161 research outputs found
On information efficiency and financial stability
We study a simple model of an asset market with informed and non-informed
agents. In the absence of non-informed agents, the market becomes information
efficient when the number of traders with different private information is
large enough. Upon introducing non-informed agents, we find that the latter
contribute significantly to the trading activity if and only if the market is
(nearly) information efficient. This suggests that information efficiency might
be a necessary condition for bubble phenomena, induced by the behavior of
non-informed traders, or conversely that throwing some sands in the gears of
financial markets may curb the occurrence of bubbles.Comment: 14 pages, 2 figure
Network models of financial systemic risk: A review
The global financial system can be represented as a large complex network in
which banks, hedge funds and other financial institutions are interconnected to
each other through visible and invisible financial linkages. Recently, a lot of
attention has been paid to the understanding of the mechanisms that can lead to
a breakdown of this network. This can happen when the existing financial links
turn from being a means of risk diversification to channels for the propagation
of risk across financial institutions. In this review article, we summarize
recent developments in the modeling of financial systemic risk. We focus in
particular on network approaches, such as models of default cascades due to
bilateral exposures or to overlapping portfolios, and we also report on recent
findings on the empirical structure of interbank networks. The current review
provides a landscape of the newly arising interdisciplinary field lying at the
intersection of several disciplines, such as network science, physics,
engineering, economics, and ecology.Comment: 33 pages, 6 figure
DebtRank: A microscopic foundation for shock propagation
The DebtRank algorithm has been increasingly investigated as a method to
estimate the impact of shocks in financial networks, as it overcomes the
limitations of the traditional default-cascade approaches. Here we formulate a
dynamical "microscopic" theory of instability for financial networks by
iterating balance sheet identities of individual banks and by assuming a simple
rule for the transfer of shocks from borrowers to lenders. By doing so, we
generalise the DebtRank formulation, both providing an interpretation of the
effective dynamics in terms of basic accounting principles and preventing the
underestimation of losses on certain network topologies. Depending on the
structure of the interbank leverage matrix the dynamics is either stable, in
which case the asymptotic state can be computed analytically, or unstable,
meaning that at least one bank will default. We apply this framework to a
dataset of the top listed European banks in the period 2008 - 2013. We find
that network effects can generate an amplification of exogenous shocks of a
factor ranging between three (in normal periods) and six (during the crisis)
when we stress the system with a 0.5% shock on external (i.e. non-interbank)
assets for all banks.Comment: 10 pages, 2 figure
Portfolio optimization under expected shortfall: contour maps of estimation error
The contour maps of the error of historical resp. parametric estimates for large random portfolios optimized under the risk measure Expected Shortfall (ES) are constructed. Similar maps for the sensitivity of the portfolio weights to small changes in the returns as well as the VaR of the ES-optimized portfolio are also presented, along with results for the distribution of portfolio weights over the random samples and for the out-of-sample and in-the-sample estimates for ES. The contour maps allow one to quantitatively determine the sample size (the length of the time series) required by the optimization for a given number of different assets in the portfolio, at a given confidence level and a given level of relative estimation error. The necessary sample sizes invariably turn out to be unrealistically large for any reasonable choice of the number of assets and the confi dence level. These results are obtained via analytical calculations based on methods borrowed from the statistical physics of random systems, supported by numerical simulations
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