© 2016 Royal Statistical Society A non-parametric extension of control variates is presented. These leverage gradient information on the sampling density to achieve substantial variance reduction. It is not required that the sampling density be normalized. The novel contribution of this work is based on two important insights: a trade-off between random sampling and deterministic approximation and a new gradient-based function space derived from Stein's identity. Unlike classical control variates, our estimators improve rates of convergence, often requiring orders of magnitude fewer simulations to achieve a fixed level of precision. Theoretical and empirical results are presented, the latter focusing on integration problems arising in hiera...
An algorithm is presented which combines the techniques of statistical simulation and numerical inte...
The design of control charts in statistical quality control addresses the optimal selection of the ...
The crude Monte Carlo approximates the integral $$S(f)=\int_a^b f(x)\,\mathrm dx$$ with expected err...
A non-parametric extension of control variates is presented. These leverage gradient information on ...
The use of control variates is a well-known variance reduction tech- nique in Monte Carlo integratio...
Driven by several successful applications such as in stochastic gradient descent or in Bayesian comp...
Stein control variates can be used to improve Monte Carlo estimates of expectations when the derivat...
Monte Carlo integration with variance reduction by means of control variates can be implemented by t...
A novel control variate technique is proposed for post-processing of Markov chain Monte Carlo output...
Abstract. The method of control variates is one of the most widely used variance reduction technique...
Control variates are variance reduction tools for Monte Carlo estimators. They can provide significa...
International audienceIn this paper we describe a new variance reduction method for Monte Carlo inte...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
The use of estimating equations has been a common approach for constructing Monte Carlo estimators. ...
Control variates are a well-established tool to reduce the variance of Monte Carlo estimators. Howev...
An algorithm is presented which combines the techniques of statistical simulation and numerical inte...
The design of control charts in statistical quality control addresses the optimal selection of the ...
The crude Monte Carlo approximates the integral $$S(f)=\int_a^b f(x)\,\mathrm dx$$ with expected err...
A non-parametric extension of control variates is presented. These leverage gradient information on ...
The use of control variates is a well-known variance reduction tech- nique in Monte Carlo integratio...
Driven by several successful applications such as in stochastic gradient descent or in Bayesian comp...
Stein control variates can be used to improve Monte Carlo estimates of expectations when the derivat...
Monte Carlo integration with variance reduction by means of control variates can be implemented by t...
A novel control variate technique is proposed for post-processing of Markov chain Monte Carlo output...
Abstract. The method of control variates is one of the most widely used variance reduction technique...
Control variates are variance reduction tools for Monte Carlo estimators. They can provide significa...
International audienceIn this paper we describe a new variance reduction method for Monte Carlo inte...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
The use of estimating equations has been a common approach for constructing Monte Carlo estimators. ...
Control variates are a well-established tool to reduce the variance of Monte Carlo estimators. Howev...
An algorithm is presented which combines the techniques of statistical simulation and numerical inte...
The design of control charts in statistical quality control addresses the optimal selection of the ...
The crude Monte Carlo approximates the integral $$S(f)=\int_a^b f(x)\,\mathrm dx$$ with expected err...