20,133 research outputs found
Market ecology of active and passive investors
We study the role of active and passive investors in an investment market
with uncertainties. Active investors concentrate on a single or a few stocks
with a given probability of determining the quality of them. Passive investors
spread their investment uniformly, resembling buying the market index. In this
toy market stocks are introduced as good and bad. If a stock receives
sufficient investment it will survive, otherwise die. Active players exert a
selective pressure since they can determine to an extent the investment
quality. We show that the active players provide the driving force whereas the
passive ones act as free riders. While their gains do not differ too much, we
show that the active players enjoy an edge. Their presence also provides better
gains to the passive players and stocks themselves.Comment: 16 pages, 4 figure
Style migration in Europe
This paper complements the literature on style migration by examining value and size premiums throughout Europe. Information from more than 25 European markets indicates an average value premium of 9.58% per year. The primary determinants of the persistent value outperformance are: 1) value firms migrating to a neutral or growth portfolio, and 2) growth stocks migrating to neutral or value portfolios. The financial health metric F_SCORE helps uncover outperforming stocks ex ante, and provides preliminary evidence on the probability of migration, but only for small stocks
Self-Consistent Asset Pricing Models
We discuss the foundations of factor or regression models in the light of the
self-consistency condition that the market portfolio (and more generally the
risk factors) is (are) constituted of the assets whose returns it is (they are)
supposed to explain. As already reported in several articles, self-consistency
implies correlations between the return disturbances. As a consequence, the
alpha's and beta's of the factor model are unobservable. Self-consistency leads
to renormalized beta's with zero effective alpha's, which are observable with
standard OLS regressions. Analytical derivations and numerical simulations show
that, for arbitrary choices of the proxy which are different from the true
market portfolio, a modified linear regression holds with a non-zero value
at the origin between an asset 's return and the proxy's return.
Self-consistency also introduces ``orthogonality'' and ``normality'' conditions
linking the beta's, alpha's (as well as the residuals) and the weights of the
proxy portfolio. Two diagnostics based on these orthogonality and normality
conditions are implemented on a basket of 323 assets which have been components
of the S&P500 in the period from Jan. 1990 to Feb. 2005. These two diagnostics
show interesting departures from dynamical self-consistency starting about 2
years before the end of the Internet bubble. Finally, the factor decomposition
with the self-consistency condition derives a risk-factor decomposition in the
multi-factor case which is identical to the principal components analysis
(PCA), thus providing a direct link between model-driven and data-driven
constructions of risk factors.Comment: 36 pages with 8 figures. large version with 6 appendices for the
Proceedings of the 5th International Conference APFS (Applications of Physics
in Financial Analysis), June 29-July 1, 2006, Torin
Quantum Finance
Quantum theory is used to model secondary financial markets. Contrary to
stochastic descriptions, the formalism emphasizes the importance of trading in
determining the value of a security. All possible realizations of investors
holding securities and cash is taken as the basis of the Hilbert space of
market states. The temporal evolution of an isolated market is unitary in this
space. Linear operators representing basic financial transactions such as cash
transfer and the buying or selling of securities are constructed and simple
model Hamiltonians that generate the temporal evolution due to cash flows and
the trading of securities are proposed. The Hamiltonian describing financial
transactions becomes local when the profit/loss from trading is small compared
to the turnover. This approximation may describe a highly liquid and efficient
stock market. The lognormal probability distribution for the price of a stock
with a variance that is proportional to the elapsed time is reproduced for an
equilibrium market. The asymptotic volatility of a stock in this case is
related to the long-term probability that it is traded.Comment: Improved 32 page version that is to appear in Physica A. One appendix
scrapped, typos corrected, section on conditions for efficient markets
extended. References adde
The effect of non-ideal market conditions on option pricing
Option pricing is mainly based on ideal market conditions which are well
represented by the Geometric Brownian Motion (GBM) as market model. We study
the effect of non-ideal market conditions on the price of the option. We focus
our attention on two crucial aspects appearing in real markets: The influence
of heavy tails and the effect of colored noise. We will see that both effects
have opposite consequences on option pricing.Comment: 26 pages and 8 colored figures. Invited Talk in "Horizons in complex
systems", Messina, 5-8 December 2001. To appear in Physica-
Statistical properties of short term price trends in high frequency stock market data
We investigated distributions of short term price trends for high frequency
stock market data. A number of trends as a function of their lengths was
measured. We found that such a distribution does not fit to results following
from an uncorrelated stochastic process. We proposed a simple model with a
memory that gives a qualitative agreement with real data.Comment: 10 pages, 9 figures, in ver. 2 one chapter adde
Scaling analysis of multivariate intermittent time series
The scaling properties of the time series of asset prices and trading volumes
of stock markets are analysed. It is shown that similarly to the asset prices,
the trading volume data obey multi-scaling length-distribution of
low-variability periods. In the case of asset prices, such scaling behaviour
can be used for risk forecasts: the probability of observing next day a large
price movement is (super-universally) inversely proportional to the length of
the ongoing low-variability period. Finally, a method is devised for a
multi-factor scaling analysis. We apply the simplest, two-factor model to
equity index and trading volume time series.Comment: 16 pages, 5 figures, accepted for publication in Physica
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