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Pengharapan Penghantaran (EP)×Markov Chain Monte Carlo (MCMC)×Inferens Variasi×
BidangBayesianBayesianBayesian
KeluargaBayesian methodsBayesian methodsBayesian methods
Tahun asal20011999
PengasasThomas P. MinkaJordan, Ghahramani, Jaakkola & Saul
JenisApproximate inference algorithmPosterior sampling algorithmApproximate Bayesian inference
Sumber perintisMinka, T. P. (2001). Expectation propagation for approximate Bayesian inference. In Proceedings of the Seventeenth Conference on Uncertainty in Artificial Intelligence (UAI-01), pp. 362–369. Morgan Kaufmann. link ↗Gelman, A., Carlin, J. B., Stern, H. S., Dunson, D. B., Vehtari, A. & Rubin, D. B. (2013). Bayesian Data Analysis (3rd ed.). CRC Press. ISBN: 978-1439840955Jordan, M. I., Ghahramani, Z., Jaakkola, T. S., & Saul, L. K. (1999). An introduction to variational methods for graphical models. Machine Learning, 37(2), 183–233. DOI ↗
AliasEP, expectation propagation, EP algorithm, assumed-density filtering generalisationmarkov chain monte carlo, MCMC sampling, MCMC (Markov Zinciri Monte Carlo)VI, variational Bayes, VB, mean-field variational inference
Berkaitan334
RingkasanExpectation Propagation (EP) is a deterministic message-passing algorithm for approximate posterior inference in Bayesian models, introduced by Thomas P. Minka at UAI 2001. It iteratively refines a set of local approximate factors — each drawn from the exponential family — so that their product closely matches the true intractable posterior, achieving higher accuracy than mean-field variational inference on many probabilistic machine learning tasks.Markov Chain Monte Carlo (MCMC) is a family of computational algorithms for sampling from complex probability distributions, most commonly the posterior distributions that arise in Bayesian inference. Rather than computing posteriors analytically — which is rarely possible for realistic models — MCMC constructs a Markov chain whose stationary distribution is the target posterior and draws dependent samples from it, enabling full probabilistic inference for virtually any model.Variational inference (VI) is a family of techniques that turn Bayesian posterior computation into an optimisation problem. Instead of drawing samples from the exact posterior — as Markov chain Monte Carlo does — VI posits a simpler, tractable family of distributions and finds the member of that family closest to the true posterior by maximising the evidence lower bound (ELBO). Introduced in its modern graphical-model form by Jordan, Ghahramani, Jaakkola and Saul (1999) and given a comprehensive statistical treatment by Blei, Kucukelbir and McAuliffe (2017), VI is now the standard scalable inference engine in probabilistic machine learning.
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ScholarGateBandingkan kaedah: Expectation Propagation · MCMC · Variational Inference. Dicapai 2026-06-18 daripada https://scholargate.app/ms/compare