The standard Kernel Quadrature method for numerical integration with random point sets (also called Bayesian Monte Carlo) is known to converge in root mean square error at a rate determined by the ratio $s/d$, where $s$ and $d$ encode the smoothness and dimension of the integrand. However, an empirical investigation reveals that the rate constant $C$ is highly sensitive to the distribution of the random points. In contrast to standard Monte Carlo integration, for which optimal importance sampling is well-understood, the sampling distribution that minimises $C$ for Kernel Quadrature does not admit a closed form. This paper argues that the practical choice of sampling distribution is an important open problem. One solution is considered; a no...
Computing marginal likelihoods to perform Bayesian model selection is a challenging task, particular...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Importance sampling is a well known variance reduction technique for Monte Carlo simulation. For qua...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
Driven by several successful applications such as in stochastic gradient descent or in Bayesian comp...
Nowadays, Monte Carlo integration is a popular tool for estimating high-dimensional, complex integra...
Monte Carlo importance sampling for evaluating numerical integration is discussed. We consider a par...
In the design of efficient simulation algorithms, one is often beset with a poor choice of proposal ...
A new approach to evaluate the reliability of structural systems using a Monte Carlo variance reduct...
In the design of ecient simulation algorithms, one is often beset with a poorchoice of proposal dist...
We propose a novel sampling framework for inference in probabilistic models: an active learning appr...
We propose a new method to approximately integrate a function with respect to a given probability di...
The Mont e Carlo (II IC) Method is commonly used to approximat e mult ivariat e integrals, which can...
This thesis is concerned with Monte Carlo importance sampling as used for statistical multiple integ...
Computing marginal likelihoods to perform Bayesian model selection is a challenging task, particular...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Importance sampling is a well known variance reduction technique for Monte Carlo simulation. For qua...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
Driven by several successful applications such as in stochastic gradient descent or in Bayesian comp...
Nowadays, Monte Carlo integration is a popular tool for estimating high-dimensional, complex integra...
Monte Carlo importance sampling for evaluating numerical integration is discussed. We consider a par...
In the design of efficient simulation algorithms, one is often beset with a poor choice of proposal ...
A new approach to evaluate the reliability of structural systems using a Monte Carlo variance reduct...
In the design of ecient simulation algorithms, one is often beset with a poorchoice of proposal dist...
We propose a novel sampling framework for inference in probabilistic models: an active learning appr...
We propose a new method to approximately integrate a function with respect to a given probability di...
The Mont e Carlo (II IC) Method is commonly used to approximat e mult ivariat e integrals, which can...
This thesis is concerned with Monte Carlo importance sampling as used for statistical multiple integ...
Computing marginal likelihoods to perform Bayesian model selection is a challenging task, particular...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Importance sampling is a well known variance reduction technique for Monte Carlo simulation. For qua...