128 research outputs found
Epidemics of Liquidity Shortages in Interbank Markets
Financial contagion from liquidity shocks has being recently ascribed as a
prominent driver of systemic risk in interbank lending markets. Building on
standard compartment models used in epidemics, in this work we develop an EDB
(Exposed-Distressed-Bankrupted) model for the dynamics of liquidity shocks
reverberation between banks, and validate it on electronic market for interbank
deposits data. We show that the interbank network was highly susceptible to
liquidity contagion at the beginning of the 2007/2008 global financial crisis,
and that the subsequent micro-prudential and liquidity hoarding policies
adopted by banks increased the network resilience to systemic risk---yet with
the undesired side effect of drying out liquidity from the market. We finally
show that the individual riskiness of a bank is better captured by its network
centrality than by its participation to the market, along with the currently
debated concept of "too interconnected to fail"
The Italian primary school-size distribution and the city-size: a complex nexus
We characterize the statistical law according to which Italian primary
school-size distributes. We find that the school-size can be approximated by a
log-normal distribution, with a fat lower tail that collects a large number of
very small schools. The upper tail of the school-size distribution decreases
exponentially and the growth rates are distributed with a Laplace PDF. These
distributions are similar to those observed for firms and are consistent with a
Bose-Einstein preferential attachment process. The body of the distribution
features a bimodal shape suggesting some source of heterogeneity in the school
organization that we uncover by an in-depth analysis of the relation between
schools-size and city-size. We propose a novel cluster methodology and a new
spatial interaction approach among schools which outline the variety of
policies implemented in Italy. Different regional policies are also discussed
shedding lights on the relation between policy and geographical features.Comment: 16 pages, 10 figure
From innovation to diversification: a simple competitive model
Few attempts have been proposed in order to describe the statistical features
and historical evolution of the export bipartite matrix countries/products. An
important standpoint is the introduction of a products network, namely a
hierarchical forest of products that models the formation and the evolution of
commodities. In the present article, we propose a simple dynamical model where
countries compete with each other to acquire the ability to produce and export
new products. Countries will have two possibilities to expand their export:
innovating, i.e. introducing new goods, namely new nodes in the product
networks, or copying the productive process of others, i.e. occupying a node
already present in the same network. In this way, the topology of the products
network and the country-product matrix evolve simultaneously, driven by the
countries push toward innovation.Comment: 8 figures, 8 table
Detecting early signs of the 2007-2008 crisis in the world trade
Since 2007, several contributions have tried to identify early-warning
signals of the financial crisis. However, the vast majority of analyses has
focused on financial systems and little theoretical work has been done on the
economic counterpart. In the present paper we fill this gap and employ the
theoretical tools of network theory to shed light on the response of world
trade to the financial crisis of 2007 and the economic recession of 2008-2009.
We have explored the evolution of the bipartite World Trade Web (WTW) across
the years 1995-2010, monitoring the behavior of the system both before and
after 2007. Our analysis shows early structural changes in the WTW topology:
since 2003, the WTW becomes increasingly compatible with the picture of a
network where correlations between countries and products are progressively
lost. Moreover, the WTW structural modification can be considered as concluded
in 2010, after a seemingly stationary phase of three years. We have also
refined our analysis by considering specific subsets of countries and products:
the most statistically significant early-warning signals are provided by the
most volatile macrosectors, especially when measured on developing countries,
suggesting the emerging economies as being the most sensitive ones to the
global economic cycles.Comment: 18 pages, 9 figure
Randomizing bipartite networks: the case of the World Trade Web
Within the last fifteen years, network theory has been successfully applied
both to natural sciences and to socioeconomic disciplines. In particular,
bipartite networks have been recognized to provide a particularly insightful
representation of many systems, ranging from mutualistic networks in ecology to
trade networks in economy, whence the need of a pattern detection-oriented
analysis in order to identify statistically-significant structural properties.
Such an analysis rests upon the definition of suitable null models, i.e. upon
the choice of the portion of network structure to be preserved while
randomizing everything else. However, quite surprisingly, little work has been
done so far to define null models for real bipartite networks. The aim of the
present work is to fill this gap, extending a recently-proposed method to
randomize monopartite networks to bipartite networks. While the proposed
formalism is perfectly general, we apply our method to the binary, undirected,
bipartite representation of the World Trade Web, comparing the observed values
of a number of structural quantities of interest with the expected ones,
calculated via our randomization procedure. Interestingly, the behavior of the
World Trade Web in this new representation is strongly different from the
monopartite analogue, showing highly non-trivial patterns of self-organization.Comment: 22 pages, 13 figure
Statistically validated network of portfolio overlaps and systemic risk
Common asset holding by financial institutions, namely portfolio overlap, is
nowadays regarded as an important channel for financial contagion with the
potential to trigger fire sales and thus severe losses at the systemic level.
