Identification of Social Interaction Effects in Financial Data
Authored by Tae-Seok Jang
Date Published: 2015
DOI: 10.1007/s10614-013-9415-6
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Abstract
In this paper, we present a stochastic agent-based model and extend an
artificial financial market by considering a stochastic process of
market fundamentals. The model predicts that groups of noise traders are
busy communicating when market uncertainty is high. In particular, we
examine the effects of social interactions on price movements, based on
parameter estimation of the group behavior. As traders' reactions to new
information act much like an endogenous shock on return volatility, however, we cannot easily find an exact solution for the model with
social interactions. Thus, simulation-based inference is used for the
model validation; we investigate whether our artificial economy can
match the empirical moments observed in five major foreign exchange data
sets (as closely as possible). The results indicate that the return
volatility under scrutiny can be robustly decomposed into news (45-55
\%) and social interaction effects (45-55 \%).
Tags
Market
values
Heterogeneous agents
Asset pricing model
Noise trader model
Time-variation
Moments
Estimators
Bootstrap
Routes