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시계열 MCMC×동적 베이즈 추론×
분야베이지안베이지안
계열Bayesian methodsBayesian methods
기원 연도1994–19971989–1997
창시자Carter & Kohn; West & HarrisonWest & Harrison (dynamic linear models); Dean & Kanazawa (dynamic Bayesian networks)
유형Bayesian posterior sampling for time-ordered dataBayesian sequential / online inference framework
원전Carter, C. K. & Kohn, R. (1994). On Gibbs sampling for state space models. Biometrika, 81(3), 541–553. DOI ↗West, M. & Harrison, J. (1997). Bayesian Forecasting and Dynamic Models (2nd ed.). Springer. ISBN: 978-0387947259
별칭MCMC time series, Bayesian time series MCMC, time series posterior sampling, sequential Bayesian MCMConline Bayesian inference, sequential Bayesian updating, recursive Bayesian estimation, dynamic Bayesian updating
관련66
요약Time series MCMC applies Markov chain Monte Carlo methods to Bayesian inference over time-ordered data. Rather than optimising a single parameter estimate, it draws samples from the full joint posterior of parameters and latent states, yielding probability distributions that honestly reflect uncertainty about dynamics, trends, and seasonal patterns across every time point.Dynamic Bayesian inference is a framework for performing Bayesian updating sequentially as new observations arrive over time. Rather than fitting a static model to a fixed dataset, it tracks how a posterior distribution over latent states or parameters evolves step by step, combining a prior with each new likelihood to produce an updated posterior that propagates forward through time.
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ScholarGate방법 비교: Time series MCMC · Dynamic Bayesian Inference. 2026-06-18에 다음에서 검색함: https://scholargate.app/ko/compare