نتایج جستجو برای: conditional simulation

تعداد نتایج: 613350  

2007
Pierfrancesco La Mura Lukasz Swiatczak

Graphical models of probabilistic dependencies have been extensively investigated in the context of classical uncertainty. However, in some domains (most notably, in computational physics and quantum computing) the nature of the relevant uncertainty is non-classical, and the laws of classical probability theory are superseded by those of quantum mechanics. In this paper we introduce Markov Enta...

2004
Alexander Philipov Mark E. Glickman

This paper proposes a high dimensional factor multivariate stochastic volatility (SVOL) model in which factor covariance matrices are driven by Wishart random processes. The framework allows for unrestricted specification of intertemporal sensitivities, which can capture the persistence in volatilities, kurtosis in returns, as well as correlation breakdowns and contagion effects in volatilities...

Journal: :The Journal of chemical physics 2011
Simon L Cotter Konstantinos C Zygalakis Ioannis G Kevrekidis Radek Erban

Stochastic simulation of coupled chemical reactions is often computationally intensive, especially if a chemical system contains reactions occurring on different time scales. In this paper, we introduce a multiscale methodology suitable to address this problem, assuming that the evolution of the slow species in the system is well approximated by a Langevin process. It is based on the conditiona...

1997
Ashish Sharma David G. Tarboton

In this paper kernel estimates of the joint and conditional probability density functions are used to generate synthetic streamflow sequences. Streamflow is assumed to be a Markov process with time dependence characterized by a multivariate probability density function. Kernel methods are used to estimate this multivariate density function. Simulation proceeds by sequentially resampling from th...

Journal: :Computational Statistics & Data Analysis 2008
Yasuhiro Omori Toshiaki Watanabe

This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric stochastic volatility models where there exists a correlation between today’s return and tomorrow’s volatility. The state vector is divided into several blocks where each block consists of many state variables. For each block, corresponding disturbances are sampled simultaneously from their condi...

Journal: :Operations Research 1996
Athanassios N. Avramidis James R. Wilson

We develop strategies for integrated use of certain well-known variance reduction techniques to estimate a mean response in a finite-horizon simulation experiment. The building blocks for these integrated variance reduction strategies are the techniques of conditional expectation, correlation induction (including antithetic variates and Latin hypercube sampling), and control variates; and all p...

2007
Yasuhiro Omori Toshiaki Watanabe

This article introduces a new efficient simulation smoother and disturbance smoother for general state-space models where there exists a correlation between error terms of the measurement and state equations. The state vector is divided into several blocks where each block consists of many state variables. For each block, corresponding disturbances are sampled simultaneously from their conditio...

1997
Adrian Y. W. Cheuk Craig Boutilier

We present an algorithm for arc reversal in Bayesian networks with tree-structured conditional probability tables, and consider some of its advantages, especially for the simulation of dynamic probabilistic networks. In particular, the method allows one to produce CPTs for nodes involved in the reversal that exploit regularities in the conditional distributions. We argue that this approach alle...

Journal: :Finance and Stochastics 2011
Paul Glasserman Kyoung-Kuk Kim

We derive an explicit representation of the transitions of the Heston stochastic volatility model and use it for fast and accurate simulation of the model. Of particular interest is the integral of the variance process over an interval, conditional on the level of the variance at the endpoints. We give an explicit representation of this quantity in terms of infinite sums and mixtures of gamma r...

2010
Sebastian Meyer Johannes Elias Michael Höhle

A space-time conditional intensity model for infectious disease occurence Summary. A novel point process model continuous in space-time is proposed for infectious disease data. Modelling is based on the conditional intensity function (CIF) and extends an additive-multiplicative CIF model previously proposed for discrete space epidemic modelling. Estimation is performed by means of full maximum ...

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