2,214 research outputs found
Opinion modeling on social media and marketing aspects
We introduce and discuss kinetic models of opinion formation on social
networks in which the distribution function depends on both the opinion and the
connectivity of the agents. The opinion formation model is subsequently coupled
with a kinetic model describing the spreading of popularity of a product on the
web through a social network. Numerical experiments on the underlying kinetic
models show a good qualitative agreement with some measured trends of hashtags
on social media websites and illustrate how companies can take advantage of the
network structure to obtain at best the advertisement of their products
The Barker proposal: Combining robustness and efficiency in gradient-based MCMC
There is a tension between robustness and efficiency when designing Markov chain Monte Carlo (MCMC) sampling algorithms. Here we focus on robustness with respect to tuning parameters, showing that more sophisticated algorithms tend to be more sensitive to the choice of step-size parameter and less robust to heterogeneity of the distribution of interest. We characterise this phenomenon by studying the behaviour of spectral gaps as an increasingly poor step-size is chosen for the algorithm. Motivated by these considerations, we propose a novel and simple gradient-based MCMC algorithm, inspired by the classical Barker accept-reject rule, with improved robustness properties. Extensive theoretical results, dealing with robustness to tuning, geometric ergodicity and scaling with dimension, suggest that the novel scheme combines the robustness of simple schemes with the efficiency of gradient-based ones. We show numerically that this type of robustness is particularly beneficial in the context of adaptive MCMC, giving examples where our proposed scheme significantly outperforms state-of-the-art alternatives
Spinning nanorods - active optical manipulation of semiconductor nanorods using polarised light
In this Letter we show how a single beam optical trap offers the means for
three-dimensional manipulation of semiconductor nanorods in solution.
Furthermore rotation of the direction of the electric field provides control
over the orientation of the nanorods, which is shown by polarisation analysis
of two photon induced fluorescence. Statistics over tens of trapped
agglomerates reveal a correlation between the measured degree of polarisation,
the trap stiffness and the intensity of the emitted light, confirming that we
are approaching the single particle limit.Comment: 7 pages, 4 figure
Optimal control of epidemic spreading in presence of social heterogeneity
The spread of COVID-19 has been thwarted in most countries through
non-pharmaceutical interventions. In particular, the most effective measures in
this direction have been the stay-at-home and closure strategies of businesses
and schools. However, population-wide lockdowns are far from being optimal
carrying heavy economic consequences. Therefore, there is nowadays a strong
interest in designing more efficient restrictions. In this work, starting from
a recent kinetic-type model which takes into account the heterogeneity
described by the social contact of individuals, we analyze the effects of
introducing an optimal control strategy into the system, to limit selectively
the mean number of contacts and reduce consequently the number of infected
cases. Thanks to a data-driven approach, we show that this new mathematical
model permits to assess the effects of the social limitations. Finally, using
the model introduced here and starting from the available data, we show the
effectivity of the proposed selective measures to dampen the epidemic trends
Control with uncertain data of socially structured compartmental epidemic models
The adoption of containment measures to reduce the amplitude of the epidemic
peak is a key aspect in tackling the rapid spread of an epidemic. Classical
compartmental models must be modified and studied to correctly describe the
effects of forced external actions to reduce the impact of the disease. In
addition, data are often incomplete and heterogeneous, so a high degree of
uncertainty must naturally be incorporated into the models. In this work we
address both these aspects, through an optimal control formulation of the
epidemiological model in presence of uncertain data. After the introduction of
the optimal control problem, we formulate an instantaneous approximation of the
control that allows us to derive new feedback controlled compartmental models
capable of describing the epidemic peak reduction. The need for long-term
interventions shows that alternative actions based on the social structure of
the system can be as effective as the more expensive global strategy. The
importance of the timing and intensity of interventions is particularly
relevant in the case of uncertain parameters on the actual number of infected
people. Simulations related to data from the recent COVID-19 outbreak in Italy
are presented and discussed
Kinetic models for epidemic dynamics with social heterogeneity
We introduce a mathematical description of the impact of sociality in the
spread of infectious diseases by integrating an epidemiological dynamics with a
kinetic modeling of population-based contacts. The kinetic description leads to
study the evolution over time of Boltzmann-type equations describing the number
densities of social contacts of susceptible, infected and recovered
individuals, whose proportions are driven by a classical SIR-type compartmental
model in epidemiology. Explicit calculations show that the spread of the
disease is closely related to moments of the contact distribution. Furthermore,
the kinetic model allows to clarify how a selective control can be assumed to
achieve a minimal lockdown strategy by only reducing individuals undergoing a
very large number of daily contacts. We conduct numerical simulations which
confirm the ability of the model to describe different phenomena characteristic
of the rapid spread of an epidemic. Motivated by the COVID-19 pandemic, a last
part is dedicated to fit numerical solutions of the proposed model with
infection data coming from different European countries
Inflation and nonequilibrium renormalization group
We study de spectrum of primordial fluctuations and the scale dependence of
the inflaton spectral index due to self-interactions of the field. We compute
the spectrum of fluctuations by applying nonequilibrium renormalization group
techniques.Comment: 6 pages, 1 figure, submitted to J. Phys.
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