We explore the issue of estimating a simple agent-based model of price formation in an asset market using the approach of Alfarano et al. (2008) as an example. Since we are able to derive various moment conditions for this model, we can apply generalized method of moments (GMM) estimation. We find that we can get relatively accurate parameter estimates with an appropriate choice of moment conditions and initialization of the iterative GMM estimates that reduce the biases arising from strong autocorrelations of the estimates of certain parameters. We apply our estimator to a sample of long records of returns of various stock and foreign exchange markets as well the price of gold. Using the estimated parameters to form the best linear forecas...
The standard generalized method of moments (GMM) estimation of Euler equations in heterogeneous-agen...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Many applications in financial economics use data series with different starting or ending dates. Th...
We explore the issue of estimating a simple agent-based model of price formation in an asset market ...
We take the model of Alfarano et al. (Journal of Economic Dynamics & Control 32, 2008, 101-136) as a...
Bringing an elementary agent-based model to the data: Estimation via GMM and an application to forec...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
In this paper, we derive a generalized method of moments (GMM) estimator for variance in markets wit...
In finance, volatility is fundamentally important because it is associated with the risk. A growing...
This paper shows how to estimate models by the generalized method of moments and the generalized emp...
We take the model of Alfarano et al. (J Econ Dyn Control 32:101–136, 2008) as a prototype agent-base...
The long-run consumption risk (LRR) model is a promising approach to resolve prominent asset pricing...
The article examines the properties of generalized method of moments GMM estimators of utility funct...
GARCH Models have become a workhouse in volatility forecasting of financial and monetary market time...
Efficient GMM estimation of the semi-strong GARCH(1,1) model requires simultaneous estimation of the...
The standard generalized method of moments (GMM) estimation of Euler equations in heterogeneous-agen...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Many applications in financial economics use data series with different starting or ending dates. Th...
We explore the issue of estimating a simple agent-based model of price formation in an asset market ...
We take the model of Alfarano et al. (Journal of Economic Dynamics & Control 32, 2008, 101-136) as a...
Bringing an elementary agent-based model to the data: Estimation via GMM and an application to forec...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
In this paper, we derive a generalized method of moments (GMM) estimator for variance in markets wit...
In finance, volatility is fundamentally important because it is associated with the risk. A growing...
This paper shows how to estimate models by the generalized method of moments and the generalized emp...
We take the model of Alfarano et al. (J Econ Dyn Control 32:101–136, 2008) as a prototype agent-base...
The long-run consumption risk (LRR) model is a promising approach to resolve prominent asset pricing...
The article examines the properties of generalized method of moments GMM estimators of utility funct...
GARCH Models have become a workhouse in volatility forecasting of financial and monetary market time...
Efficient GMM estimation of the semi-strong GARCH(1,1) model requires simultaneous estimation of the...
The standard generalized method of moments (GMM) estimation of Euler equations in heterogeneous-agen...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Many applications in financial economics use data series with different starting or ending dates. Th...