493 research outputs found
Heterogeneous resource allocation can change social hierarchy in public goods games
Public Goods Games represent one of the most useful tools to study group
interactions between individuals. However, even if they could provide an
explanation for the emergence and stability of cooperation in modern societies,
they are not able to reproduce some key features observed in social and
economical interactions. The typical shape of wealth distribution - known as
Pareto Law - and the microscopic organization of wealth production are two of
them. Here, we introduce a modification to the classical formulation of Public
Goods Games that allows for the emergence of both of these features from first
principles. Unlike traditional Public Goods Games on networks, where players
contribute equally to all the games in which they participate, we allow
individuals to redistribute their contribution according to what they earned in
previous rounds. Results from numerical simulations show that not only a Pareto
distribution for the payoffs naturally emerges but also that if players don't
invest enough in one round they can act as defectors even if they are formally
cooperators. Finally, we also show that the players self-organize in a very
productive backbone that covers almost perfectly the minimum spanning tree of
the underlying interaction network. Our results not only give an explanation
for the presence of the wealth heterogeneity observed in real data but also
points to a conceptual change regarding how cooperation is defined in
collective dilemmas.Comment: 8 pages, 5 figures, 55 reference
From degree-correlated to payoff-correlated activity for an optimal resolution of social dilemmas
An active participation of players in evolutionary games depends on several
factors, ranging from personal stakes to the properties of the interaction
network. Diverse activity patterns thus have to be taken into account when
studying the evolution of cooperation in social dilemmas. Here we study the
weak prisoner's dilemma game, where the activity of each player is determined
in a probabilistic manner either by its degree or by its payoff. While
degree-correlated activity introduces cascading failures of cooperation that
are particularly severe on scale-free networks with frequently inactive hubs,
payoff-correlated activity provides a more nuanced activity profile, which
ultimately hinders systemic breakdowns of cooperation. To determine optimal
conditions for the evolution of cooperation, we introduce an exponential decay
to payoff-correlated activity that determines how fast the activity of a player
returns to its default state. We show that there exists an intermediate decay
rate, at which the resolution of the social dilemma is optimal. This can be
explained by the emerging activity patterns of players, where the inactivity of
hubs is compensated effectively by the increased activity of average-degree
players, who through their collective influence in the network sustain a higher
level of cooperation. The sudden drops in the fraction of cooperators observed
with degree-correlated activity therefore vanish, and so does the need for the
lengthy spatiotemporal reorganization of compact cooperative clusters. The
absence of such asymmetric dynamic instabilities thus leads to an optimal
resolution of social dilemmas, especially when the conditions for the evolution
of cooperation are strongly adverse.Comment: 8 two-column pages, 6 figures; accepted for publication in Physical
Review
Epidemic Spreading in Random Rectangular Networks
The use of network theory to model disease propagation on populations
introduces important elements of reality to the classical epidemiological
models. The use of random geometric graphs (RGG) is one of such network models
that allows for the consideration of spatial properties on disease propagation.
In certain real-world scenarios -like in the analysis of a disease propagating
through plants- the shape of the plots and fields where the host of the disease
is located may play a fundamental role on the propagation dynamics. Here we
consider a generalization of the RGG to account for the variation of the shape
of the plots/fields where the hosts of a disease are allocated. We consider a
disease propagation taking place on the nodes of a random rectangular graph
(RRG) and we consider a lower bound for the epidemic threshold of a
Susceptible-Infected-Susceptible (SIS) or Susceptible-Infected-Recovered (SIR)
model on these networks. Using extensive numerical simulations and based on our
analytical results we conclude that (ceteris paribus) the elongation of the
plot/field in which the nodes are distributed makes the network more resilient
to the propagation of a disease due to the fact that the epidemic threshold
increases with the elongation of the rectangle. These results agree with
accumulated empirical evidence and simulation results about the propagation of
diseases on plants in plots/fields of the same area and different shapes.Comment: Version 4, 13 pages, 6 figures, 44 ref
Dynamics of interacting diseases
Current modeling of infectious diseases allows for the study of complex and
realistic scenarios that go from the population to the individual level of
description. However, most epidemic models assume that the spreading process
takes place on a single level (be it a single population, a meta-population
system or a network of contacts). In particular, interdependent contagion
phenomena can only be addressed if we go beyond the scheme one pathogen-one
network. In this paper, we propose a framework that allows describing the
spreading dynamics of two concurrent diseases. Specifically, we characterize
analytically the epidemic thresholds of the two diseases for different
scenarios and also compute the temporal evolution characterizing the unfolding
dynamics. Results show that there are regions of the parameter space in which
the onset of a disease's outbreak is conditioned to the prevalence levels of
the other disease. Moreover, we show, for the SIS scheme, that under certain
circumstances, finite and not vanishing epidemic thresholds are found even at
the thermodynamic limit for scale-free networks. For the SIR scenario, the
phenomenology is richer and additional interdependencies show up. We also find
that the secondary thresholds for the SIS and SIR models are different, which
results directly from the interaction between both diseases. Our work thus
solve an important problem and pave the way towards a more comprehensive
description of the dynamics of interacting diseases.Comment: 24 pages, 9 figures, 4 tables, 3 appendices. Final version accepted
for publication in Physical Review
Dynamic instability of cooperation due to diverse activity patterns in evolutionary social dilemmas
Individuals might abstain from participating in an instance of an
evolutionary game for various reasons, ranging from lack of interest to risk
