92 research outputs found
The role of conditional probability in multi-scale stationary Markovian processes
The aim of the paper is to understand how the inclusion of more and more
time-scales into a stochastic stationary Markovian process affects its
conditional probability. To this end, we consider two Gaussian processes: (i) a
short-range correlated process with an infinite set of time-scales bounded from
below, and (ii) a power-law correlated process with an infinite and unbounded
set of time-scales. For these processes we investigate the equal position
conditional probability P(x,t|x,0) and the mean First Passage Time T(L). The
function P(x,t|x,0) can be considered as a proxy of the persistence, i.e. the
fact that when a process reaches a position x then it spends some time around
that position value. The mean First Passage Time can be considered as a proxy
of how fast is the process in reaching a position at distance L starting from
position x. In the first investigation we show that the more time-scales the
process includes, the larger the persistence. Specifically, we show that the
power-law correlated process shows a slow power-law decay of P(x,t|x,0) to the
stationary pdf. By contrast, the short range correlated process shows a decay
dominated by an exponential cut-off. Moreover, we also show that the existence
of an infinite and unbouded set of time-scales is a necessary and not
sufficient condition for observing a slow power-law decay of P(x,t|x,0). In the
second investigation, we show that for large values of L the more time-scales
the process includes, the larger the mean First Passage Time, i.e. the slowest
the process. On the other hand, for small values of L, the more time-scales the
process includes, the smaller the mean First Passage Time, i.e. when a process
statistically spends more time in a given position the likelihood that it
reached nearby positions by chance is also enhanced.Comment: 11 pages, 7 figur
Effective strategies for targeted attacks to the network of Cosa Nostra affiliates
Network dismantling has recently gained interest in the fields of intelligence agencies, anti-corruption analysts and criminal investigators due to its efficiency in disrupting the activity of malicious agents. Here, we apply this approach to detect effective strategies for targeted attacks to Cosa Nostra by analysing the collaboration network of affiliates that participate to the same crimes. We preliminarily detect statistically significant homophily patterns induced by being member of the same mafia syndicate. We also find that links between members belonging to different mafia syndicates play a crucial role in connecting the network into a unique component, confirming the relevance of weak ties. Inspired by this result we investigate the resilience properties of the network under random and targeted attacks with a percolation based toy model. Random removal of nodes results to be quite inefficient in dismantling the network. Conversely, targeted attacks where nodes are removed according to ranked network centralities are significantly more effective. A strategy based on a removal of nodes that takes into account how much a member collaborates with different mafia syndicates has an efficiency similar to the one where nodes are removed according to their degree. The advantage of such a strategy is that it does not require a complete knowledge of the underlying network to be operationally effective
Patterns of trading profiles at the Nordic Stock Exchange. A correlation-based approach
We investigate the trading behavior of Finnish individual investors trading
the stocks selected to compute the OMXH25 index in 2003 by tracking the
individual daily investment decisions. We verify that the set of investors is a
highly heterogeneous system under many aspects. We introduce a correlation
based method that is able to detect a hierarchical structure of the trading
profiles of heterogeneous individual investors. We verify that the detected
hierarchical structure is highly overlapping with the cluster structure
obtained with the approach of statistically validated networks when an
appropriate threshold of the hierarchical trees is used. We also show that the
combination of the correlation based method and of the statistically validated
method provides a way to expand the information about the clusters of investors
with similar trading profiles in a robust and reliable way.Comment: 25 pages, 8 figure
Scale-free relaxation of a wave packet in a quantum well with power-law tails
We propose a setup for which a power-law decay is predicted to be observable
for generic and realistic conditions. The system we study is very simple: A
quantum wave packet initially prepared in a potential well with (i) tails
asymptotically decaying like ~ x^{-2} and (ii) an eigenvalues spectrum that
shows a continuous part attached to the ground or equilibrium state. We
analytically derive the asymptotic decay law from the spectral properties for
generic, confined initial states. Our findings are supported by realistic
numerical simulations for state-of-the-art expansion experiments with cold
atoms.Comment: improved and extended versio
Two-step estimators of high dimensional correlation matrices
We investigate block diagonal and hierarchical nested stochastic multivariate
Gaussian models by studying their sample cross-correlation matrix on high
dimensions. By performing numerical simulations, we compare a filtered sample
cross-correlation with the population cross-correlation matrices by using
several rotationally invariant estimators (RIE) and hierarchical clustering
estimators (HCE) under several loss functions. We show that at large but finite
sample size, sample cross-correlation filtered by RIE estimators are often
outperformed by HCE estimators for several of the loss functions. We also show
that for block models and for hierarchically nested block models the best
determination of the filtered sample cross-correlation is achieved by
introducing two-step estimators combining state-of-the-art non-linear shrinkage
models with hierarchical clustering estimators.Comment: 14 pages, 6 figures, 6 table
Multi-scale analysis of the European airspace using network community detection
We show that the European airspace can be represented as a multi-scale
traffic network whose nodes are airports, sectors, or navigation points and
links are defined and weighted according to the traffic of flights between the
nodes. By using a unique database of the air traffic in the European airspace,
we investigate the architecture of these networks with a special emphasis on
their community structure. We propose that unsupervised network community
detection algorithms can be used to monitor the current use of the airspaces
and improve it by guiding the design of new ones. Specifically, we compare the
performance of three community detection algorithms, also by using a null model
which takes into account the spatial distance between nodes, and we discuss
their ability to find communities that could be used to define new control
units of the airspace.Comment: 22 pages, 14 figure
Backbone of credit relationships in the Japanese credit market
We detect the backbone of the weighted bipartite network of the Japanese
credit market relationships. The backbone is detected by adapting a general
method used in the investigation of weighted networks. With this approach we
detect a backbone that is statistically validated against a null hypothesis of
uniform diversification of loans for banks and firms. Our investigation is done
year by year and it covers more than thirty years during the period from 1980
to 2011. We relate some of our findings with economic events that have
characterized the Japanese credit market during the last years. The study of
the time evolution of the backbone allows us to detect changes occurred in
network size, fraction of credit explained, and attributes characterizing the
banks and the firms present in the backbone.Comment: 14 pages, 8 figure
- …