80 research outputs found
Inside Money, Procyclical Leverage, and Banking Catastrophes
We explore a model of the interaction between banks and outside investors in
which the ability of banks to issue inside money (short-term liabilities
believed to be convertible into currency at par) can generate a collapse in
asset prices and widespread bank insolvency. The banks and investors share a
common belief about the future value of certain long-term assets, but they have
different objective functions; changes to this common belief result in
portfolio adjustments and trade. Positive belief shocks induce banks to buy
risky assets from investors, and the banks finance those purchases by issuing
new short-term liabilities. Negative belief shocks induce banks to sell assets
in order to reduce their chance of insolvency to a tolerably low level, and
they supply more assets at lower prices, which can result in multiple
market-clearing prices. A sufficiently severe negative shock causes the set of
equilibrium prices to contract (in a manner given by a cusp catastrophe),
causing prices to plummet discontinuously and banks to become insolvent.
Successive positive and negative shocks of equal magnitude do not cancel;
rather, a banking catastrophe can occur even if beliefs simply return to their
initial state. Capital requirements can prevent crises by curtailing the
expansion of balance sheets when beliefs become more optimistic, but they can
also force larger price declines. Emergency asset price supports can be
understood as attempts by a central bank to coordinate expectations on an
equilibrium with solvency.Comment: 31 pages, 10 figure
Jigsaw percolation: What social networks can collaboratively solve a puzzle?
We introduce a new kind of percolation on finite graphs called jigsaw
percolation. This model attempts to capture networks of people who innovate by
merging ideas and who solve problems by piecing together solutions. Each person
in a social network has a unique piece of a jigsaw puzzle. Acquainted people
with compatible puzzle pieces merge their puzzle pieces. More generally, groups
of people with merged puzzle pieces merge if the groups know one another and
have a pair of compatible puzzle pieces. The social network solves the puzzle
if it eventually merges all the puzzle pieces. For an Erd\H{o}s-R\'{e}nyi
social network with vertices and edge probability , we define the
critical value for a connected puzzle graph to be the for which
the chance of solving the puzzle equals . We prove that for the -cycle
(ring) puzzle, , and for an arbitrary connected puzzle
graph with bounded maximum degree, and for
any . Surprisingly, with probability tending to 1 as the network size
increases to infinity, social networks with a power-law degree distribution
cannot solve any bounded-degree puzzle. This model suggests a mechanism for
recent empirical claims that innovation increases with social density, and it
might begin to show what social networks stifle creativity and what networks
collectively innovate.Comment: Published at http://dx.doi.org/10.1214/14-AAP1041 in the Annals of
Applied Probability (http://www.imstat.org/aap/) by the Institute of
Mathematical Statistics (http://www.imstat.org
Coupled catastrophes: sudden shifts cascade and hop among interdependent systems
An important challenge in several disciplines is to understand how sudden
changes can propagate among coupled systems. Examples include the
synchronization of business cycles, population collapse in patchy ecosystems,
markets shifting to a new technology platform, collapses in prices and in
confidence in financial markets, and protests erupting in multiple countries. A
number of mathematical models of these phenomena have multiple equilibria
separated by saddle-node bifurcations. We study this behavior in its normal
form as fast--slow ordinary differential equations. In our model, a system
consists of multiple subsystems, such as countries in the global economy or
patches of an ecosystem. Each subsystem is described by a scalar quantity, such
as economic output or population, that undergoes sudden changes via saddle-node
bifurcations. The subsystems are coupled via their scalar quantity (e.g., trade
couples economic output; diffusion couples populations); that coupling moves
the locations of their bifurcations. The model demonstrates two ways in which
sudden changes can propagate: they can cascade (one causing the next), or they
can hop over subsystems. The latter is absent from classic models of cascades.
For an application, we study the Arab Spring protests. After connecting the
model to sociological theories that have bistability, we use socioeconomic data
to estimate relative proximities to tipping points and Facebook data to
estimate couplings among countries. We find that although protests tend to
spread locally, they also seem to "hop" over countries, like in the stylized
model; this result highlights a new class of temporal motifs in longitudinal
network datasets.Comment: 20 pages, 4 figures, plus a 6-page supplementary material that
contains 5 figures. Accepted at Journal of the Royal Society Interfac
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