aversion. In order to understand the consequences of such diverse activity
patterns on the evolution of cooperation, we study a weak prisoner's dilemma
where each player's participation is probabilistic rather than certain. Players
that do not participate get a null payoff and are unable to replicate. We show
that inactivity introduces cascading failures of cooperation, which are
particularly severe on scale-free networks with frequently inactive hubs. The
drops in the fraction of cooperators are sudden, while the spatiotemporal
reorganization of compact cooperative clusters, and thus the recovery, takes
time. Nevertheless, if the activity of players is directly proportional to
their degree, or if the interaction network is not strongly heterogeneous, the
overall evolution of cooperation is not impaired. This is because inactivity
negatively affects the potency of low-degree defectors, who are hence unable to
utilize on their inherent evolutionary advantage. Between cascading failures,
the fraction of cooperators is therefore higher than usual, which lastly
balances out the asymmetric dynamic instabilities that emerge due to
intermittent blackouts of cooperative hubs.Comment: 6 two-column pages, 6 figures; accepted for publication in
Europhysics Letter
A multilayer perspective for the analysis of urban transportation systems
Public urban mobility systems are composed by several transportation modes connected together. Most studies in urban mobility and planning often ignore the multi-layer nature of transportation systems considering only aggregated versions of this complex scenario. In this work we present a model for the representation of the transportation system of an entire city as a multiplex network. Using two different perspectives, one in which each line is a layer and one in which lines of the same transportation mode are grouped together, we study the interconnected structure of 9 different cities in Europe raging from small towns to mega-cities like London and Berlin highlighting their vulnerabilities and possible improvements. Finally, for the city of Zaragoza in Spain, we also consider data about service schedule and waiting times, which allow us to create a simple yet realistic model for urban mobility able to reproduce real-world facts and to test for network improvements
Sull'origine delle terre rosse in Sardegna: gli elementi in traccia nella caratterizzazione di suoli e rocce madri
The trace elements in the characterization or red soils and parent rocks.
The genesis of red soils (Terre Rosse) formed on limestone or dolomite rock bed is yet an unsolved
question. A theory suggests that these soils are the final step of an intense decarbonation process of
the parent rock followed by the change of the materials in the insoluble residue into iron oxides
and clay minerals.
A number of trace elements, most1y transition metals, was determined in Sardinian Terre Rosse and
parent rocks by instrumental neutron activation analysis performing different irradiations in the
TRIGA Mark II nuclear reactor of the University of Pavia. Induced radioactivity measurement was
carried out by gamma-ray spectrometry using a High Purity germanium detector coupled to an
analyzer-computer system. The same elements were also determined in some standard reference
rocks, released by United States Geological Survey, in order to evaluate the accuracy of the
employed analytical method.
Average values of the trace element content in the Terre Rosse and in the parent rocks are presented
and discussed, together with the evaluation of precision and accuracy. Trace element profiles at
different horizons are reported as well. A comparison of trace element distribution among soils
belonging to the same geological era is also presented
Characterising two-pathogen competition in spatially structured environments
Different pathogens spreading in the same host population often generate
complex co-circulation dynamics because of the many possible interactions
between the pathogens and the host immune system, the host life cycle, and the
space structure of the population. Here we focus on the competition between two
acute infections and we address the role of host mobility and cross-immunity in
shaping possible dominance/co-dominance regimes. Host mobility is modelled as a
network of traveling flows connecting nodes of a metapopulation, and the
two-pathogen dynamics is simulated with a stochastic mechanistic approach.
Results depict a complex scenario where, according to the relation among the
epidemiological parameters of the two pathogens, mobility can either be
non-influential for the competition dynamics or play a critical role in
selecting the dominant pathogen. The characterisation of the parameter space
can be explained in terms of the trade-off between pathogen's spreading
velocity and its ability to diffuse in a sparse environment. Variations in the
cross-immunity level induce a transition between presence and absence of
competition. The present study disentangles the role of the relevant biological
and ecological factors in the competition dynamics, and provides relevant
insights into the spatial ecology of infectious diseases.Comment: 30 pages, 6 figures, 1 table. Final version accepted for publication
in Scientific Report
Human mobility networks and persistence of rapidly mutating pathogens
Rapidly mutating pathogens may be able to persist in the population and reach
an endemic equilibrium by escaping hosts' acquired immunity. For such diseases,
multiple biological, environmental and population-level mechanisms determine
the dynamics of the outbreak, including pathogen's epidemiological traits (e.g.
transmissibility, infectious period and duration of immunity), seasonality,
interaction with other circulating strains and hosts' mixing and spatial
fragmentation. Here, we study a susceptible-infected-recovered-susceptible
model on a metapopulation where individuals are distributed in subpopulations
connected via a network of mobility flows. Through extensive numerical
simulations, we explore the phase space of pathogen's persistence and map the
dynamical regimes of the pathogen following emergence. Our results show that
spatial fragmentation and mobility play a key role in the persistence of the
disease whose maximum is reached at intermediate mobility values. We describe
the occurrence of different phenomena including local extinction and emergence
of epidemic waves, and assess the conditions for large scale spreading.
Findings are highlighted in reference to previous works and to real scenarios.
Our work uncovers the crucial role of hosts' mobility on the ecological
dynamics of rapidly mutating pathogens, opening the path for further studies on
disease ecology in the presence of a complex and heterogeneous environment.Comment: 29 pages, 7 figures. Submitted for publicatio
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