3,081 research outputs found
Simulation based sequential Monte Carlo methods for discretely observed Markov processes
Parameter estimation for discretely observed Markov processes is a
challenging problem. However, simulation of Markov processes is straightforward
using the Gillespie algorithm. We exploit this ease of simulation to develop an
effective sequential Monte Carlo (SMC) algorithm for obtaining samples from the
posterior distribution of the parameters. In particular, we introduce two key
innovations, coupled simulations, which allow us to study multiple parameter
values on the basis of a single simulation, and a simple, yet effective,
importance sampling scheme for steering simulations towards the observed data.
These innovations substantially improve the efficiency of the SMC algorithm
with minimal effect on the speed of the simulation process. The SMC algorithm
is successfully applied to two examples, a Lotka-Volterra model and a
Repressilator model.Comment: 27 pages, 5 figure
Multitype randomized Reed--Frost epidemics and epidemics upon random graphs
We consider a multitype epidemic model which is a natural extension of the
randomized Reed--Frost epidemic model. The main result is the derivation of an
asymptotic Gaussian limit theorem for the final size of the epidemic. The
method of proof is simpler, and more direct, than is used for similar results
elsewhere in the epidemics literature. In particular, the results are
specialized to epidemics upon extensions of the Bernoulli random graph.Comment: Published at http://dx.doi.org/10.1214/105051606000000123 in the
Annals of Applied Probability (http://www.imstat.org/aap/) by the Institute
of Mathematical Statistics (http://www.imstat.org
Optimal scaling for partially updating MCMC algorithms
In this paper we shall consider optimal scaling problems for high-dimensional
Metropolis--Hastings algorithms where updates can be chosen to be lower
dimensional than the target density itself. We find that the optimal scaling
rule for the Metropolis algorithm, which tunes the overall algorithm acceptance
rate to be 0.234, holds for the so-called Metropolis-within-Gibbs algorithm as
well. Furthermore, the optimal efficiency obtainable is independent of the
dimensionality of the update rule. This has important implications for the MCMC
practitioner since high-dimensional updates are generally computationally more
demanding, so that lower-dimensional updates are therefore to be preferred.
Similar results with rather different conclusions are given for so-called
Langevin updates. In this case, it is found that high-dimensional updates are
frequently most efficient, even taking into account computing costs.Comment: Published at http://dx.doi.org/10.1214/105051605000000791 in the
Annals of Applied Probability (http://www.imstat.org/aap/) by the Institute
of Mathematical Statistics (http://www.imstat.org
The basic reproduction number, , in structured populations
In this paper, we provide a straightforward approach to defining and deriving
the key epidemiological quantity, the basic reproduction number, , for
Markovian epidemics in structured populations. The methodology derived is
applicable to, and demonstrated on, both and epidemics and allows
for population as well as epidemic dynamics. The approach taken is to consider
the epidemic process as a multitype process by identifying and classifying the
different types of infectious units along with the infections from, and the
transitions between, infectious units. For the household model, we show that
our expression for agrees with earlier work despite the alternative
nature of the construction of the mean reproductive matrix, and hence, the
basic reproduction number.Comment: 26 page
Some analytical applications of electrogenerated chemiluminescence
Imperial Users onl
A household SIR epidemic model incorporating time of day effects
During the course of a day an individual typically mixes with different groups of individuals. Epidemic models incorporating population structure with individuals being able to infect different groups of individuals have received extensive attention in the literature. However, almost exclusively the models assume that individuals are able to simultaneously infect members of all groups, whereas in reality individuals will typically only be able to infect members of any group they currently reside in. In the current work we develop a model where individuals move between a community and their household during the course of the day, only infecting within their current group. By defining a novel branching process approximation with an explicit expression for the probability generating function of the offspring distribution, we are able to derive the probability of a major epidemic outbreak
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