79 research outputs found
An Analysis of the Matching Hypothesis in Networks
The matching hypothesis in social psychology claims that people are more
likely to form a committed relationship with someone equally attractive.
Previous works on stochastic models of human mate choice process indicate that
patterns supporting the matching hypothesis could occur even when similarity is
not the primary consideration in seeking partners. Yet, most if not all of
these works concentrate on fully-connected systems. Here we extend the analysis
to networks. Our results indicate that the correlation of the couple's
attractiveness grows monotonically with the increased average degree and
decreased degree diversity of the network. This correlation is lower in sparse
networks than in fully-connected systems, because in the former less attractive
individuals who find partners are likely to be coupled with ones who are more
attractive than them. The chance of failing to be matched decreases
exponentially with both the attractiveness and the degree. The matching
hypothesis may not hold when the degree-attractiveness correlation is present,
which can give rise to negative attractiveness correlation. Finally, we find
that the ratio between the number of matched couples and the size of the
maximum matching varies non-monotonically with the average degree of the
network. Our results reveal the role of network topology in the process of
human mate choice and bring insights into future investigations of different
matching processes in networks
Extraordinary Sex Ratios: Cultural Effects on Ecological Consequences
We model sex-structured population dynamics to analyze pairwise competition
between groups differing both genetically and culturally. A sex-ratio allele is
expressed in the heterogametic sex only, so that assumptions of Fisher's
analysis do not apply. Sex-ratio evolution drives cultural evolution of a
group-associated trait governing mortality in the homogametic sex. The two-sex
dynamics under resource limitation induces a strong Allee effect that depends
on both sex ratio and cultural trait values. We describe the resulting
threshold, separating extinction from positive growth, as a function of female
and male densities. When initial conditions avoid extinction due to the Allee
effect, different sex ratios cannot coexist; in our model, greater female
allocation always invades and excludes a lesser allocation. But the culturally
transmitted trait interacts with the sex ratio to determine the ecological
consequences of successful invasion. The invading female allocation may permit
population persistence at self-regulated equilibrium. For this case, the
resident culture may be excluded, or may coexist with the invader culture. That
is, a single sex-ratio allele in females and a cultural dimorphism in male
mortality can persist; a low-mortality resident trait is maintained by
father-to-son cultural transmission. Otherwise, the successfully invading
female allocation excludes the resident allele and culture, and then drives the
population to extinction via a shortage of males. Finally, we show that the
results obtained under homogeneous mixing hold, with caveats, in a spatially
explicit model with local mating and diffusive dispersal in both sexes.Comment: final version, reflecting changes in response to referees' comment
Cascading failures in spatially-embedded random networks
Cascading failures constitute an important vulnerability of interconnected
systems. Here we focus on the study of such failures on networks in which the
connectivity of nodes is constrained by geographical distance. Specifically, we
use random geometric graphs as representative examples of such spatial
networks, and study the properties of cascading failures on them in the
presence of distributed flow. The key finding of this study is that the process
of cascading failures is non-self-averaging on spatial networks, and thus,
aggregate inferences made from analyzing an ensemble of such networks lead to
incorrect conclusions when applied to a single network, no matter how large the
network is. We demonstrate that this lack of self-averaging disappears with the
introduction of a small fraction of long-range links into the network. We
simulate the well studied preemptive node removal strategy for cascade
mitigation and show that it is largely ineffective in the case of spatial
networks. We introduce an altruistic strategy designed to limit the loss of
network nodes in the event of a cascade triggering failure and show that it
performs better than the preemptive strategy. Finally, we consider a real-world
spatial network viz. a European power transmission network and validate that
our findings from the study of random geometric graphs are also borne out by
simulations of cascading failures on the empirical network.Comment: 13 pages, 15 figure
Evolution of Threats in the Global Risk Network
With a steadily growing population and rapid advancements in technology, the
global economy is increasing in size and complexity. This growth exacerbates
global vulnerabilities and may lead to unforeseen consequences such as global
pandemics fueled by air travel, cyberspace attacks, and cascading failures
caused by the weakest link in a supply chain. Hence, a quantitative
understanding of the mechanisms driving global network vulnerabilities is
urgently needed. Developing methods for efficiently monitoring evolution of the
global economy is essential to such understanding. Each year the World Economic
Forum publishes an authoritative report on the state of the global economy and
identifies risks that are likely to be active, impactful or contagious. Using a
Cascading Alternating Renewal Process approach to model the dynamics of the
global risk network, we are able to answer critical questions regarding the
evolution of this network. To fully trace the evolution of the network we
analyze the asymptotic state of risks (risk levels which would be reached in
the long term if the risks were left unabated) given a snapshot in time, this
elucidates the various challenges faced by the world community at each point in
time. We also investigate the influence exerted by each risk on others. Results
presented here are obtained through either quantitative analysis or
computational simulations.Comment: 27 pages, 15 figure
Divide-and-rule policy in the Naming Game
The Naming Game is a classic model for studying the emergence and evolution
of language in a population. In this paper, we consider the Naming Game with
multiple committed opinions and investigate the dynamics of the game on a
complete graph with an arbitrary large population. The homogeneous mixing
condition enables us to use mean-field theory to analyze the opinion evolution
of the system. However, when the number of opinions increases, the number of
variables describing the system grows exponentially. We focus on a special
scenario where the largest group of committed agents competes with a motley of
committed groups, each of which is significantly smaller than the largest one,
while the majority of uncommitted agents initially hold one unique opinion. We
choose this scenario for two reasons. The first is that it arose many times in
different societies, while the second is that its complexity can be reduced by
merging all agents of small committed groups into a single committed group. We
show that the phase transition occurs when the group of the largest committed
fraction dominates the system, and the threshold for the size of the dominant
group at which this transition occurs depends on the size of the committed
group of the unified category. Further, we derive the general formula for the
multi-opinion evolution using a recursive approach. Finally, we use agent-based
simulations to reveal the opinion evolution in the random graphs. Our results
provide insights into the conditions under which the dominant opinion emerges
in a population and the factors that influence this process.Comment: 13 pages, 12 figure
Evolution of the Global Risk Network Mean-Field Stability Point
With a steadily growing human population and rapid advancements in
technology, the global human network is increasing in size and connection
density. This growth exacerbates networked global threats and can lead to
unexpected consequences such as global epidemics mediated by air travel,
threats in cyberspace, global governance, etc. A quantitative understanding of
the mechanisms guiding this global network is necessary for proper operation
and maintenance of the global infrastructure. Each year the World Economic
Forum publishes an authoritative report on global risks, and applying this data
to a CARP model, we answer critical questions such as how the network evolves
over time. In the evolution, we compare not the current states of the global
risk network at different time points, but its steady state at those points,
which would be reached if the risk were left unabated. Looking at the steady
states show more drastically the differences in the challenges to the global
economy and stability the world community had faced at each point of the time.
Finally, we investigate the influence between risks in the global network,
using a method successful in distinguishing between correlation and causation.
All results presented in the paper were obtained using detailed mathematical
analysis with simulations to support our findings.Comment: 11 pages, 5 figures, the 6th International Conference on Complex
Networks and Their Application
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