1,250 research outputs found
Bayesian optimization using sequential Monte Carlo
We consider the problem of optimizing a real-valued continuous function
using a Bayesian approach, where the evaluations of are chosen sequentially
by combining prior information about , which is described by a random
process model, and past evaluation results. The main difficulty with this
approach is to be able to compute the posterior distributions of quantities of
interest which are used to choose evaluation points. In this article, we decide
to use a Sequential Monte Carlo (SMC) approach
Surtsey and Mount St. Helens: a comparison of early succession rates
Surtsey and Mount St. Helens are celebrated but very different volcanoes.
Permanent plots allow for comparisons that reveal mechanisms that control
succession and its rate and suggest general principles. We estimated rates
from structure development, species composition using detrended
correspondence analysis (DCA), changes in Euclidean distance (ED) of DCA
vectors, and by principal components analysis (PCA) of DCA. On Surtsey, rates
determined from DCA trajectory analyses decreased as follows: gull colony on
lava with sand > gull colony on lava, no sand ≫ lava with
sand > sand spit > block lava > tephra. On Mount St. Helens,
plots on lahar deposits near woodlands were best developed. The succession
rates of open meadows declined as follows: <i>Lupinus</i>-dominated
pumice > protected ridge with <i>Lupinus</i> > other pumice and
blasted sites > isolated lahar meadows > barren plain. Despite the
prominent contrasts between the volcanoes, we found several common themes.
Isolation restricted the number of colonists on Surtsey and to a lesser
degree on Mount St. Helens. Nutrient input from outside the system was
crucial. On Surtsey, seabirds fashioned very fertile substrates, while on
Mount St. Helens wind brought a sparse nutrient rain, then <i>Lupinus</i>
enhanced fertility to promote succession. Environmental stress limits
succession in both cases. On Surtsey, bare lava, compacted tephra and
infertile sands restrict development. On Mount St. Helens, exposure to wind
and infertility slow succession
On the Stability and the Approximation of Branching Distribution Flows, with Applications to Nonlinear Multiple Target Filtering
We analyse the exponential stability properties of a class of measure-valued
equations arising in nonlinear multi-target filtering problems. We also prove
the uniform convergence properties w.r.t. the time parameter of a rather
general class of stochastic filtering algorithms, including sequential Monte
Carlo type models and mean eld particle interpretation models. We illustrate
these results in the context of the Bernoulli and the Probability Hypothesis
Density filter, yielding what seems to be the first results of this kind in
this subject
On particle Gibbs Markov chain Monte Carlo models
This article analyses a new class of advanced particle Markov chain Monte
Carlo algorithms recently introduced by Andrieu, Doucet, and Holenstein (2010).
We present a natural interpretation of these methods in terms of well known
unbiasedness properties of Feynman-Kac particle measures, and a new duality
with many-body Feynman-Kac models. This perspective sheds a new light on the
foundations and the mathematical analysis of this class of methods. A key
consequence is the equivalence between the backward and ancestral particle
Markov chain Monte Carlo methods, and Gibbs sampling of a many-body Feynman-Kac
target distribution. Our approach also presents a new stochastic differential
calculus based on geometric combinatorial techniques to derive explicit
non-asymptotic Taylor type series of the semigroup of a class of particle
Markov chain Monte Carlo models around their invariant measures with respect to
the population size of the auxiliary particle sampler. These results provide
sharp quan- titative estimates of the convergence properties of conditional
particle Markov chain models with respect to the time horizon and the size of
the systems. We illustrate the implication of these results with sharp
estimates of the contraction coefficient and the Lyapunov exponent of
conditional particle samplers, and explicit and non-asymptotic Lp-mean error
decompositions of the law of the random states around the limiting invariant
measure. The abstract framework developed in the article also allows the design
of natural extensions to island (also called SMC2) type particle methodologies
La forma farmacéutica un factor a valorar en el SFT
Mujer de 80 años polimedicada, que para mejorar la adherencia a su tratamiento farmacológico participa del servicio de SPD (Sistema Personalizado de Dosificación) de la farmacia. A todos los usuarios del servicio de SPD se les
incluye en el servicio de Seguimiento Farmacoterapéutico (SFT).
Diagnosticada de hipertensión arterial, dislipemia, artrosis,obesidad, dolor, insuficiencia cardiaca secundaria a cardiopatÃa hipertensiva moderada-severa con FEVI deprimida moderada con bloqueo completo de rama izquierda,
diabetes mellitus insulino-dependiente, y fibrilación auricular; anticoagulada con acenocumarol 4 mg (sintrom 4 mg ®).
En Noviembre de 2013, se diagnostica de novo de Insuficiencia Renal Crónica III con hiperparatiroidismo secundario
La forma farmacéutica un factor a valorar en el SFT
Mujer de 80 años polimedicada, que para mejorar la adherencia a su tratamiento farmacológico participa del servicio de SPD (Sistema Personalizado de Dosificación) de la farmacia. A todos los usuarios del servicio de SPD se les
incluye en el servicio de Seguimiento Farmacoterapéutico (SFT).
Diagnosticada de hipertensión arterial, dislipemia, artrosis,obesidad, dolor, insuficiencia cardiaca secundaria a cardiopatÃa hipertensiva moderada-severa con FEVI deprimida moderada con bloqueo completo de rama izquierda,
diabetes mellitus insulino-dependiente, y fibrilación auricular; anticoagulada con acenocumarol 4 mg (sintrom 4 mg ®).
En Noviembre de 2013, se diagnostica de novo de Insuficiencia Renal Crónica III con hiperparatiroidismo secundario
Duroc and Iberian Pork Neural Network Classification by Visible and Near Infrared Reflectance Spectroscopy
a b s t r a c t Visible and near infrared reflectance spectroscopy (VIS/NIRS) was used to differentiate between Duroc and Iberian pork in the M. masseter. Samples of Duroc (n = 15) and Iberian (n = 15) pig muscles were scanned in the VIS/NIR region (350-2500 nm) using a portable spectral radiometer. Both mutual information and VIS/NIRS spectra characterization were developed to generate a ranking of variables and the data were then processed by artificial neural networks, establishing 1, 3, or 10 wavelengths as input variable for classifying between the pig breeds. The models correctly classified >70% of all problem assumptions, with a correct classification of >95% for the three-variable assumption using either mutual information ranking or VIS/NIRS spectra characterization. These results demonstrate the potential value of the VIS/ NIRS technique as an objective and rapid method for the authentication and identification of Duroc and Iberian pork
Critical properties of random anisotropy magnets
The problem of critical behaviour of three dimensional random anisotropy
magnets, which constitute a wide class of disordered magnets is considered.
Previous results obtained in experiments, by Monte Carlo simulations and within
different theoretical approaches give evidence for a second order phase
transition for anisotropic distributions of the local anisotropy axes, while
for the case of isotropic distribution such transition is absent. This outcome
is described by renormalization group in its field theoretical variant on the
basis of the random anisotropy model. Considerable attention is paid to the
investigation of the effective critical behaviour which explains the
observation of different behaviour in the same universality class.Comment: 41 pages, 10 figure
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