204 research outputs found
The impact of big winners on passive and active equity investment strategies
We investigate the impact of big winner stocks on the performance of active
and passive investment strategies using a combination of numerical and
analytical techniques. Our analysis is based on historical stock price data
from 2006 to 2021 for a large variety of global indexes. We show that the
log-normal distribution provides a reasonable fit for total returns for the
majority of world stock indexes but highlight the limitations of this model.
Using an analytical expression for a finite sum of log-normal random variables,
we show that the typical return of a concentrated portfolio is less than that
of an equally weighted index. This finding indicates that active managers face
a significant risk of underperforming due to the potential for missing out on
the substantial returns generated by big winner stocks. Our results suggest
that passive investing strategies, that do not involve the selection of
individual stocks, are likely to be more effective in achieving long-term
financial goals.Comment: 15 pages, 3 figures, 4 table
Portfolio Optimization Rules beyond the Mean-Variance Approach
In this paper, we revisit the relationship between investors' utility
functions and portfolio allocation rules. We derive portfolio allocation rules
for asymmetric Laplace distributed returns and compare
them with the mean-variance approach, which is based on Gaussian returns. We
reveal that in the limit of small , the Markowitz
contribution is accompanied by a skewness term. We also obtain the allocation
rules when the expected return is a random normal variable in an average and
worst-case scenarios, which allows us to take into account uncertainty of the
predicted returns. An optimal worst-case scenario solution smoothly
approximates between equal weights and minimum variance portfolio, presenting
an attractive convex alternative to the risk parity portfolio. We address the
issue of handling singular covariance matrices by imposing conditional
independence structure on the precision matrix directly. Finally, utilizing a
microscopic portfolio model with random drift and analytical expression for the
expected utility function with log-normal distributed cross-sectional returns,
we demonstrate the influence of model parameters on portfolio construction.
This comprehensive approach enhances allocation weight stability, mitigates
instabilities associated with the mean-variance approach, and can prove
valuable for both short-term traders and long-term investors
Optimal portfolio allocation with uncertain covariance matrix
In this paper, we explore the portfolio allocation problem involving an
uncertain covariance matrix. We calculate the expected value of the Constant
Absolute Risk Aversion (CARA) utility function, marginalized over a
distribution of covariance matrices. We show that marginalization introduces a
logarithmic dependence on risk, as opposed to the linear dependence assumed in
the mean-variance approach. Additionally, it leads to a decrease in the
allocation level for higher uncertainties. Our proposed method extends the
mean-variance approach by considering the uncertainty associated with future
covariance matrices and expected returns, which is important for practical
applications
Comment on "Casimir energies with finite-width mirrors"
We comment on a recent publication [1] by Fosco, Lombardo and Mazzitelli on
Casimir energies for material slabs (`finite width mirrors') and report a
discrepancy between results obtained there for a single mirror and some
previous calculations. We provide a simple consistency check which proves that
the method used in [1] is not reliable when applied to approximations of
piecewise constant profile of the mirror. We also present an alternative method
for calculation of the Casimir energy in such systems based on our recent work.
Our results coincide both with perturbation theory and with some older
\cite{Bordag'95} and more recent \cite{Vassilevitch'08} calculations, but
differ from those of [1].Comment: Published version, 4 page
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