Confidence and self-attribution bias in an artificial stock market
Authored by H Eugene Stanley, Mario A Bertella, Felipe R Pires, Henio H A Rego, Jonathas N Silva, Irena Vodenska
Date Published: 2017
DOI: 10.1371/journal.pone.0172258
Sponsors:
No sponsors listed
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Using an agent-based model we examine the dynamics of stock price
fluctuations and their rates of return in an artificial financial market
composed of fundamentalist and chartist agents with and without
confidence. We find that chartist agents who are confident generate
higher price and rate of return volatilities than those who are not. We
also find that kurtosis and skewness are lower in our simulation study
of agents who are not confident. We show that the stock price and
confidence index-both generated by our model D are cointegrated and that
stock price affects confidence index but confidence index does not
affect stock price. We next compare the results of our model with the
S\&P 500 index and its respective stock market confidence index using
cointegration and Granger tests. As in our model, we find that stock
prices drive their respective confidence indices, but that the opposite
relationship, i.e., the assumption that confidence indices drive stock
prices, is not significant.
Tags
time-series
models
Hypothesis
Unit-root