Bringing an elementary agent-based model to the data: Estimation via GMM and an application to forecasting of asset price volatility
Authored by Thomas Lux, Jaba Ghonghadze
Date Published: 2016
DOI: 10.1016/j.jempfin.2016.02.002
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Abstract
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 design of the GMM estimator that reduces
the biases arising from strong correlations 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 as the
price of gold. Using the estimated parameters to form the best linear
forecasts for future volatility we find that the behavioral model
generates sensible forecasts that get close to those of a standard
GARCH(1,1) model in their overall performance, and often provide useful
information on top of the information incorporated in the GARCH
forecasts. (C) 2016 Elsevier B.V. All rights reserved.
Tags
herd behavior
Chaos
Heterogeneous agents
Moments
Stock-market
Financial-markets