Estimation of agent-based models using sequential Monte Carlo methods
Authored by Thomas Lux
Date Published: 2018
DOI: 10.1016/j.jedc.2018.01.021
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Abstract
Estimation of agent-based models is currently an intense area of
research. Recent contributions have to a large extent resorted to
simulation-based methods mostly using some form of simulated method of
moments estimation (SMM). There is, however, an entire branch of
statistical methods that should appear promising, but has to our
knowledge never been applied so far to estimate agent-based models in
economics and finance: Markov chain Monte Carlo methods designed for
state space models or models with latent variables. This latter class of
models seems particularly relevant as agent-based models typically
consist of some latent and some observable variables since not all the
characteristics of agents would mostly be observable. Indeed, one might
often not only be interested in estimating the parameters of a model,
but also to infer the time development of some latent variable. However,
agent-based models when interpreted as latent variable models would be
typically characterized by non-linear dynamics and non-Gaussian
fluctuations and, thus, would require a computational approach to
statistical inference. Here we resort to Sequential Monte Carlo (SMC)
estimation based on a particle filter. This approach is used here to
numerically approximate the conditional densities that enter into the
likelihood function of the problem. With this approximation we
simultaneously obtain parameter estimates and filtered state
probabilities for the unobservable variable(s) that drive(s) the
dynamics of the observable time series. In our examples, the observable
series will be asset returns (or prices) while the unobservable
variables will be some measure of agents' aggregate sentiment. We apply
SMC to two selected agent-based models of speculative dynamics with
somewhat different flavor. The empirical application to a selection of
financial data includes an explicit comparison of the goodness-of-fit of
both models. (C) 2018 Elsevier B.V. All rights reserved.
Tags
Agent-based models
Market
Volatility
Heterogeneous agents
Prices
Particle
State-space models
Estimation
Markov chain monte carlo
Particle
filter
Maximum-likelihood