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Bayesian Computation with Intractable Likelihoods

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posted on 2024-11-14, 09:10 authored by Matthew Moores, Anthony N Pettitt, Kerrie Mengersen
This article surveys computational methods for posterior inference with intractable likelihoods, that is where the likelihood function is unavailable in closed form, or where evaluation of the likelihood is infeasible. We review recent developments in pseudo-marginal methods, approximate Bayesian computation (ABC), the exchange algorithm, thermodynamic integration, and composite likelihood, paying particular attention to advancements in scalability for large datasets. We also mention R and MATLAB source code for implementations of these algorithms, where they are available.

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    ISSN - Is published in 0075-8434

Citation

Moores, M. T., Pettitt, A. N. & Mengersen, K. L. (2020). Bayesian Computation with Intractable Likelihoods. In K. L. Mengersen, P. Pudlo & C. P. Robert (Eds.), Case Studies in Applied Bayesian Data Science (pp. 137-151). Cham, Switzerland: Springer.

Language

English

RIS ID

143087

Volume

2259

Pagination

137-151

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