Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo estimators via Stein’s method. An important application is that of estimating an expectation of a test function along the sample path of a Markov chain, where gradient information enables convergence rate improvement at the cost of a linear system which must be solved. The contribution of this paper is to establish theoretical bounds on convergence rates for a class of estimators based on Stein’s method. Our analysis accounts for (i) the degree of smoothness of the sampling distribution and test function, (ii) the dimension of the state space, and (iii) the case of non-independent samples arising from a Markov chain. These results provide ins...
We consider the optimization of a smooth and strongly convex objective using constant step-size stoc...
Bayesian inference problems require sampling or approximating high-dimensional probability distribut...
grantor: University of TorontoMarkov chain Monte Carlo algorithms, such as the Gibbs sampl...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
Stein Variational Gradient Descent (SVGD) is an algorithm for sampling from a target density which i...
. We present a general method for proving rigorous, a priori bounds on the number of iterations requ...
Stein’s method for measuring convergence to a continuous target distribution relies on an operator c...
Abstract: Charles Stein has introduced a general approach to proving approx-imation theorems in prob...
Modern machine learning models are complex, hierarchical, and large-scale and are trained using non-...
An important task in machine learning and statistics is the approximation of a probability measure b...
International audienceThis paper studies the asymptotic behavior of the constant step Stochastic Gra...
Stein's method is a powerful technique that can be used to obtain bounds for approximation errors in...
International audienceIn the context of statistical supervised learning, the noiseless linear model ...
International audienceMotivated by a theorem of Barbour, we revisit some of the classical limit theo...
We consider the optimization of a smooth and strongly convex objective using constant step-size stoc...
Bayesian inference problems require sampling or approximating high-dimensional probability distribut...
grantor: University of TorontoMarkov chain Monte Carlo algorithms, such as the Gibbs sampl...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
Stein Variational Gradient Descent (SVGD) is an algorithm for sampling from a target density which i...
. We present a general method for proving rigorous, a priori bounds on the number of iterations requ...
Stein’s method for measuring convergence to a continuous target distribution relies on an operator c...
Abstract: Charles Stein has introduced a general approach to proving approx-imation theorems in prob...
Modern machine learning models are complex, hierarchical, and large-scale and are trained using non-...
An important task in machine learning and statistics is the approximation of a probability measure b...
International audienceThis paper studies the asymptotic behavior of the constant step Stochastic Gra...
Stein's method is a powerful technique that can be used to obtain bounds for approximation errors in...
International audienceIn the context of statistical supervised learning, the noiseless linear model ...
International audienceMotivated by a theorem of Barbour, we revisit some of the classical limit theo...
We consider the optimization of a smooth and strongly convex objective using constant step-size stoc...
Bayesian inference problems require sampling or approximating high-dimensional probability distribut...
grantor: University of TorontoMarkov chain Monte Carlo algorithms, such as the Gibbs sampl...