The Gillespie algorithm provides statistically exact methods for simulating stochastic dynamics modeled as interacting sequences of discrete events including systems of biochemical reactions or earthquake occurrences, networks of queuing processes or spiking neurons, and epidemic and opinion formation processes on social networks. Empirically, the inter-event times of various phenomena obey long-tailed distributions. The Gillespie algorithm and its variants either assume Poisson processes (i.e., exponentially distributed inter-event times), use particular functions for time courses of the event rate, or work for non-Poissonian renewal processes, including the case of long-tailed distributions of inter-event times, but at a high computationa...
Dynamical processes in various natural and social phenomena have been described by a series of event...
The deterministic dynamics of populations in continuous time are traditionally described using coupl...
The theoretical description of non-renewal stochastic systems is a challenge. Analytical results are...
The Gillespie algorithm provides statistically exact methods for simulating stochastic dynamics mode...
The Gillespie algorithm provides statistically exact methods for simulating stochastic dynamics mode...
Stochastic simulations are one of the cornerstones of the analysis of dynamical processes on complex...
Many multiagent dynamics, including various collective dynamics occurring on networks, can be modele...
International audienceStochastic simulations are one of the cornerstones of the analysis of dynamica...
Stochastic simulation algorithm with continuous and dis-continuous time-dependent reaction rates We ...
<p>Histograms of the intervals between consecutive occurrences of processes in two stochastic simula...
Abstract: Recent experimental studies elucidating the importance of noise in gene regulation have ig...
Discrete stochastic processes are widespread in natural systems with many applications across physic...
AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processe...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We present a perfect simulation algorithm for measures that are absolutely continuous with respect t...
Dynamical processes in various natural and social phenomena have been described by a series of event...
The deterministic dynamics of populations in continuous time are traditionally described using coupl...
The theoretical description of non-renewal stochastic systems is a challenge. Analytical results are...
The Gillespie algorithm provides statistically exact methods for simulating stochastic dynamics mode...
The Gillespie algorithm provides statistically exact methods for simulating stochastic dynamics mode...
Stochastic simulations are one of the cornerstones of the analysis of dynamical processes on complex...
Many multiagent dynamics, including various collective dynamics occurring on networks, can be modele...
International audienceStochastic simulations are one of the cornerstones of the analysis of dynamica...
Stochastic simulation algorithm with continuous and dis-continuous time-dependent reaction rates We ...
<p>Histograms of the intervals between consecutive occurrences of processes in two stochastic simula...
Abstract: Recent experimental studies elucidating the importance of noise in gene regulation have ig...
Discrete stochastic processes are widespread in natural systems with many applications across physic...
AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processe...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We present a perfect simulation algorithm for measures that are absolutely continuous with respect t...
Dynamical processes in various natural and social phenomena have been described by a series of event...
The deterministic dynamics of populations in continuous time are traditionally described using coupl...
The theoretical description of non-renewal stochastic systems is a challenge. Analytical results are...