compare re...