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Practical pre-asymptotic diagnostic of Monte Carlo estimates in Bayesian inference and machine learning

Series
Department of Statistics
Video Audio Embed
Aki Vehtari (Aalto University) gives the OxCSML Seminar on Friday 7th May 2021
Abstract: I discuss the use of the Pareto-k diagnostic as a simple and practical approach for estimating both the required minimum sample size and empirical pre-asymptotic convergence rate for Monte Carlo estimates. Even when by construction a Monte Carlo estimate has finite variance the pre-asymptotic behaviour and convergence rate can be very different from the asymptotic behaviour following the central limit theorem. I demonstrate with practical examples in importance sampling, stochastic optimization, and variational inference, which are commonly used in Bayesian inference and machine learning.

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Episode Information

Series
Department of Statistics
People
Aki Vehtari
Keywords
statistics
maths
machine learning
Department: Department of Statistics
Date Added: 29/07/2021
Duration: 00:57:48

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