In this paper we propose a method to assess the statistical significance of the
overlap between pairs of heterogeneously diversified portfolios, which then
allows us to build a validated network of financial institutions where links
indicate potential contagion channels due to realized portfolio overlaps. The
method is implemented on a historical database of institutional holdings
ranging from 1999 to the end of 2013, but can be in general applied to any
bipartite network where the presence of similar sets of neighbors is of
interest. We find that the proportion of validated network links (i.e., of
statistically significant overlaps) increased steadily before the 2007-2008
global financial crisis and reached a maximum when the crisis occurred. We
argue that the nature of this measure implies that systemic risk from fire
sales liquidation was maximal at that time. After a sharp drop in 2008,
systemic risk resumed its growth in 2009, with a notable acceleration in 2013,
reaching levels not seen since 2007. We finally show that market trends tend to
be amplified in the portfolios identified by the algorithm, such that it is
possible to have an informative signal about financial institutions that are
about to suffer (enjoy) the most significant losses (gains)
Complex delay dynamics on railway networks: from universal laws to realistic modelling
Railways are a key infrastructure for any modern country. The reliability and
resilience of this peculiar transportation system may be challenged by
different shocks such as disruptions, strikes and adverse weather conditions.
These events compromise the correct functioning of the system and trigger the
spreading of delays into the railway network on a daily basis. Despite their
importance, a general theoretical understanding of the underlying causes of
these disruptions is still lacking. In this work, we analyse the Italian and
German railway networks by leveraging on the train schedules and actual delay
data retrieved during the year 2015. We use {these} data to infer simple
statistical laws ruling the emergence of localized delays in different areas of
the network and we model the spreading of these delays throughout the network
by exploiting a framework inspired by epidemic spreading models. Our model
offers a fast and easy tool for the preliminary assessment of the
{effectiveness of} traffic handling policies, and of the railway {network}
criticalities.Comment: 32 pages (with appendix), 28 Figures (with appendix), 2 Table
Urbanization and Economic Complexity
Urbanization plays a crucial role in the economic development of every
country. The mutual relationship between the urbanization of any country and
its economic productive structure is far from being understood. We analyzed the
historical evolution of product exports for all countries using the World Trade
Web (WTW) with respect to patterns of urbanization from 1995-2010. Using the
evolving framework of economic complexity, we reveal that a country's economic
development in terms of its production and export of goods, is interwoven with
the urbanization process during the early stages of its economic development
and growth. Meanwhile in urbanized countries, the reciprocal relation between
economic growth and urbanization fades away with respect to its later stages,
becoming negligible for countries highly dependent on the export of resources
where urbanization is not linked to any structural economic transformation.Comment: 11 Pages, 5 Figure
Inferring monopartite projections of bipartite networks: an entropy-based approach
Bipartite networks are currently regarded as providing a major insight into
the organization of many real-world systems, unveiling the mechanisms driving
the interactions occurring between distinct groups of nodes. One of the most
important issues encountered when modeling bipartite networks is devising a way
to obtain a (monopartite) projection on the layer of interest, which preserves
as much as possible the information encoded into the original bipartite
structure. In the present paper we propose an algorithm to obtain
statistically-validated projections of bipartite networks, according to which
any two nodes sharing a statistically-significant number of neighbors are
linked. Since assessing the statistical significance of nodes similarity
requires a proper statistical benchmark, here we consider a set of four null
models, defined within the exponential random graph framework. Our algorithm
outputs a matrix of link-specific p-values, from which a validated projection
is straightforwardly obtainable, upon running a multiple hypothesis testing
procedure. Finally, we test our method on an economic network (i.e. the
countries-products World Trade Web representation) and a social network (i.e.
MovieLens, collecting the users' ratings of a list of movies). In both cases
non-trivial communities are detected: while projecting the World Trade Web on
the countries layer reveals modules of similarly-industrialized nations,
projecting it on the products layer allows communities characterized by an
increasing level of complexity to be detected; in the second case, projecting
MovieLens on the films layer allows clusters of movies whose affinity cannot be
fully accounted for by genre similarity to be individuated.Comment: 16 pages, 9 figure
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